コード例 #1
0
    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale, name):
        """
        input:'conv5_3', 'roi-data'
        roi-data:
(1) rois: (num of finally left proposal(根据每个roi和gtbox的overlaps大小来确定留下的fg和bg,多了的随机选择) blob[:,0]=0; 
          blob[:-2,1:5] = x1,y1,x2,y2(pred box in original image); blob[-2:,1:5] = x1,y1,x2,y2(gt_box)
          [0:fg_rois_per_this_image(大约42)]: the left foregound; [fg_rois_per_this_image(128-42):]:the left background
(2) labels: the final classes of the ground truth correspounding to per pred box [num of finally left proposal(128),] 
        for ex: [9,15,15,15,9,9....]
(3): num of finally left proposals(128) * 4*21: [dx,dy,dw,dh](gt_boxes相对于rois) of 1 class
(4): num of finally left proposals * 4*21: [1, 1, 1, 1] of 1 class
(5): num of finally left proposals * 4*21: [true,true,true,true] of 1 class in 21; [false, false, false, false] in left of the classes
        roi_pool(7, 7, 1.0/16, name='pool_5')
        """
        # only use the first input
        if isinstance(input[0], tuple):
            input[0] = input[0][0]

        if isinstance(input[1], tuple):
            input[1] = input[1][0]

        print input
        return roi_pool_op.roi_pool(input[0], input[1],
                                    pooled_height,
                                    pooled_width,
                                    spatial_scale,
                                    name=name)[0]
コード例 #2
0
ファイル: network.py プロジェクト: thunderock/FRCNN_git
    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale,
                 name):
        # only use the first input
        if isinstance(input[0], tuple):
            input[0] = input[0][0]
        """"# often called with: .roi_pool(7, 7, 1.0/16, name='pool_5')
        print('................ roi pooling (network.py) .......................')
        print(input[1][0])  # rois_wo
        print(input[1][1])  # labels
        print(input[1][2])
        print(input[1][3])
        print(input[1][4])
        print(input[1][5])  # gt_orientations_new
        print(input[1][6])  # orientations_pred_new
        print(input[1][7])  # orientations_targets_new"""

        if isinstance(input[1], tuple):
            input[1] = input[1][0]

        input_1a = input[1][:, 0:5]  # rpn_rois as original, no orientations
        input_1b = input[1][:, 5:6]  # orientations as predicted

        return roi_pool_op.roi_pool(input[0],
                                    input_1a,
                                    input_1b,
                                    pooled_height,
                                    pooled_width,
                                    spatial_scale,
                                    name=name)[0]
コード例 #3
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 def _roi_pool_layer(self, bootom, rois, name):
     print('ROI Pooling...')
     with tf.variable_scope(name) as scope:
         return roi_pool_op.roi_pool(bootom,
                                     rois,
                                     pooled_height=cfg.POOLING_SIZE,
                                     pooled_width=cfg.POOLING_SIZE,
                                     spatial_scale=1. / 16.,
                                     name=name)[0]
コード例 #4
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    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale, pool_channel, name):
        # only use the first input
        if isinstance(input[0], tuple):
            input[0] = input[0][0]

        return roi_pool_op.roi_pool(input[0], input[1],
                              pooled_height,
                              pooled_width,
                              spatial_scale,
                              pool_channel,
                              name=name)
コード例 #5
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def load_detection_model(ws):
    assert len(ws) == 8
    data_blob = tf.placeholder(tf.float32)
    rois_blob = tf.placeholder(tf.float32, shape=[None, 5])
    pool5, _ = roi_pooling_op.roi_pool(data_blob, rois_blob, 7, 7, 0.0625)
    flat_pool5 = tf.reshape(pool5, [-1, 25088])
    fc6 = fc(flat_pool5, ws[0], ws[1])
    fc7 = fc(fc6, ws[2], ws[3])
    cls_prob = fc(fc7, ws[4], ws[5], 'softmax')
    bbox_pred = fc(fc7, ws[6], ws[7], 'linear')
    return data_blob, rois_blob, cls_prob, bbox_pred
コード例 #6
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    def roi_pool(self, input, pooled_h, pooled_w, spatial_scale, name):
        #only use the first input? what's the meaning
        if isinstance(input[0], tuple):
            input[0] = input[0][0]
        if isinstance(input[1], tuple):
            input[1] = input[1][0]

