Esempio n. 1
0
class GN():
    def __init__(self, seq_index, begin, end, a, cuda=True):
        '''
        Evaluating with the MotMetrics
        :param seq_index: the number of the sequence
        :param tt: train_test
        :param length: the number of frames which is used for training
        :param cuda: True - GPU, False - CPU
        '''
        self.bbx_counter = 0
        self.seq_index = seq_index
        self.hungarian = Munkres()
        self.device = torch.device("cuda" if cuda else "cpu")
        self.begin = begin
        self.end = end
        self.alpha = a
        self.missingCounter = 0
        self.sideConnection = 0

        print '     Loading the model...'
        self.loadAModel()
        self.loadMModel()
        self.loadVOT()

        if train_set_num == 4:
            # self.out_dir = t_dir + 'motmetrics_%s_4_%.1f%s_%.2f%s%s_tau_tdir1.0/'%(type,
            #                                                                        self.alpha,
            #                                                                        decay_dir, decay,
            #                                                                        recover_dir, u_dir)

            # 1.9 - decay_tag > 0, 1.1~1.8 - decay_tag > 1

            self.out_dir = t_dir + 'motmetrics_%s_4_%.1f%s_%.2f%s%s_vc_%.2f/' % (
                type, self.alpha, decay_dir, decay, recover_dir, u_dir,
                vot_conf_score)

            # self.out_dir = t_dir + 'motmetrics_%s_4_%.1f%s_%.2f%s%s_vc_%.2f_exp/'%(type,
            #                                                                        self.alpha,
            #                                                                        decay_dir, decay,
            #                                                                        recover_dir, u_dir, vot_conf_score)
        else:
            self.out_dir = t_dir + 'motmetrics_%s_4_%.1f%s_%.2f%s%s_vc_%.2f_dseq_new/' % (
                type, self.alpha, decay_dir, decay, recover_dir, u_dir,
                vot_conf_score)

        print '		', self.out_dir
        if not os.path.exists(self.out_dir):
            os.mkdir(self.out_dir)
        else:
            deleteDir(self.out_dir)
            os.mkdir(self.out_dir)
        self.initOut()

    def initOut(self):
        print '     Loading Data...'
        self.a_train_set = ADatasetFromFolder(
            sequence_dir, '../MOT/MOT16/train/MOT16-%02d' % self.seq_index,
            tau_conf_score)
        self.m_train_set = MDatasetFromFolder(
            sequence_dir, '../MOT/MOT16/train/MOT16-%02d' % self.seq_index,
            tau_conf_score)

        gt_training = self.out_dir + 'gt_training.txt'  # the gt of the training data
        self.copyLines(self.seq_index, self.begin, gt_training, self.end)

        detection_dir = self.out_dir + 'res_training_det.txt'
        res_training = self.out_dir + 'res_training.txt'  # the result of the training data
        self.createTxt(detection_dir)
        self.createTxt(res_training)
        self.copyLines(self.seq_index, self.begin, detection_dir, self.end, 1)

        self.out = open(res_training, 'w')
        self.evaluation(self.begin, self.end, detection_dir)
        self.out.close()

    def getSeqL(self, info):
        # get the length of the sequence
        f = open(info, 'r')
        f.readline()
        for line in f.readlines():
            line = line.strip().split('=')
            if line[0] == 'seqLength':
                seqL = int(line[1])
        f.close()
        return seqL

    def copyLines(self, seq, head, gt_seq, tail=-1, tag=0):
        '''
        Copy the groun truth within [head, head+num]
        :param seq: the number of the sequence
        :param head: the head frame number
        :param tail: the number the clipped sequence
        :param gt_seq: the dir of the output file
        :return: None
        '''
        if tt_tag:
            basic_dir = '../MOT/MOT%d/test/MOT%d-%02d-%s/' % (year, year, seq,
                                                              type)
        else:
            basic_dir = '../MOT/MOT%d/train/MOT%d-%02d-%s/' % (year, year, seq,
                                                               type)
        print '     Testing on', basic_dir, 'Length:', self.end - self.begin + 1
        seqL = tail if tail != -1 else self.getSeqL(basic_dir + 'seqinfo.ini')

        det_dir = 'gt/gt_det.txt' if test_gt_det else 'det/det.txt'
        seq_dir = basic_dir + ('gt/gt.txt' if tag == 0 else det_dir)
        inStream = open(seq_dir, 'r')

        outStream = open(gt_seq, 'w')
        for line in inStream.readlines():
            line = line.strip()
            attrs = line.split(',')
            f_num = int(attrs[0])
            if f_num >= head and f_num <= seqL:
                print >> outStream, line
        outStream.close()

        inStream.close()
        return seqL

    def createTxt(self, out_file):
        f = open(out_file, 'w')
        f.close()

    def swapFC(self):
        self.cur = self.cur ^ self.nxt
        self.nxt = self.cur ^ self.nxt
        self.cur = self.cur ^ self.nxt

    def loadAModel(self):
        from mot_model import uphi, ephi, vphi
        name = '%s_%d' % (app_dir, train_set_num)
        if edge_initial == 0:
            model_dir = 'App2_bb'
            i_name = 'IoU'
        elif edge_initial == 1:
            model_dir = 'App2_bb'
            i_name = 'Random'
        tail = 10 if train_set_num == 4 else 13
        self.AUphi = torch.load('../%s/Results/MOT16/%s/%s/uphi_%02d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.AVphi = torch.load('../%s/Results/MOT16/%s/%s/vphi_%02d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.AEphi1 = torch.load('../%s/Results/MOT16/%s/%s/ephi1_%02d.pth' %
                                 (model_dir, i_name, name, tail)).to(
                                     self.device)
        self.AEphi2 = torch.load('../%s/Results/MOT16/%s/%s/ephi2_%02d.pth' %
                                 (model_dir, i_name, name, tail)).to(
                                     self.device)
        self.Au = torch.load('../%s/Results/MOT16/%s/%s/u_%02d.pth' %
                             (model_dir, i_name, name, tail))
        self.Au = self.Au.to(self.device)

