def __init__(self, configer):
     super(OpenPose, self).__init__()
     self.configer = configer
     self.backbone = BackboneSelector(configer).get_backbone()
     self.pose_model = PoseModel(configer, self.backbone.get_num_features())
     self.valid_loss_dict = configer.get('loss', 'loss_weights',
                                         configer.get('loss.loss_type'))
Example #2
0
    def __init__(self, configer):
        super(PSPNet, self).__init__()
        self.configer = configer
        self.num_classes = self.configer.get('data', 'num_classes')
        self.backbone = BackboneSelector(configer).get_backbone()
        num_features = self.backbone.get_num_features()
        self.dsn = nn.Sequential(
            _ConvBatchNormReluBlock(num_features // 2,
                                    num_features // 4,
                                    3,
                                    1,
                                    norm_type=self.configer.get(
                                        'network', 'norm_type')),
            nn.Dropout2d(0.1),
            nn.Conv2d(num_features // 4, self.num_classes, 1, 1, 0))
        self.ppm = PPMBilinearDeepsup(fc_dim=num_features,
                                      norm_type=self.configer.get(
                                          'network', 'norm_type'))

        self.cls = nn.Sequential(
            nn.Conv2d(num_features + 4 * 512,
                      512,
                      kernel_size=3,
                      padding=1,
                      bias=False),
            ModuleHelper.BNReLU(512,
                                norm_type=self.configer.get(
                                    'network', 'norm_type')),
            nn.Dropout2d(0.1), nn.Conv2d(512, self.num_classes, kernel_size=1))
        self.valid_loss_dict = configer.get('loss', 'loss_weights',
                                            configer.get('loss.loss_type'))
    def __init__(self, configer):
        super(NonLocalNet_nowd, self).__init__()
        self.configer = configer
        self.num_classes = self.configer.get('data', 'num_classes')
        self.backbone = BackboneSelector(configer).get_backbone()
        num_features = self.backbone.get_num_features()
        self.dsn = nn.Sequential(
            _ConvBatchNormReluBlock(num_features // 2, num_features // 4, 3, 1,
                                    norm_type=self.configer.get('network', 'norm_type')),
            nn.Dropout2d(0.1),
            nn.Conv2d(num_features // 4, self.num_classes, 1, 1, 0)
        )
        self.nlm = NLModule_nowd(num_features, 512, self.num_classes, self.configer)

        self.valid_loss_dict = configer.get('loss', 'loss_weights', configer.get('loss.loss_type'))
Example #4
0
    def __init__(self, configer):
        self.inplanes = 128
        super(DeepLabV3, self).__init__()
        self.configer = configer
        self.num_classes = self.configer.get('data', 'num_classes')
        self.backbone = BackboneSelector(configer).get_backbone()

        self.head = nn.Sequential(ASPPModule(self.backbone.get_num_features(), 
                                             norm_type=self.configer.get('network', 'norm_type')),
                                  nn.Conv2d(512, self.num_classes, kernel_size=1, stride=1, padding=0, bias=True))
        self.dsn = nn.Sequential(
            nn.Conv2d(1024, 512, kernel_size=3, stride=1, padding=1),
            ModuleHelper.BNReLU(512, norm_type=self.configer.get('network', 'norm_type')),
            nn.Dropout2d(0.1),
            nn.Conv2d(512, self.num_classes, kernel_size=1, stride=1, padding=0, bias=True)
        )
        self.valid_loss_dict = configer.get('loss', 'loss_weights', configer.get('loss.loss_type'))
Example #5
0
class DeepLabV3(nn.Module):
    def __init__(self, configer):
        self.inplanes = 128
        super(DeepLabV3, self).__init__()
        self.configer = configer
        self.num_classes = self.configer.get('data', 'num_classes')
        self.backbone = BackboneSelector(configer).get_backbone()