        # print("roi_pool is :",input)
        return roi_pool_op.roi_pool(input[0],
                                    input[1],
                                    pooled_h,
                                    pooled_w,
                                    spatial_scale,
                                    name=name)[0]
コード例 #7
0
ファイル: network.py プロジェクト: Babu520/Faster-RCNN_TF
    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale, name):
        # only use the first input
        if isinstance(input[0], tuple):
            input[0] = input[0][0]

        if isinstance(input[1], tuple):
            input[1] = input[1][0]

        print input
        return roi_pool_op.roi_pool(input[0], input[1],
                                    pooled_height,
                                    pooled_width,
                                    spatial_scale,
                                    name=name)[0]
コード例 #8
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    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale, name):
        """
        Rol pooling层有2个输入:
        1. 原始的feature maps
        2. RPN输出的proposal boxes(大小各不相同)
        """
        # only use the first input
        if isinstance(input[0], tuple):
            input[0] = input[0][0]

        if isinstance(input[1], tuple):
            input[1] = input[1][1]

        print input
        return roi_pool_op.roi_pool(input[0], input[1], pooled_height, pooled_width, spatial_scale, name = name)[0]
コード例 #9
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    def roi_pool(self, inputs, pooled_height, pooled_width, spatial_scale, name):
        with tf.name_scope(name):
            # only use the first input
            if isinstance(inputs[0], tuple):
                inputs[0] = inputs[0][0]

            if isinstance(inputs[1], tuple):
                inputs[1] = inputs[1][0]

            print(inputs)
            return roi_pool_op.roi_pool(inputs[0], inputs[1],
                                        pooled_height,
                                        pooled_width,
                                        spatial_scale,
                                        name=name)[0]
コード例 #10
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    def frcnn_roi_pooling(self, features, rois, pooled_height, pooled_width, \
            spatial_scale, name = "pool_5"):
        '''
        input:
            features : Nbatch , h , w , C
            rois : NROI x 5
        output:
            pooled_features: NROI x 7 x 7 x C
        '''

        return roi_pool_op.roi_pool(features,
                                    rois,
                                    pooled_height,
                                    pooled_width,
                                    spatial_scale,
                                    name=name)[0]
コード例 #11
0
ファイル: network.py プロジェクト: ToDayL/Faster-RCNN_TF
    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale,
                 name):
        # only use the first input
        if isinstance(input[0], tuple):
            input[0] = input[0][0]

        if isinstance(input[1], tuple):
            input[1] = input[1][0]

        # Input[0] is the Feature map and Input[1] is the ROI data
        print(input)
        return roi_pool_op.roi_pool(input[0],
                                    input[1],
                                    pooled_height,
                                    pooled_width,
                                    spatial_scale,
                                    name=name)[0]
コード例 #12
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    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale,
                 name):
        # only use the first input ???   因为 roi-data[0]才是rois,其他索引对应的是别的信息
        # pooled_height=7;pooled_width=7;spatial_scale=1.0/16
        if isinstance(input[0], tuple):
            input[0] = input[0][0]

        if isinstance(input[1], tuple):
            input[1] = input[1][0]

        print input
        # input[0]是'conv5_3'[0]; input[1]是'roi-data'[0]
        return roi_pool_op.roi_pool(input[0],
                                    input[1],
                                    pooled_height,
                                    pooled_width,
                                    spatial_scale,
                                    name=name)[0]
コード例 #13
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    def roi_pool(self, input, pooled_height, pooled_width, spatial_scale,
                 name):
        # only use the first input
        if isinstance(input[0], tuple):
            input[0] = input[0][0]

        if isinstance(input[1], tuple):
            input[1] = input[1][0]

        print "RoI input[0] = ", input[0], " input [1]=  ", input[1],
        output = roi_pool_op.roi_pool(input[0],
                                      input[1],
                                      pooled_height,
                                      pooled_width,
                                      spatial_scale,
                                      name=name)[0]
        print "RoI output =", output
        return output