    def loadMModel(self):
        from m_mot_model import uphi, ephi
        name = 'all_%d' % train_set_num
        if edge_initial == 0:
            model_dir = 'Motion1_bb'
            i_name = 'IoU'
        elif edge_initial == 1:
            model_dir = 'Motion1_bb'
            i_name = 'Random'
        tail = 10 if train_set_num == 4 else 13
        self.MUphi = torch.load('../%s/Results/MOT16/%s/%s/uphi_%d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.MEphi = torch.load('../%s/Results/MOT16/%s/%s/ephi_%d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.Mu = torch.load('../%s/Results/MOT16/%s/%s/u_%d.pth' %
                             (model_dir, i_name, name, tail))
        self.Mu = self.Mu.to(self.device)

    def loadVOT(self):
        self.net = SiamRPNvot()
        self.net.load_state_dict(torch.load('VOT/SiamRPNVOT.model'))
        self.net = self.net.to(self.device)

    def outputLine(self, attr, src):
        """
        Output the tracking result into text file
        :param attr: The tracked detection
        :param src: The source code which call this function
        :return: None
        """
        if attr[1] == '-1':
            print src, '-', attr
        line = ''
        for attr in attr[:-1]:
            line += attr + ','
        if show_recovering:
            if src[0] == 'd':
                line += '1'
            elif src[0] == 'R':
                line += '2'
            else:
                line += '0'
        else:
            line = line[:-1]
        self.bbx_counter += 1
        print >> self.out, line

    def linearModel(self, attr1, attr2, src):
        # print 'I got you! *.*'
        # print attr1, attr2
        frame, frame2 = int(attr1[0]), int(attr2[0])
        t = frame2 - frame
        if t > 1:
            self.sideConnection += 1
        if t > f_gap:
            self.outputLine(attr2, src + 'LinearModel1')
            return
        x1, y1, w1, h1 = float(attr1[2]), float(attr1[3]), float(
            attr1[4]), float(attr1[5])
        x2, y2, w2, h2 = float(attr2[2]), float(attr2[3]), float(
            attr2[4]), float(attr2[5])

        x_delta = (x2 - x1) / t
        y_delta = (y2 - y1) / t
        w_delta = (w2 - w1) / t
        h_delta = (h2 - h1) / t

        for i in xrange(1, t + 1):
            frame += 1
            x1 += x_delta
            y1 += y_delta
            w1 += w_delta
            h1 += h_delta
            attr1[0] = str(frame)
            attr1[2] = str(x1)
            attr1[3] = str(y1)
            attr1[4] = str(w1)
            attr1[5] = str(h1)
            if i == 1 or i == t:
                self.outputLine(attr1, src + 'LinearModel2')
            else:
                self.outputLine(attr1, 'Recovering')
        self.missingCounter += t - 1

    def vot(self, bbx):
        """
        Tracking with VOT (DaSiamRPN)
        :param bbx: The initial bounding box
        :return: The prediction and the confidence score
        """
        x, y, w, h, frame = bbx
        [cx, cy, w, h] = [x + w / 2, y + h / 2, w, h]

        # tracker init
        target_pos, target_sz = np.array([cx, cy]), np.array([w, h])
        cur_img = cv2.imread(self.a_train_set.img_dir + '%06d.jpg' % frame)
        state = SiamRPN_init(cur_img, target_pos, target_sz, self.net)

        state = SiamRPN_track(state, self.img)  # track
        res = cxy_wh_2_rect(state['target_pos'], state['target_sz'])
        score = state['score']

        bbx = [int(l) for l in res]
        return bbx, score

    def tracking_vot(self, gap, index):
        frame = self.a_train_set.f_step - self.a_train_set.gap
        self.img = cv2.imread(self.a_train_set.img_dir + '%06d.jpg' %
                              (frame + gap))

        bbx = self.a_train_set.bbx[frame][index]
        pred, score = self.vot(bbx)
        if score >= vot_conf_score:
            return pred

        return None

    def transfer(self, line, pred, frame):
        attr = []
        attr.append(str(frame))
        attr.append(line[1])
        for p in pred:
            attr.append(str(p))
        for p in line[6:]:
            attr.append(p)
        attr[-1] = 1
        return attr

    def doTracking(self, a_t_gap, index):
        # @We first do tracking with DaSiamRPN.
        frame = self.a_train_set.f_step - a_t_gap
        for gap in xrange(1, a_t_gap):
            # print '\n Container:'
            # print self.line_con[self.cur]
            # print self.line_con[self.nxt]
            pred = self.tracking_vot(gap, index)
            if pred is not None:
                attr1 = self.line_con[self.cur][index]
                # print ' Attr1:', attr1
                attr2 = self.transfer(attr1, pred, frame + gap)
                self.linearModel(attr1, attr2, 'doTracking1')
                # print 'Frame:', frame+gap
                # print ' Attr2:', attr2
                # print ' Attr1_after:', attr1
                self.line_con[self.cur][index] = attr2
                # print self.line_con[self.cur][index]
                # raw_input('Continue?')

        pred = self.tracking_vot(a_t_gap, index)
        if pred is not None:
            attr1 = self.line_con[self.cur][index]
            # print '     Attr1:', attr1
            attr2 = self.transfer(attr1, pred, frame + a_t_gap)
            self.linearModel(attr1, attr2, 'doTracking2')
            # print '     Attr2:', attr2
            # print '     Attr1_after:', attr1

            # self.a_train_set.addApp(pred)
            # self.m_train_set.addMotion(pred)
            self.a_train_set.moveApp(index)
            self.m_train_set.moveMotion(index)

            self.line_con[self.nxt].append(attr2)
            self.id_con[self.nxt].append(self.id_con[self.cur][index])
            return True
        return False

    def evaluation(self, head, tail, gtFile):
        '''
        Evaluation on dets
        :param head: the head frame number
        :param tail: the tail frame number
        :param gtFile: the ground truth file name
        :param outFile: the name of output file
        :return: None
        '''
        gtIn = open(gtFile, 'r')
        self.cur, self.nxt = 0, 1
        self.img = None
        self.line_con = [[], []]
        self.id_con = [[], []]
        self.id_step = 1

        a_step = head + self.a_train_set.setBuffer(head)
        m_step = head + self.m_train_set.setBuffer(head)
        print 'Starting from the frame:', a_step
        if a_step != m_step:
            print 'Something is wrong!'
            print 'a_step =', a_step, ', m_step =', m_step
            raw_input('Continue?')