        self.head = nn.Sequential(ASPPModule(self.backbone.get_num_features(), 
                                             norm_type=self.configer.get('network', 'norm_type')),
                                  nn.Conv2d(512, self.num_classes, kernel_size=1, stride=1, padding=0, bias=True))
        self.dsn = nn.Sequential(
            nn.Conv2d(1024, 512, kernel_size=3, stride=1, padding=1),
            ModuleHelper.BNReLU(512, norm_type=self.configer.get('network', 'norm_type')),
            nn.Dropout2d(0.1),
            nn.Conv2d(512, self.num_classes, kernel_size=1, stride=1, padding=0, bias=True)
        )
        self.valid_loss_dict = configer.get('loss', 'loss_weights', configer.get('loss.loss_type'))

    def forward(self, data_dict):
        x = self.backbone(data_dict['img'])
        x_dsn = self.dsn(x[-2])
        x = self.head(x[-1])
        x_dsn = F.interpolate(x_dsn, size=(data_dict['img'].size(2), data_dict['img'].size(3)),
                              mode="bilinear", align_corners=True)
        x = F.interpolate(x, size=(data_dict['img'].size(2), data_dict['img'].size(3)),
                          mode="bilinear", align_corners=True)
        out_dict = dict(dsn_out=x_dsn, out=x)
        if self.configer.get('phase') == 'test':
            return out_dict

        loss_dict = dict()
        if 'dsn_ce_loss' in self.valid_loss_dict:
            loss_dict['dsn_ce_loss'] = dict(
                params=[x_dsn, data_dict['labelmap']],
                type=torch.cuda.LongTensor([BASE_LOSS_DICT['ce_loss']]),
                weight=torch.cuda.FloatTensor([self.valid_loss_dict['dsn_ce_loss']])
            )

        if 'ce_loss' in self.valid_loss_dict:
            loss_dict['ce_loss'] = dict(
                params=[x, data_dict['labelmap']],
                type=torch.cuda.LongTensor([BASE_LOSS_DICT['ce_loss']]),
                weight=torch.cuda.FloatTensor([self.valid_loss_dict['ce_loss']])
            )

        if 'ohem_ce_loss' in self.valid_loss_dict:
            loss_dict['ohem_ce_loss'] = dict(
                params=[x, data_dict['labelmap']],
                type=torch.cuda.LongTensor([BASE_LOSS_DICT['ohem_ce_loss']]),
                weight=torch.cuda.FloatTensor([self.valid_loss_dict['ohem_ce_loss']])
            )
        return out_dict, loss_dict
class NonLocalNet_nowd(nn.Sequential):
    def __init__(self, configer):
        super(NonLocalNet_nowd, self).__init__()
        self.configer = configer
        self.num_classes = self.configer.get('data', 'num_classes')
        self.backbone = BackboneSelector(configer).get_backbone()
        num_features = self.backbone.get_num_features()
        self.dsn = nn.Sequential(
            _ConvBatchNormReluBlock(num_features // 2, num_features // 4, 3, 1,
                                    norm_type=self.configer.get('network', 'norm_type')),
            nn.Dropout2d(0.1),
            nn.Conv2d(num_features // 4, self.num_classes, 1, 1, 0)
        )
        self.nlm = NLModule_nowd(num_features, 512, self.num_classes, self.configer)

        self.valid_loss_dict = configer.get('loss', 'loss_weights', configer.get('loss.loss_type'))

    def forward(self, data_dict):
        x = self.backbone(data_dict['img'])
        aux_x = self.dsn(x[-2])
        x = self.nlm(x[-1])
        x_dsn = F.interpolate(aux_x, size=(data_dict['img'].size(2), data_dict['img'].size(3)),
                              mode="bilinear", align_corners=True)
        x = F.interpolate(x, size=(data_dict['img'].size(2), data_dict['img'].size(3)),
                          mode="bilinear", align_corners=True)
        out_dict = dict(dsn_out=x_dsn, out=x)
        if self.configer.get('phase') == 'test':
            return out_dict

        loss_dict = dict()
        if 'dsn_ce_loss' in self.valid_loss_dict:
            loss_dict['dsn_ce_loss'] = dict(
                params=[x_dsn, data_dict['labelmap']],
                type=torch.cuda.LongTensor([BASE_LOSS_DICT['ce_loss']]),
                weight=torch.cuda.FloatTensor([self.valid_loss_dict['dsn_ce_loss']])
            )

