Ejemplo n.º 1
0
    def forward(self, is_train, req, in_data, out_data, aux):
        if self.nms_type == 'nms':
            nms = py_nms_wrapper(self.nms_thr)
        else:
            raise NotImplementedError

        cls_score = in_data[0].asnumpy()
        bbox_xyxy = in_data[1].asnumpy()

        cls_score_shape = cls_score.shape # (b, n, num_class_withbg)
        bbox_xyxy_shape = bbox_xyxy.shape # (b, n, 4) or (b, n, 4 * num_class_withbg)
        batch_image = cls_score_shape[0]
        num_bbox = cls_score_shape[1]
        num_class_withbg = cls_score_shape[2]

        post_score = np.zeros((batch_image, self.max_det_per_image, 1), dtype=np.float32)
        post_bbox_xyxy = np.zeros((batch_image, self.max_det_per_image, 4), dtype=np.float32)
        post_cls = np.full((batch_image, self.max_det_per_image, 1), -1, dtype=np.float32)

        for i, (per_image_cls_score, per_image_bbox_xyxy) in enumerate(zip(cls_score, bbox_xyxy)):
            cls_det = multiclass_nms(nms, per_image_cls_score, per_image_bbox_xyxy, \
                                     self.min_det_score, self.max_det_per_image)
            num_det = cls_det.shape[0]
            post_bbox_xyxy[i, :num_det] = cls_det[:, :4]
            post_score[i, :num_det] = cls_det[:, -2][:, np.newaxis] # convert to (n, 1)
            post_cls[i, :num_det] = cls_det[:, -1][:, np.newaxis] # convert to (n, 1)

        self.assign(out_data[0], req[0], post_score)
        self.assign(out_data[1], req[1], post_bbox_xyxy)
        self.assign(out_data[2], req[2], post_cls)
Ejemplo n.º 2
0
 def __init__(self, configFn, ctx, outFolder, threshold):
     os.environ["MXNET_CUDNN_AUTOTUNE_DEFAULT"] = "0"
     config = importlib.import_module(
         configFn.replace('.py', '').replace('/', '.'))
     _, _, _, _, _, _, self.__pModel, _, self.__pTest, self.transform, _, _, _ = config.get_config(
         is_train=False)
     self.__pModel = patch_config_as_nothrow(self.__pModel)
     self.__pTest = patch_config_as_nothrow(self.__pTest)
     self.resizeParam = (800, 1200)
     if callable(self.__pTest.nms.type):
         self.__nms = self.__pTest.nms.type(self.__pTest.nms.thr)
     else:
         from operator_py.nms import py_nms_wrapper
         self.__nms = py_nms_wrapper(self.__pTest.nms.thr)
     arg_params, aux_params = load_checkpoint(self.__pTest.model.prefix,
                                              self.__pTest.model.epoch)
     sym = self.__pModel.test_symbol
     from utils.graph_optimize import merge_bn
     sym, arg_params, aux_params = merge_bn(sym, arg_params, aux_params)
     self.__mod = DetModule(
         sym,
         data_names=['data', 'im_info', 'im_id', 'rec_id'],
         context=ctx)
     self.__mod.bind(data_shapes=[('data', (1, 3, self.resizeParam[0],
                                            self.resizeParam[1])),
                                  ('im_info', (1, 3)), ('im_id', (1, )),
                                  ('rec_id', (1, ))],
                     for_training=False)
     self.__mod.set_params(arg_params, aux_params, allow_extra=False)
     self.__saveSymbol(sym, outFolder,
                       self.__pTest.model.prefix.split('/')[-1])
     self.__threshold = threshold
     self.outFolder = outFolder
Ejemplo n.º 3
0
    def __init__(self, config, batch_size, gpu_id, thresh):
        self.config = config
        self.batch_size = batch_size
        self.thresh = thresh

        # Parse the parameter file of model
        pGen, pKv, pRpn, pRoi, pBbox, pDataset, pModel, pOpt, pTest, \
        transform, data_name, label_name, metric_list = config.get_config(is_train=False)

        self.data_name = data_name
        self.label_name = label_name
        self.p_long, self.p_short = transform[1].p.long, transform[1].p.short

        # Define NMS type
        if callable(pTest.nms.type):
            self.do_nms = pTest.nms.type(pTest.nms.thr)
        else:
            from operator_py.nms import py_nms_wrapper

            self.do_nms = py_nms_wrapper(pTest.nms.thr)

        sym = pModel.test_symbol
        sym.save(pTest.model.prefix + "_test.json")

        ctx = mx.gpu(gpu_id)
        data_shape = [
            ('data', (batch_size, 3, 800, 1200)),
            ("im_info", (1, 3)),
            ("im_id", (1, )),
            ("rec_id", (1, )),
        ]

        # Load network
        arg_params, aux_params = load_checkpoint(pTest.model.prefix,
                                                 pTest.model.epoch)
        self.mod = DetModule(sym, data_names=data_name, context=ctx)
        self.mod.bind(data_shapes=data_shape, for_training=False)
        self.mod.set_params(arg_params, aux_params, allow_extra=False)
Ejemplo n.º 4
0
                output_dict[k]["bbox_xyxy"] = output_dict[k]["bbox_xyxy"][0]

            if len(output_dict[k]["cls_score"]) > 1:
                output_dict[k]["cls_score"] = np.concatenate(
                    output_dict[k]["cls_score"])
            else:
                output_dict[k]["cls_score"] = output_dict[k]["cls_score"][0]

        t3_s = time.time()
        print("aggregate uses: %.1f" % (t3_s - t2_s))

        if callable(pTest.nms.type):
            nms = pTest.nms.type(pTest.nms.thr)
        else:
            from operator_py.nms import py_nms_wrapper
            nms = py_nms_wrapper(pTest.nms.thr)

        def do_nms(k):
            bbox_xyxy = output_dict[k]["bbox_xyxy"]
            cls_score = output_dict[k]["cls_score"]
            final_dets = {}

            for cid in range(cls_score.shape[1]):
                score = cls_score[:, cid]
                if bbox_xyxy.shape[1] != 4:
                    cls_box = bbox_xyxy[:, cid * 4:(cid + 1) * 4]
                else:
                    cls_box = bbox_xyxy
                valid_inds = np.where(score > pTest.min_det_score)[0]
                box = cls_box[valid_inds]
                score = score[valid_inds]