        while a_step <= tail:
            # print '*********************************'

            a_t_gap = self.a_train_set.loadNext()
            m_t_gap = self.m_train_set.loadNext()

            if a_t_gap != m_t_gap:
                print 'Something is wrong!'
                print 'a_t_gap =', a_t_gap, ', m_t_gap =', m_t_gap
                raw_input('Continue?')
            a_step += a_t_gap
            m_step += m_step

            print a_step,
            if a_step % 1000 == 0:
                print

            if a_step > tail:
                break

            self.loadCur(self.a_train_set.m, gtIn)

            # print head+step, 'F',
            a_m, m_m = self.a_train_set.m, self.m_train_set.m
            a_n, m_n = self.a_train_set.n, self.m_train_set.n
            if a_m != m_m or a_n != m_n:
                print 'Something is wrong!'
                print 'a_m = %d, m_m = %d' % (
                    a_m, m_m), ', a_n = %d, m_n = %d' % (a_n, m_n)
                raw_input('Continue?')
            self.loadNxt(gtIn, a_n)

            self.a_train_set.loadPre()
            self.m_train_set.loadPre()

            m_u_ = self.MUphi(self.m_train_set.E, self.m_train_set.V, self.Mu)

            # update the edges
            # print 'T',
            candidates = []
            E_CON, V_CON = [], []
            for edge in self.a_train_set.candidates:
                e, vs_index, vr_index = edge
                e = e.view(1, -1).to(self.device)
                vs = self.a_train_set.getApp(1, vs_index)
                vr = self.a_train_set.getApp(0, vr_index)

                e1 = self.AEphi1(e, vs, vr, self.Au)
                vr1 = self.AVphi(e1, vs, vr, self.Au)
                candidates.append((e1, vs, vr1, vs_index, vr_index))
                E_CON.append(e1)
                V_CON.append(vs)
                V_CON.append(vr1)

            E = self.a_train_set.aggregate(E_CON).view(1, -1)
            V = self.a_train_set.aggregate(V_CON).view(1, -1)
            u1 = self.AUphi(E, V, self.Au)

            ret = self.a_train_set.getRet()
            decay_tag = [0 for i in xrange(a_m)]
            for i in xrange(a_m):
                for j in xrange(a_n):
                    if ret[i][j] == 0:
                        decay_tag[i] += 1

            for i in xrange(len(self.a_train_set.candidates)):
                e1, vs, vr1, a_vs_index, a_vr_index = candidates[i]
                m_e, m_vs_index, m_vr_index = self.m_train_set.candidates[i]
                if a_vs_index != m_vs_index or a_vr_index != m_vr_index:
                    print 'Something is wrong!'
                    print 'a_vs_index = %d, m_vs_index = %d' % (a_vs_index,
                                                                m_vs_index)
                    print 'a_vr_index = %d, m_vr_index = %d' % (a_vr_index,
                                                                m_vr_index)
                    raw_input('Continue?')
                if ret[a_vs_index][a_vr_index] == tau_threshold:
                    continue

                e2 = self.AEphi2(e1, vs, vr1, u1)
                self.a_train_set.edges[a_vs_index][a_vr_index] = e1.data.view(
                    -1)

                a_tmp = F.softmax(e2)
                a_tmp = a_tmp.cpu().data.numpy()[0]

                m_e = m_e.to(self.device).view(1, -1)
                m_v1 = self.m_train_set.getMotion(1, m_vs_index)
                m_v2 = self.m_train_set.getMotion(0, m_vr_index, m_vs_index)
                m_e_ = self.MEphi(m_e, m_v1, m_v2, m_u_)
                self.m_train_set.edges[m_vs_index][
                    m_vr_index] = m_e_.data.view(-1)
                m_tmp = F.softmax(m_e_)
                m_tmp = m_tmp.cpu().data.numpy()[0]

                t = self.line_con[self.cur][a_vs_index][-1]
                # A = float(a_tmp[0]) * pow(decay, t-1)
                # M = float(m_tmp[0]) * pow(decay, t-1)
                if decay_tag[a_vs_index] > 0:
                    try:
                        # A = min(float(a_tmp[0]) * pow(decay, t + a_t_gap -2), 0.999999999999)
                        # M = min(float(m_tmp[0]) * pow(decay, t + a_t_gap -2), 0.999999999999)
                        A = min(
                            float(a_tmp[0]) * pow(decay, t + a_t_gap - 2), 1.0)
                        M = min(
                            float(m_tmp[0]) * pow(decay, t + a_t_gap - 2), 1.0)
                    except OverflowError:
                        print 'OverflowError!'
                        A = float(a_tmp[0])
                        M = float(m_tmp[0])
                else:
                    A = float(a_tmp[0])
                    M = float(m_tmp[0])
                ret[a_vs_index][a_vr_index] = A * self.alpha + M * (1 -
                                                                    self.alpha)

            self.tracking(ret, a_m, a_n, m_u_, u1, a_t_gap)

            self.line_con[self.cur] = []
            self.id_con[self.cur] = []
            # print head+step, results
            self.a_train_set.swapFC()
            self.m_train_set.swapFC()
            self.swapFC()

        gtIn.close()
        print '     The results:', self.id_step, self.bbx_counter

        # tra_tst = 'training sets' if head == 1 else 'validation sets'
        # out = open(outFile, 'a')
        # print >> out, tra_tst
        # out.close()

    def loadCur(self, a_m, gtIn):
        if self.id_step == 1:
            i = 0
            while i < a_m:
                attrs = gtIn.readline().strip().split(',')
                if float(attrs[6]) >= tau_conf_score:
                    attrs.append(1)
                    attrs[1] = str(self.id_step)
                    self.outputLine(attrs, 'LoadCur')
                    self.line_con[self.cur].append(attrs)
                    self.id_con[self.cur].append(self.id_step)
                    self.id_step += 1
                    i += 1

    def loadNxt(self, gtIn, a_n):
        i = 0
        while i < a_n:
            attrs = gtIn.readline().strip().split(',')
            if float(attrs[6]) >= tau_conf_score:
                attrs.append(1)
                self.line_con[self.nxt].append(attrs)
                self.id_con[self.nxt].append(-1)
                i += 1

    def tracking(self, ret, a_m, a_n, m_u_, u1, a_t_gap):
        results = self.hungarian.compute(ret)