        if 'ce_loss' in self.valid_loss_dict:
            loss_dict['ce_loss'] = dict(
                params=[x, data_dict['labelmap']],
                type=torch.cuda.LongTensor([BASE_LOSS_DICT['ce_loss']]),
                weight=torch.cuda.FloatTensor([self.valid_loss_dict['ce_loss']])
            )

        if 'ohem_ce_loss' in self.valid_loss_dict:
            loss_dict['ohem_ce_loss'] = dict(
                params=[x, data_dict['labelmap']],
                type=torch.cuda.LongTensor([BASE_LOSS_DICT['ohem_ce_loss']]),
                weight=torch.cuda.FloatTensor([self.valid_loss_dict['ohem_ce_loss']])
            )
        return out_dict, loss_dict
Example #7
0
    def __init__(self, configer):
        super(CPN, self).__init__()

        self.configer = configer
        self.backbone = BackboneSelector(configer).get_backbone()

        input_size = self.configer.get('data', 'input_size')
        stride = self.configer.get('network', 'stride')

        output_shape = (input_size[0] // stride, input_size[1] // stride)
        self.global_net = globalNet([2048, 1024, 512, 256],
                                    output_shape,
                                    self.configer.get('network', 'heatmap_out'))

        self.refine_net = refineNet(256, output_shape, self.configer.get('network', 'heatmap_out'))
Example #8
0
 def __init__(self, configer):
     super(asymmetric_non_local_network, self).__init__()
     self.configer = configer
     self.num_classes = self.configer.get('data', 'num_classes')
     self.backbone = BackboneSelector(configer).get_backbone()
     # low_in_channels, high_in_channels, out_channels, key_channels, value_channels, dropout
     self.fusion = AFNB(1024,
                        2048,
                        2048,
                        256,
                        256,
                        dropout=0.05,
                        sizes=([1]),
                        norm_type=self.configer.get('network', 'norm_type'))
     # extra added layers
     self.context = nn.Sequential(
         nn.Conv2d(2048, 512, kernel_size=3, stride=1, padding=1),
         ModuleHelper.BNReLU(512,
                             norm_type=self.configer.get(
                                 'network', 'norm_type')),
         APNB(in_channels=512,
              out_channels=512,
              key_channels=256,
              value_channels=256,
              dropout=0.05,
              sizes=([1]),
              norm_type=self.configer.get('network', 'norm_type')))
     self.cls = nn.Conv2d(512,
                          self.num_classes,
                          kernel_size=1,
                          stride=1,
                          padding=0,
                          bias=True)
     self.dsn = nn.Sequential(
         nn.Conv2d(1024, 512, kernel_size=3, stride=1, padding=1),
         ModuleHelper.BNReLU(512,
                             norm_type=self.configer.get(
                                 'network', 'norm_type')),
         nn.Dropout2d(0.05),
         nn.Conv2d(512,
                   self.num_classes,
                   kernel_size=1,
                   stride=1,
                   padding=0,
                   bias=True))
     self.valid_loss_dict = configer.get('loss', 'loss_weights',
                                         configer.get('loss.loss_type'))
class OpenPose(nn.Module):
    def __init__(self, configer):
        super(OpenPose, self).__init__()
        self.configer = configer
        self.backbone = BackboneSelector(configer).get_backbone()
        self.pose_model = PoseModel(configer, self.backbone.get_num_features())
        self.valid_loss_dict = configer.get('loss', 'loss_weights',
                                            configer.get('loss.loss_type'))

    def forward(self, data_dict):
        x = self.backbone(data_dict['img'])
        paf_out, heatmap_out = self.pose_model(x)
        out_dict = dict(paf=paf_out[-1], heatmap=heatmap_out[-1])
        if self.configer.get('phase') == 'test':
            return out_dict

        loss_dict = dict()
        for i in range(len(paf_out)):
            if 'paf_loss{}'.format(i) in self.valid_loss_dict:
                loss_dict['paf_loss{}'.format(i)] = dict(
                    params=[
                        paf_out[i] * data_dict['maskmap'],
                        data_dict['vecmap'] * data_dict['maskmap']
                    ],
                    type=torch.cuda.LongTensor([BASE_LOSS_DICT['mse_loss']]),
                    weight=torch.cuda.FloatTensor(
                        [self.valid_loss_dict['paf_loss{}'.format(i)]]))