        # if self.a_train_set.f_step > 532:
        #     print '\nCur:'
        #     for i in xrange(len(self.line_con[self.cur])):
        #         print ' Index:', i, '- ID:', self.id_con[self.cur][i], '- line:', self.line_con[self.cur][i]
        #     print 'Ret:'
        #     for i in xrange(len(ret)):
        #         print " Index:", i, '- D:', ret[i]
        #     print 'Nxt:'
        #     for i in xrange(len(self.line_con[self.nxt])):
        #         print ' Index:', i, '- ID:', self.id_con[self.nxt][i], '- line:', self.line_con[self.nxt][i]
        #     print 'Association:'
        #     for (i, j) in results:
        #         print ' Index:', i, '- ID:', self.id_con[self.cur][i], '- line:', self.line_con[self.cur][i]
        #         print '     Index:', j, '- line:', self.line_con[self.nxt][j]
        #     print ''
        #     raw_input('Continue?')

        keeper = set(i for i in xrange(a_m))
        look_up = set(j for j in xrange(a_n))
        nxt = self.a_train_set.nxt
        for (i, j) in results:
            # print (i,j)
            if ret[i][j] >= tau_threshold:
                continue
            e1 = self.a_train_set.edges[i][j].view(1, -1).to(self.device)
            vs = self.a_train_set.getApp(1, i)
            vr = self.a_train_set.getApp(0, j)

            vr1 = self.AVphi(e1, vs, vr, self.Au)
            self.a_train_set.detections[nxt][j][0] = vr1.data

            keeper.remove(i)
            look_up.remove(j)
            self.m_train_set.updateVelocity(i, j, False)

            id = self.id_con[self.cur][i]
            self.id_con[self.nxt][j] = id
            attr1 = self.line_con[self.cur][i]
            attr2 = self.line_con[self.nxt][j]
            # print attrs
            attr2[1] = str(id)
            if attr2[1] == '-1':
                print 'In main process:', attr2[1], self.id_con[self.cur][i]
            self.linearModel(attr1, attr2, 'Main')

        if u_update:
            # m_u_ = torch.clamp(m_u_, max=1.0, min=-1.0)  # make sure that the global variable not that big
            # u1 = torch.clamp(u1, max=1.0, min=-1.0)
            self.Mu = m_u_.data
            self.Au = u1.data

        remainer = set()
        for i in keeper:
            if self.doTracking(a_t_gap, i) == False:
                remainer.add(i)

        for j in look_up:
            self.m_train_set.updateVelocity(-1, j, tag=False)

        self.output(a_n)

        self.miss_occlu(a_t_gap, remainer)
        # self.miss_occlu(a_t_gap, keeper)

    def output(self, a_n):
        for i in xrange(a_n):
            if self.id_con[self.nxt][i] == -1:
                self.id_con[self.nxt][i] = self.id_step
                attrs = self.line_con[self.nxt][i]
                attrs[1] = str(self.id_step)
                self.outputLine(attrs, 'Output')
                self.id_step += 1

    def miss_occlu(self, a_t_gap, remainer):
        # For missing & Occlusion
        for index in remainer:
            attrs = self.line_con[self.cur][index]
            # print '*', attrs, '*'
            if attrs[-1] + a_t_gap <= gap:
                attrs[-1] += a_t_gap
                self.line_con[self.nxt].append(attrs)
                self.id_con[self.nxt].append(self.id_con[self.cur][index])
                self.a_train_set.moveApp(index)
                self.m_train_set.moveMotion(index)
Esempio n. 2
0
class GN():
    def __init__(self, seq_index, begin, end, a, cuda=True):
        '''
        Evaluating with the MotMetrics
        :param seq_index: the number of the sequence
        :param tt: train_test
        :param length: the number of frames which is used for training
        :param cuda: True - GPU, False - CPU
        '''
        self.bbx_counter = 0
        self.seq_index = seq_index
        self.hungarian = Munkres()
        self.device = torch.device("cuda" if cuda else "cpu")
        self.begin = begin
        self.end = end
        self.alpha = a
        self.missingCounter = 0
        self.sideConnection = 0

        print '     Loading the model...'
        self.loadAModel()
        self.loadMModel()
        self.loadFasterRCNN()
        self.loadVOT()

        if train_set_num == 4:
            self.out_dir = t_dir + 'motmetrics_%s_4_cf_%.1f_iou_%.1f_vc_%.2f_%s/' % (
                type, cf, iou, vot_conf_score, recover_dir)
        else:
            self.out_dir = t_dir + 'motmetrics_%s_4_cf_%.1f_iou_%.1f_vc_%.2f_%s_fgap_%d_dseq_new/' % (
                type, cf, iou, vot_conf_score, recover_dir, f_gap)

        print '		', self.out_dir
        if not os.path.exists(self.out_dir):
            os.mkdir(self.out_dir)
        else:
            deleteDir(self.out_dir)
            os.mkdir(self.out_dir)
        self.initOut()

    def initOut(self):
        print '     Loading Data...'
        self.a_train_set = ADatasetFromFolder(
            sequence_dir, '../MOT/MOT16/train/MOT16-%02d' % self.seq_index,
            tau_conf_score)
        self.m_train_set = MDatasetFromFolder(
            sequence_dir, '../MOT/MOT16/train/MOT16-%02d' % self.seq_index,
            tau_conf_score)

        gt_training = self.out_dir + 'gt_training.txt'  # the gt of the training data
        self.copyLines(self.seq_index, self.begin, gt_training, self.end)

        detection_dir = self.out_dir + 'res_training_det.txt'
        res_training = self.out_dir + 'res_training.txt'  # the result of the training data
        self.createTxt(detection_dir)
        self.createTxt(res_training)
        self.copyLines(self.seq_index, self.begin, detection_dir, self.end, 1)

        self.out = open(res_training, 'w')
        self.evaluation(self.begin, self.end, detection_dir)
        self.out.close()

    def getSeqL(self, info):
        # get the length of the sequence
        f = open(info, 'r')
        f.readline()
        for line in f.readlines():
            line = line.strip().split('=')
            if line[0] == 'seqLength':
                seqL = int(line[1])
        f.close()
        return seqL

    def copyLines(self, seq, head, gt_seq, tail=-1, tag=0):
        '''
        Copy the groun truth within [head, head+num]
        :param seq: the number of the sequence
        :param head: the head frame number
        :param tail: the number the clipped sequence
        :param gt_seq: the dir of the output file
        :return: None
        '''
        if tt_tag:
            basic_dir = '../MOT/MOT%d/test/MOT%d-%02d-%s/' % (year, year, seq,
                                                              type)
        else:
            basic_dir = '../MOT/MOT%d/train/MOT%d-%02d-%s/' % (year, year, seq,
                                                               type)
        print '     Testing on', basic_dir, 'Length:', self.end - self.begin + 1
        seqL = tail if tail != -1 else self.getSeqL(basic_dir + 'seqinfo.ini')

        det_dir = 'gt/gt_det.txt' if test_gt_det else 'det/det.txt'
        seq_dir = basic_dir + ('gt/gt.txt' if tag == 0 else det_dir)
        inStream = open(seq_dir, 'r')

        outStream = open(gt_seq, 'w')
        for line in inStream.readlines():
            line = line.strip()
            attrs = line.split(',')
            f_num = int(attrs[0])
            if f_num >= head and f_num <= seqL:
                print >> outStream, line
        outStream.close()

        inStream.close()
        return seqL

    def createTxt(self, out_file):
        f = open(out_file, 'w')
        f.close()

    def swapFC(self):
        self.cur = self.cur ^ self.nxt
        self.nxt = self.cur ^ self.nxt
        self.cur = self.cur ^ self.nxt

    def loadAModel(self):
        from mot_model import uphi, ephi, vphi
        name = '%s_%d' % (app_dir, train_set_num)
        if edge_initial == 0:
            model_dir = 'App2_bb'
            i_name = 'IoU'
        elif edge_initial == 1:
            model_dir = 'App2_bb'
            i_name = 'Random'
        tail = 10 if train_set_num == 4 else 13
        self.AUphi = torch.load('../%s/Results/MOT16/%s/%s/uphi_%02d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.AVphi = torch.load('../%s/Results/MOT16/%s/%s/vphi_%02d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.AEphi1 = torch.load('../%s/Results/MOT16/%s/%s/ephi1_%02d.pth' %
                                 (model_dir, i_name, name, tail)).to(
                                     self.device)
        self.AEphi2 = torch.load('../%s/Results/MOT16/%s/%s/ephi2_%02d.pth' %
                                 (model_dir, i_name, name, tail)).to(
                                     self.device)
        self.Au = torch.load('../%s/Results/MOT16/%s/%s/u_%02d.pth' %
                             (model_dir, i_name, name, tail))
        self.Au = self.Au.to(self.device)

    def loadMModel(self):
        from m_mot_model import uphi, ephi
        name = 'all_%d' % train_set_num
        if edge_initial == 0:
            model_dir = 'Motion1_bb'
            i_name = 'IoU'
        elif edge_initial == 1:
            model_dir = 'Motion1_bb'
            i_name = 'Random'
        tail = 10 if train_set_num == 4 else 13
        self.MUphi = torch.load('../%s/Results/MOT16/%s/%s/uphi_%d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.MEphi = torch.load('../%s/Results/MOT16/%s/%s/ephi_%d.pth' %
                                (model_dir, i_name, name, tail)).to(
                                    self.device)
        self.Mu = torch.load('../%s/Results/MOT16/%s/%s/u_%d.pth' %
                             (model_dir, i_name, name, tail))
        self.Mu = self.Mu.to(self.device)

    def loadFasterRCNN(self):
        pprint.pprint(cfg)
        np.random.seed(cfg.RNG_SEED)
        load_name = 'data/pretrained_model/faster_rcnn_1_7_10021.pth'
        self.pascal_classes = np.asarray([
            '__background__', 'aeroplane', 'bicycle', 'bird', 'boat', 'bottle',
            'bus', 'car', 'cat', 'chair', 'cow', 'diningtable', 'dog', 'horse',
            'motorbike', 'person', 'pottedplant', 'sheep', 'sofa', 'train',
            'tvmonitor'
        ])
        self.fasterRCNN = resnet(self.pascal_classes, 101, pretrained=True)
        self.fasterRCNN.create_architecture()
        checkpoint = torch.load(load_name)
        self.fasterRCNN.load_state_dict(checkpoint['model'])
        self.fasterRCNN = self.fasterRCNN.to(self.device)
        self.fasterRCNN.eval()

    def detect(self, bbx):
        with torch.no_grad():
            vis = False
            thresh = 0.05

            im_data = torch.FloatTensor(1).to(self.device)
            im_info = torch.FloatTensor(1).to(self.device)
            num_boxes = torch.LongTensor(1).to(self.device)
            gt_boxes = torch.FloatTensor(1).to(self.device)

            # total_tic = time.time()

            x, y, w, h = [int(p) for p in bbx]
            x = max(x, 0)
            y = max(y, 0)
            im = self.img[y:(y + h), x:(x + w)]
            # print ' (x=%d, y=%d), %d * %d, (%d, %d) - cropsize: %d * %d' % (x, y, w, h, x+w, y+h, im.shape[1], im.shape[0])
            w, h = im.shape[1], im.shape[0]
            refine_bbx = [0, 0, w, h]
            if w * h == 0:
                print 'What? %d * %d' % (w, h)
                # raw_input('Continue?')
                return False

            blobs, im_scales = _get_image_blob(im)
            assert len(im_scales) == 1, "Only single-image batch implemented"
            im_blob = blobs
            im_info_np = np.array(
                [[im_blob.shape[1], im_blob.shape[2], im_scales[0]]],
                dtype=np.float32)

            im_data_pt = torch.from_numpy(im_blob)
            im_data_pt = im_data_pt.permute(0, 3, 1, 2)
            im_info_pt = torch.from_numpy(im_info_np)

            im_data.data.resize_(im_data_pt.size()).copy_(im_data_pt)
            im_info.data.resize_(im_info_pt.size()).copy_(im_info_pt)
            gt_boxes.data.resize_(1, 1, 5).zero_()
            num_boxes.data.resize_(1).zero_()