        for i in range(len(heatmap_out)):
            if 'heatmap_loss{}'.format(i) in self.valid_loss_dict:
                loss_dict['heatmap_loss{}'.format(i)] = dict(
                    params=[
                        heatmap_out[i] * data_dict['maskmap'],
                        data_dict['heatmap'] * data_dict['maskmap']
                    ],
                    type=torch.cuda.LongTensor([BASE_LOSS_DICT['mse_loss']]),
                    weight=torch.cuda.FloatTensor(
                        [self.valid_loss_dict['heatmap_loss{}'.format(i)]]))

        return out_dict, loss_dict
Example #10
0
    def __init__(self, configer, loss_dict=None, flag=""):
        super(ClsModel, self).__init__()
        self.configer = configer
        self.flag = flag if len(flag) == 0 else "{}_".format(flag)
        self.backbone = BackboneSelector(configer).get_backbone(
            backbone=configer.get('network.{}backbone'.format(self.flag)),
            pretrained=configer.get('network.{}pretrained'.format(self.flag)))

        self.reduction = None
        fc_dim_out = configer.get('network.{}fc_dim'.format(self.flag),
                                  default=None)
        fc_dim = self.backbone.num_features
        if fc_dim_out is not None:
            self.reduction = nn.Conv2d(self.backbone.num_features, fc_dim_out,
                                       1)
            fc_dim = fc_dim_out

        self.linear_list = nn.ModuleList()
        linear_type = configer.get('network',
                                   '{}linear_type'.format(self.flag),
                                   default='nobias_linear')
        self.fc = LINEAR_DICT[linear_type](fc_dim,
                                           configer.get('data.num_classes'))

        self.embed = None
        if configer.get('network.{}embed'.format(self.flag), default=False):
            feat_dim = configer.get('network', '{}feat_dim'.format(self.flag))
            self.embed = nn.Sequential(nn.Linear(fc_dim, feat_dim),
                                       nn.BatchNorm1d(feat_dim))

        self.bn = None
        if configer.get('network.{}bn'.format(self.flag), default=False):
            self.bn = nn.BatchNorm1d(fc_dim)
            nn.init.zeros_(self.bn.bias)
            self.bn.bias.requires_grad = False

        self.valid_loss_dict = configer.get(
            'loss.loss_weights',
            configer.get('loss.loss_type')) if loss_dict is None else loss_dict
    def __init__(self, configer):
        super(FpnRCNN, self).__init__()
        self.configer = configer
        self.backbone = BackboneSelector(configer).get_backbone()
        self.RCNN_layer0 = nn.Sequential(self.backbone.conv1,
                                         self.backbone.bn1, self.backbone.relu,
                                         self.backbone.maxpool)
        self.RCNN_layer1 = nn.Sequential(self.backbone.layer1)
        self.RCNN_layer2 = nn.Sequential(self.backbone.layer2)
        self.RCNN_layer3 = nn.Sequential(self.backbone.layer3)
        self.RCNN_layer4 = nn.Sequential(self.backbone.layer4)
        # Top layer
        self.RCNN_toplayer = nn.Conv2d(2048,
                                       256,
                                       kernel_size=1,
                                       stride=1,
                                       padding=0)  # reduce channel

        # Smooth layers
        self.RCNN_smooth1 = nn.Conv2d(256,
                                      256,
                                      kernel_size=3,
                                      stride=1,
                                      padding=1)
        self.RCNN_smooth2 = nn.Conv2d(256,
                                      256,
                                      kernel_size=3,
                                      stride=1,
                                      padding=1)
        self.RCNN_smooth3 = nn.Conv2d(256,
                                      256,
                                      kernel_size=3,
                                      stride=1,
                                      padding=1)

        # Lateral layers
        self.RCNN_latlayer1 = nn.Conv2d(1024,
                                        256,
                                        kernel_size=1,
                                        stride=1,
                                        padding=0)
        self.RCNN_latlayer2 = nn.Conv2d(512,
                                        256,
                                        kernel_size=1,
                                        stride=1,
                                        padding=0)
        self.RCNN_latlayer3 = nn.Conv2d(256,
                                        256,
                                        kernel_size=1,
                                        stride=1,
                                        padding=0)