            # pdb.set_trace()
            # det_tic = time.time()

            rois, cls_prob, bbox_pred, \
            rpn_loss_cls, rpn_loss_box, \
            RCNN_loss_cls, RCNN_loss_bbox, \
            rois_label = self.fasterRCNN(im_data, im_info, gt_boxes, num_boxes)

            scores = cls_prob.data
            boxes = rois.data[:, :, 1:5]

            if cfg.TEST.BBOX_REG:
                # Apply bounding-box regression deltas
                box_deltas = bbox_pred.data
                if cfg.TRAIN.BBOX_NORMALIZE_TARGETS_PRECOMPUTED:
                    # Optionally normalize targets by a precomputed mean and stdev
                    box_deltas = box_deltas.view(-1, 4) * torch.FloatTensor(cfg.TRAIN.BBOX_NORMALIZE_STDS).cuda() \
                                 + torch.FloatTensor(cfg.TRAIN.BBOX_NORMALIZE_MEANS).to(self.device)

                    box_deltas = box_deltas.view(1, -1,
                                                 4 * len(self.pascal_classes))

                pred_boxes = bbox_transform_inv(boxes, box_deltas, 1)
                pred_boxes = clip_boxes(pred_boxes, im_info.data, 1)
            else:
                # Simply repeat the boxes, once for each class
                _ = torch.from_numpy(np.tile(boxes, (1, scores.shape[1])))
                pred_boxes = _.to(self.device)

            pred_boxes /= im_scales[0]

            scores = scores.squeeze()
            pred_boxes = pred_boxes.squeeze()

            # det_toc = time.time()
            # detect_time = det_toc - det_tic
            # misc_tic = time.time()

            if vis:
                im2show = np.copy(im)

            j = 15
            inds = torch.nonzero(scores[:, j] > thresh).view(-1)
            # if there is det
            step = 0
            if inds.numel() > 0:
                cls_scores = scores[:, j][inds]
                _, order = torch.sort(cls_scores, 0, True)
                cls_boxes = pred_boxes[inds][:, j * 4:(j + 1) * 4]

                cls_dets = torch.cat((cls_boxes, cls_scores.unsqueeze(1)), 1)
                # cls_dets = torch.cat((cls_boxes, cls_scores), 1)
                cls_dets = cls_dets[order]
                keep = nms(cls_dets,
                           cfg.TEST.NMS,
                           force_cpu=not cfg.USE_GPU_NMS)
                cls_dets = cls_dets[keep.view(-1).long()]

                dets = cls_dets.cpu().numpy()
                for i in range(dets.shape[0]):
                    if dets[i, -1] > cf:
                        x1, y1, w1, h1 = dets[i][:4]
                        det = [x1, y1, w1 - x1, h1 - y1]
                        ratio = self.a_train_set.IOU(det, refine_bbx)
                        if ratio[0] > iou:  # IOU between prediction and detection should not be limited
                            step += 1

                if vis:
                    print cls_dets
                    dets = cls_dets.cpu().numpy()
                    # for i in range(dets.shape[0]):
                    #     bbox = tuple(int(np.round(x)) for x in dets[i, :4])
                    #     score = dets[i, -1]
                    #     if score > thresh:
                    #         crop = im[bbox[1]:bbox[3], bbox[0]:bbox[2]]
                    #         cv2.imwrite('in_place/%02d.jpg'%step, crop)
                    #         step += 1

                    im2show = vis_detections(im2show, self.pascal_classes[j],
                                             dets)

            # misc_toc = time.time()
            # nms_time = misc_toc - misc_tic

            if vis:
                cv2.imshow('test', im2show)
                cv2.waitKey(0)
                # result_path = os.path.join('results', imglist[num_images][:-4] + "_det.jpg")
                # cv2.imwrite(result_path, im2show)

            if step:
                return True
            return False

    def loadVOT(self):
        self.net = SiamRPNvot()
        self.net.load_state_dict(torch.load('VOT/SiamRPNVOT.model'))
        self.net = self.net.to(self.device)

    def outputLine(self, attr, src):
        """
        Output the tracking result into text file
        :param attr: The tracked detection
        :param src: The source code which call this function
        :return: None
        """
        if attr[1] == '-1':
            print src, '-', attr
        line = ''
        for attr in attr[:-1]:
            line += attr + ','
        if show_recovering:
            if src[0] == 'd':
                line += '1'
            elif src[0] == 'R':
                line += '2'
            else:
                line += '0'
        else:
            line = line[:-1]
        self.bbx_counter += 1
        print >> self.out, line

    def linearModel(self, attr1, attr2, src):
        # print 'I got you! *.*'
        # print attr1, attr2
        frame, frame2 = int(attr1[0]), int(attr2[0])
        t = frame2 - frame
        if t > 1:
            self.sideConnection += 1
        if t > f_gap:
            self.outputLine(attr2, src + 'LinearModel1')
            return
        x1, y1, w1, h1 = float(attr1[2]), float(attr1[3]), float(
            attr1[4]), float(attr1[5])
        x2, y2, w2, h2 = float(attr2[2]), float(attr2[3]), float(
            attr2[4]), float(attr2[5])

        x_delta = (x2 - x1) / t
        y_delta = (y2 - y1) / t
        w_delta = (w2 - w1) / t
        h_delta = (h2 - h1) / t

        for i in xrange(1, t + 1):
            frame += 1
            x1 += x_delta
            y1 += y_delta
            w1 += w_delta
            h1 += h_delta
            attr1[0] = str(frame)
            attr1[2] = str(x1)
            attr1[3] = str(y1)
            attr1[4] = str(w1)
            attr1[5] = str(h1)
            if i == 1 or i == t:
                self.outputLine(attr1, src + 'LinearModel2')
            else:
                self.outputLine(attr1, 'Recovering')
        self.missingCounter += t - 1

    def vot(self, bbx):
        """
        Tracking with VOT (DaSiamRPN)
        :param bbx: The initial bounding box
        :return: The prediction and the confidence score
        """
        x, y, w, h, frame = bbx
        [cx, cy, w, h] = [x + w / 2, y + h / 2, w, h]

        # tracker init
        target_pos, target_sz = np.array([cx, cy]), np.array([w, h])
        cur_img = cv2.imread(self.a_train_set.img_dir + '%06d.jpg' % frame)
        state = SiamRPN_init(cur_img, target_pos, target_sz, self.net)

        state = SiamRPN_track(state, self.img)  # track
        res = cxy_wh_2_rect(state['target_pos'], state['target_sz'])
        score = state['score']

        bbx = [int(l) for l in res]
        return bbx, score

    def tracking_vot(self, gap, index):
        frame = self.a_train_set.f_step - self.a_train_set.gap
        self.img = cv2.imread(self.a_train_set.img_dir + '%06d.jpg' %
                              (frame + gap))

        bbx = self.a_train_set.bbx[frame][index]
        pred, score = self.vot(bbx)
        if score >= vot_conf_score and self.detect(pred):
            return pred

        return None

    def transfer(self, line, pred, frame):
        attr = []
        attr.append(str(frame))
        attr.append(line[1])
        for p in pred:
            attr.append(str(p))
        for p in line[6:]:
            attr.append(p)
        attr[-1] = 1
        return attr

    def doTracking(self, a_t_gap, index):
        # @We first do tracking with DaSiamRPN.
        frame = self.a_train_set.f_step - a_t_gap
        for gap in xrange(1, a_t_gap):
            # print '\n Container:'
            # print self.line_con[self.cur]
            # print self.line_con[self.nxt]
            pred = self.tracking_vot(gap, index)
            if pred is not None:
                attr1 = self.line_con[self.cur][index]
                # print ' Attr1:', attr1
                attr2 = self.transfer(attr1, pred, frame + gap)
                self.linearModel(attr1, attr2, 'doTracking1')
                # print 'Frame:', frame+gap
                # print ' Attr2:', attr2
                # print ' Attr1_after:', attr1
                self.line_con[self.cur][index] = attr2
                # print self.line_con[self.cur][index]
                # raw_input('Continue?')

        pred = self.tracking_vot(a_t_gap, index)
        if pred is not None:
            attr1 = self.line_con[self.cur][index]
            # print '     Attr1:', attr1
            attr2 = self.transfer(attr1, pred, frame + a_t_gap)
            self.linearModel(attr1, attr2, 'doTracking2')
            # print '     Attr2:', attr2
            # print '     Attr1_after:', attr1

            # self.a_train_set.addApp(pred)
            # self.m_train_set.addMotion(pred)
            self.a_train_set.moveApp(index)
            self.m_train_set.moveMotion(index)

            self.line_con[self.nxt].append(attr2)
            self.id_con[self.nxt].append(self.id_con[self.cur][index])
            return True
        return False

    def evaluation(self, head, tail, gtFile):
        '''
        Evaluation on dets
        :param head: the head frame number
        :param tail: the tail frame number
        :param gtFile: the ground truth file name
        :param outFile: the name of output file
        :return: None
        '''
        gtIn = open(gtFile, 'r')
        self.cur, self.nxt = 0, 1
        self.img = None
        self.line_con = [[], []]
        self.id_con = [[], []]
        self.id_step = 1

        a_step = head + self.a_train_set.setBuffer(head)
        m_step = head + self.m_train_set.setBuffer(head)
        print 'Starting from the frame:', a_step
        if a_step != m_step:
            print 'Something is wrong!'
            print 'a_step =', a_step, ', m_step =', m_step
            raw_input('Continue?')

        while a_step <= tail:
            # print '*********************************'

            a_t_gap = self.a_train_set.loadNext()
            m_t_gap = self.m_train_set.loadNext()

            if a_t_gap != m_t_gap:
                print 'Something is wrong!'
                print 'a_t_gap =', a_t_gap, ', m_t_gap =', m_t_gap
                raw_input('Continue?')
            a_step += a_t_gap
            m_step += m_step

            print a_step,
            if a_step % 1000 == 0:
                print

            if a_step > tail:
                break

            self.loadCur(self.a_train_set.m, gtIn)

            # print head+step, 'F',
            a_m, m_m = self.a_train_set.m, self.m_train_set.m
            a_n, m_n = self.a_train_set.n, self.m_train_set.n
            if a_m != m_m or a_n != m_n:
                print 'Something is wrong!'
                print 'a_m = %d, m_m = %d' % (
                    a_m, m_m), ', a_n = %d, m_n = %d' % (a_n, m_n)
                raw_input('Continue?')
            self.loadNxt(gtIn, a_n)

            self.a_train_set.loadPre()
            self.m_train_set.loadPre()

            m_u_ = self.MUphi(self.m_train_set.E, self.m_train_set.V, self.Mu)

            # update the edges
            # print 'T',
            candidates = []
            E_CON, V_CON = [], []
            for edge in self.a_train_set.candidates:
                e, vs_index, vr_index = edge
                e = e.view(1, -1).to(self.device)
                vs = self.a_train_set.getApp(1, vs_index)
                vr = self.a_train_set.getApp(0, vr_index)

                e1 = self.AEphi1(e, vs, vr, self.Au)
                vr1 = self.AVphi(e1, vs, vr, self.Au)
                candidates.append((e1, vs, vr1, vs_index, vr_index))
                E_CON.append(e1)
                V_CON.append(vs)
                V_CON.append(vr1)

            E = self.a_train_set.aggregate(E_CON).view(1, -1)
            V = self.a_train_set.aggregate(V_CON).view(1, -1)
            u1 = self.AUphi(E, V, self.Au)

            ret = self.a_train_set.getRet()
            decay_tag = [0 for i in xrange(a_m)]
            for i in xrange(a_m):
                for j in xrange(a_n):
                    if ret[i][j] == 0:
                        decay_tag[i] += 1

            for i in xrange(len(self.a_train_set.candidates)):
                e1, vs, vr1, a_vs_index, a_vr_index = candidates[i]
                m_e, m_vs_index, m_vr_index = self.m_train_set.candidates[i]
                if a_vs_index != m_vs_index or a_vr_index != m_vr_index:
                    print 'Something is wrong!'
                    print 'a_vs_index = %d, m_vs_index = %d' % (a_vs_index,
                                                                m_vs_index)
                    print 'a_vr_index = %d, m_vr_index = %d' % (a_vr_index,
                                                                m_vr_index)
                    raw_input('Continue?')
                if ret[a_vs_index][a_vr_index] == tau_threshold:
                    continue

                e2 = self.AEphi2(e1, vs, vr1, u1)
                self.a_train_set.edges[a_vs_index][a_vr_index] = e1.data.view(
                    -1)

                a_tmp = F.softmax(e2)
                a_tmp = a_tmp.cpu().data.numpy()[0]

                m_e = m_e.to(self.device).view(1, -1)
                m_v1 = self.m_train_set.getMotion(1, m_vs_index)
                m_v2 = self.m_train_set.getMotion(0, m_vr_index, m_vs_index)
                m_e_ = self.MEphi(m_e, m_v1, m_v2, m_u_)
                self.m_train_set.edges[m_vs_index][
                    m_vr_index] = m_e_.data.view(-1)
                m_tmp = F.softmax(m_e_)
                m_tmp = m_tmp.cpu().data.numpy()[0]