        # ROI Pool feature downsampling
        self.RCNN_roi_feat_ds = nn.Conv2d(256,
                                          256,
                                          kernel_size=3,
                                          stride=2,
                                          padding=1)

        self.RCNN_top = nn.Sequential(
            nn.Conv2d(256,
                      1024,
                      kernel_size=self.configer.get('roi', 'pooled_height'),
                      stride=self.configer.get('roi', 'pooled_height'),
                      padding=0), nn.ReLU(True),
            nn.Conv2d(1024, 1024, kernel_size=1, stride=1, padding=0),
            nn.ReLU(True))

        self.rpn = NaiveRPN(configer)
        self.roi = FRROIGenerator(configer)
        self.roi_sampler = FRROISampler(configer)
        self.head = RoIHead(configer)
    def __init__(self, configer):
        super(DenseASPP, self).__init__()
        self.configer = configer

        dropout0 = MODEL_CONFIG['dropout0']
        dropout1 = MODEL_CONFIG['dropout1']
        d_feature0 = MODEL_CONFIG['d_feature0']
        d_feature1 = MODEL_CONFIG['d_feature1']

        self.backbone = BackboneSelector(configer).get_backbone()

        num_features = self.backbone.get_num_features()

        self.trans = _Transition(num_input_features=self.num_features,
                                 num_output_features=self.num_features // 2,
                                 norm_type=self.configer.get(
                                     'network', 'norm_type'))

        self.num_features = self.num_features // 2

        self.ASPP_3 = _DenseAsppBlock(input_num=num_features,
                                      num1=d_feature0,
                                      num2=d_feature1,
                                      dilation_rate=3,
                                      drop_out=dropout0,
                                      norm_type=self.configer.get(
                                          'network', 'norm_type'))

        self.ASPP_6 = _DenseAsppBlock(input_num=num_features + d_feature1 * 1,
                                      num1=d_feature0,
                                      num2=d_feature1,
                                      dilation_rate=6,
                                      drop_out=dropout0,
                                      norm_type=self.configer.get(
                                          'network', 'norm_type'))

        self.ASPP_12 = _DenseAsppBlock(input_num=num_features + d_feature1 * 2,
                                       num1=d_feature0,
                                       num2=d_feature1,
                                       dilation_rate=12,
                                       drop_out=dropout0,
                                       norm_type=self.configer.get(
                                           'network', 'norm_type'))

        self.ASPP_18 = _DenseAsppBlock(input_num=num_features + d_feature1 * 3,
                                       num1=d_feature0,
                                       num2=d_feature1,
                                       dilation_rate=18,
                                       drop_out=dropout0,
                                       norm_type=self.configer.get(
                                           'network', 'norm_type'))

        self.ASPP_24 = _DenseAsppBlock(input_num=num_features + d_feature1 * 4,
                                       num1=d_feature0,
                                       num2=d_feature1,
                                       dilation_rate=24,
                                       drop_out=dropout0,
                                       norm_type=self.configer.get(
                                           'network', 'norm_type'))

        num_features = num_features + 5 * d_feature1

        self.classification = nn.Sequential(
            nn.Dropout2d(p=dropout1),
            nn.Conv2d(num_features,
                      self.configer.get('data', 'num_classes'),
                      kernel_size=1,
                      padding=0))
        self.valid_loss_dict = configer.get('loss', 'loss_weights',
                                            configer.get('loss.loss_type'))
class DenseASPP(nn.Module):
    """
    * output_scale can only set as 8 or 16
    """
    def __init__(self, configer):
        super(DenseASPP, self).__init__()
        self.configer = configer

        dropout0 = MODEL_CONFIG['dropout0']
        dropout1 = MODEL_CONFIG['dropout1']
        d_feature0 = MODEL_CONFIG['d_feature0']
        d_feature1 = MODEL_CONFIG['d_feature1']

        self.backbone = BackboneSelector(configer).get_backbone()

        num_features = self.backbone.get_num_features()

        self.trans = _Transition(num_input_features=self.num_features,
                                 num_output_features=self.num_features // 2,
                                 norm_type=self.configer.get(
                                     'network', 'norm_type'))

        self.num_features = self.num_features // 2

        self.ASPP_3 = _DenseAsppBlock(input_num=num_features,
                                      num1=d_feature0,
                                      num2=d_feature1,
                                      dilation_rate=3,
                                      drop_out=dropout0,
                                      norm_type=self.configer.get(
                                          'network', 'norm_type'))

        self.ASPP_6 = _DenseAsppBlock(input_num=num_features + d_feature1 * 1,
                                      num1=d_feature0,
                                      num2=d_feature1,
                                      dilation_rate=6,
                                      drop_out=dropout0,
                                      norm_type=self.configer.get(
                                          'network', 'norm_type'))

        self.ASPP_12 = _DenseAsppBlock(input_num=num_features + d_feature1 * 2,
                                       num1=d_feature0,
                                       num2=d_feature1,
                                       dilation_rate=12,
                                       drop_out=dropout0,
                                       norm_type=self.configer.get(
                                           'network', 'norm_type'))

        self.ASPP_18 = _DenseAsppBlock(input_num=num_features + d_feature1 * 3,
                                       num1=d_feature0,
                                       num2=d_feature1,
                                       dilation_rate=18,
                                       drop_out=dropout0,
                                       norm_type=self.configer.get(
                                           'network', 'norm_type'))

        self.ASPP_24 = _DenseAsppBlock(input_num=num_features + d_feature1 * 4,
                                       num1=d_feature0,
                                       num2=d_feature1,
                                       dilation_rate=24,
                                       drop_out=dropout0,
                                       norm_type=self.configer.get(
                                           'network', 'norm_type'))

        num_features = num_features + 5 * d_feature1

        self.classification = nn.Sequential(
            nn.Dropout2d(p=dropout1),
            nn.Conv2d(num_features,
                      self.configer.get('data', 'num_classes'),
                      kernel_size=1,
                      padding=0))
        self.valid_loss_dict = configer.get('loss', 'loss_weights',
                                            configer.get('loss.loss_type'))

    def forward(self, data_dict):
        x = self.backbone(data_dict['img'])
        feature = self.trans(x)

        aspp3 = self.ASPP_3(feature)
        feature = torch.cat((aspp3, feature), dim=1)

        aspp6 = self.ASPP_6(feature)
        feature = torch.cat((aspp6, feature), dim=1)

        aspp12 = self.ASPP_12(feature)
        feature = torch.cat((aspp12, feature), dim=1)

        aspp18 = self.ASPP_18(feature)
        feature = torch.cat((aspp18, feature), dim=1)

        aspp24 = self.ASPP_24(feature)
        feature = torch.cat((aspp24, feature), dim=1)

        x = self.classification(feature)

        x = F.interpolate(x,
                          size=(data_dict['img'].size(2),
                                data_dict['img'].size(3)),
                          mode="bilinear",
                          align_corners=True)
        out_dict = dict(out=x)
        if self.configer.get('phase') == 'test':
            return out_dict

        loss_dict = dict()
        if 'ce_loss' in self.valid_loss_dict:
            loss_dict['ce_loss'] = dict(params=[x, data_dict['labelmap']],
                                        type=torch.cuda.LongTensor(
                                            [BASE_LOSS_DICT['ce_loss']]),
                                        weight=torch.cuda.FloatTensor(
                                            [self.valid_loss_dict['ce_loss']]))

        if 'ohem_ce_loss' in self.valid_loss_dict:
            loss_dict['ohem_ce_loss'] = dict(
                params=[x, data_dict['labelmap']],
                type=torch.cuda.LongTensor([BASE_LOSS_DICT['ohem_ce_loss']]),
                weight=torch.cuda.FloatTensor(
                    [self.valid_loss_dict['ohem_ce_loss']]))
        return out_dict, loss_dict
 def __init__(self, configer):
     super(DarkNetYolov3, self).__init__()
     self.configer = configer
     self.backbone = BackboneSelector(configer).get_backbone()
     self.yolov3_head = Yolov3Head(configer, out_filters=self.backbone.num_features)
     self.yolo_detection_layer = YOLODetectionLayer(self.configer)