                t = self.line_con[self.cur][a_vs_index][-1]
                # A = float(a_tmp[0]) * pow(decay, t-1)
                # M = float(m_tmp[0]) * pow(decay, t-1)
                if decay_tag[a_vs_index] > 0:
                    try:
                        # A = min(float(a_tmp[0]) * pow(decay, t + a_t_gap -2), 0.999999999999)
                        # M = min(float(m_tmp[0]) * pow(decay, t + a_t_gap -2), 0.999999999999)
                        A = min(
                            float(a_tmp[0]) * pow(decay, t + a_t_gap - 2), 1.0)
                        M = min(
                            float(m_tmp[0]) * pow(decay, t + a_t_gap - 2), 1.0)
                    except OverflowError:
                        print 'OverflowError!'
                        A = float(a_tmp[0])
                        M = float(m_tmp[0])
                else:
                    A = float(a_tmp[0])
                    M = float(m_tmp[0])
                ret[a_vs_index][a_vr_index] = A * self.alpha + M * (1 -
                                                                    self.alpha)

            self.tracking(ret, a_m, a_n, m_u_, u1, a_t_gap)

            self.line_con[self.cur] = []
            self.id_con[self.cur] = []
            # print head+step, results
            self.a_train_set.swapFC()
            self.m_train_set.swapFC()
            self.swapFC()

        gtIn.close()
        print '     The results:', self.id_step, self.bbx_counter

        # tra_tst = 'training sets' if head == 1 else 'validation sets'
        # out = open(outFile, 'a')
        # print >> out, tra_tst
        # out.close()

    def loadCur(self, a_m, gtIn):
        if self.id_step == 1:
            i = 0
            while i < a_m:
                attrs = gtIn.readline().strip().split(',')
                if float(attrs[6]) >= tau_conf_score:
                    attrs.append(1)
                    attrs[1] = str(self.id_step)
                    self.outputLine(attrs, 'LoadCur')
                    self.line_con[self.cur].append(attrs)
                    self.id_con[self.cur].append(self.id_step)
                    self.id_step += 1
                    i += 1

    def loadNxt(self, gtIn, a_n):
        i = 0
        while i < a_n:
            attrs = gtIn.readline().strip().split(',')
            if float(attrs[6]) >= tau_conf_score:
                attrs.append(1)
                self.line_con[self.nxt].append(attrs)
                self.id_con[self.nxt].append(-1)
                i += 1

    def tracking(self, ret, a_m, a_n, m_u_, u1, a_t_gap):
        results = self.hungarian.compute(ret)

        # if self.a_train_set.f_step > 532:
        #     print '\nCur:'
        #     for i in xrange(len(self.line_con[self.cur])):
        #         print ' Index:', i, '- ID:', self.id_con[self.cur][i], '- line:', self.line_con[self.cur][i]
        #     print 'Ret:'
        #     for i in xrange(len(ret)):
        #         print " Index:", i, '- D:', ret[i]
        #     print 'Nxt:'
        #     for i in xrange(len(self.line_con[self.nxt])):
        #         print ' Index:', i, '- ID:', self.id_con[self.nxt][i], '- line:', self.line_con[self.nxt][i]
        #     print 'Association:'
        #     for (i, j) in results:
        #         print ' Index:', i, '- ID:', self.id_con[self.cur][i], '- line:', self.line_con[self.cur][i]
        #         print '     Index:', j, '- line:', self.line_con[self.nxt][j]
        #     print ''
        #     raw_input('Continue?')

        keeper = set(i for i in xrange(a_m))
        look_up = set(j for j in xrange(a_n))
        nxt = self.a_train_set.nxt
        for (i, j) in results:
            # print (i,j)
            if ret[i][j] >= tau_threshold:
                continue
            e1 = self.a_train_set.edges[i][j].view(1, -1).to(self.device)
            vs = self.a_train_set.getApp(1, i)
            vr = self.a_train_set.getApp(0, j)

            vr1 = self.AVphi(e1, vs, vr, self.Au)
            self.a_train_set.detections[nxt][j][0] = vr1.data

            keeper.remove(i)
            look_up.remove(j)
            self.m_train_set.updateVelocity(i, j, False)

            id = self.id_con[self.cur][i]
            self.id_con[self.nxt][j] = id
            attr1 = self.line_con[self.cur][i]
            attr2 = self.line_con[self.nxt][j]
            # print attrs
            attr2[1] = str(id)
            if attr2[1] == '-1':
                print 'In main process:', attr2[1], self.id_con[self.cur][i]
            self.linearModel(attr1, attr2, 'Main')

        if u_update:
            # m_u_ = torch.clamp(m_u_, max=1.0, min=-1.0)  # make sure that the global variable not that big
            # u1 = torch.clamp(u1, max=1.0, min=-1.0)
            self.Mu = m_u_.data
            self.Au = u1.data

        remainer = set()
        for i in keeper:
            if self.line_con[
                    self.cur][i][-1] + a_t_gap <= gap and self.doTracking(
                        a_t_gap, i) == False:
                # if self.doTracking(a_t_gap, i) == False:
                remainer.add(i)

        for j in look_up:
            self.m_train_set.updateVelocity(-1, j, tag=False)

        self.output(a_n)

        self.miss_occlu(a_t_gap, remainer)
        # self.miss_occlu(a_t_gap, keeper)

    def output(self, a_n):
        for i in xrange(a_n):
            if self.id_con[self.nxt][i] == -1:
                self.id_con[self.nxt][i] = self.id_step
                attrs = self.line_con[self.nxt][i]
                attrs[1] = str(self.id_step)
                self.outputLine(attrs, 'Output')
                self.id_step += 1

    def miss_occlu(self, a_t_gap, remainer):
        # For missing & Occlusion
        for index in remainer:
            attrs = self.line_con[self.cur][index]
            # print '*', attrs, '*'
            if attrs[-1] + a_t_gap <= gap:
                attrs[-1] += a_t_gap
                self.line_con[self.nxt].append(attrs)
                self.id_con[self.nxt].append(self.id_con[self.cur][index])
                self.a_train_set.moveApp(index)
                self.m_train_set.moveMotion(index)