def roi_heads(self, image, features, proposals, targets): image_shape2d = tf.shape(image)[2:] # h,w featuremap = features[0] gt_boxes, gt_labels, *_ = targets if self.training: # sample proposal boxes in training proposals = sample_fast_rcnn_targets(proposals.boxes, gt_boxes, gt_labels) # The boxes to be used to crop RoIs. # Use all proposal boxes in inference boxes_on_featuremap = proposals.boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE) roi_resized = roi_align(featuremap, boxes_on_featuremap, 14) feature_fastrcnn = resnet_conv5(roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCKS[-1]) # nxcx7x7 # Keep C5 feature to be shared with mask branch feature_gap = GlobalAvgPooling('gap', feature_fastrcnn, data_format='channels_first') fastrcnn_label_logits, fastrcnn_box_logits = fastrcnn_outputs('fastrcnn', feature_gap, cfg.DATA.NUM_CLASS) fastrcnn_head = FastRCNNHead(proposals, fastrcnn_box_logits, fastrcnn_label_logits, gt_boxes, tf.constant(cfg.FRCNN.BBOX_REG_WEIGHTS, dtype=tf.float32)) if self.training: all_losses = fastrcnn_head.losses() if cfg.MODE_MASK: gt_masks = targets[2] # maskrcnn loss # In training, mask branch shares the same C5 feature. fg_feature = tf.gather(feature_fastrcnn, proposals.fg_inds()) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', fg_feature, cfg.DATA.NUM_CATEGORY, num_convs=0) # #fg x #cat x 14x14 target_masks_for_fg = crop_and_resize( tf.expand_dims(gt_masks, 1), proposals.fg_boxes(), proposals.fg_inds_wrt_gt, 14, pad_border=False) # nfg x 1x14x14 target_masks_for_fg = tf.squeeze(target_masks_for_fg, 1, 'sampled_fg_mask_targets') all_losses.append(maskrcnn_loss(mask_logits, proposals.fg_labels(), target_masks_for_fg)) return all_losses else: decoded_boxes = fastrcnn_head.decoded_output_boxes() decoded_boxes = clip_boxes(decoded_boxes, image_shape2d, name='fastrcnn_all_boxes') label_scores = fastrcnn_head.output_scores(name='fastrcnn_all_scores') final_boxes, final_scores, final_labels = fastrcnn_predictions( decoded_boxes, label_scores, name_scope='output') if cfg.MODE_MASK: roi_resized = roi_align(featuremap, final_boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE), 14) feature_maskrcnn = resnet_conv5(roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCKS[-1]) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', feature_maskrcnn, cfg.DATA.NUM_CATEGORY, 0) # #result x #cat x 14x14 indices = tf.stack([tf.range(tf.size(final_labels)), tf.cast(final_labels, tf.int32) - 1], axis=1) final_mask_logits = tf.gather_nd(mask_logits, indices) # #resultx14x14 tf.sigmoid(final_mask_logits, name='output/masks') return []
def build_graph(self, *inputs): # TODO need to make tensorpack handles dict better inputs = dict(zip(self.input_names, inputs)) is_training = get_current_tower_context().is_training image = self.preprocess(inputs['image']) # 1CHW featuremap = resnet_c4_backbone(image, cfg.BACKBONE.RESNET_NUM_BLOCK[:3]) rpn_label_logits, rpn_box_logits = rpn_head('rpn', featuremap, cfg.RPN.HEAD_DIM, cfg.RPN.NUM_ANCHOR) anchors = RPNAnchors(get_all_anchors(), inputs['anchor_labels'], inputs['anchor_boxes']) anchors = anchors.narrow_to(featuremap) image_shape2d = tf.shape(image)[2:] # h,w pred_boxes_decoded = anchors.decode_logits( rpn_box_logits) # fHxfWxNAx4, floatbox proposal_boxes, proposal_scores = generate_rpn_proposals( tf.reshape(pred_boxes_decoded, [-1, 4]), tf.reshape(rpn_label_logits, [-1]), image_shape2d, cfg.RPN.TRAIN_PRE_NMS_TOPK if is_training else cfg.RPN.TEST_PRE_NMS_TOPK, cfg.RPN.TRAIN_POST_NMS_TOPK if is_training else cfg.RPN.TEST_POST_NMS_TOPK) gt_boxes, gt_labels = inputs['gt_boxes'], inputs['gt_labels'] if is_training: # sample proposal boxes in training proposals = sample_fast_rcnn_targets(proposal_boxes, gt_boxes, gt_labels) else: # The boxes to be used to crop RoIs. # Use all proposal boxes in inference proposals = BoxProposals(proposal_boxes) boxes_on_featuremap = proposals.boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE) roi_resized = roi_align(featuremap, boxes_on_featuremap, 14) feature_fastrcnn = resnet_conv5( roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) # nxcx7x7 # Keep C5 feature to be shared with mask branch feature_gap = GlobalAvgPooling('gap', feature_fastrcnn, data_format='channels_first') fastrcnn_label_logits, fastrcnn_box_logits = fastrcnn_outputs( 'fastrcnn', feature_gap, cfg.DATA.NUM_CLASS) fastrcnn_head = FastRCNNHead( proposals, fastrcnn_box_logits, fastrcnn_label_logits, tf.constant(cfg.FRCNN.BBOX_REG_WEIGHTS, dtype=tf.float32)) if is_training: all_losses = [] # rpn loss all_losses.extend( rpn_losses(anchors.gt_labels, anchors.encoded_gt_boxes(), rpn_label_logits, rpn_box_logits)) # fastrcnn loss all_losses.extend(fastrcnn_head.losses()) if cfg.MODE_MASK: # maskrcnn loss # In training, mask branch shares the same C5 feature. fg_feature = tf.gather(feature_fastrcnn, proposals.fg_inds()) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', fg_feature, cfg.DATA.NUM_CATEGORY, num_convs=0) # #fg x #cat x 14x14 target_masks_for_fg = crop_and_resize( tf.expand_dims(inputs['gt_masks'], 1), proposals.fg_boxes(), proposals.fg_inds_wrt_gt, 14, pad_border=False) # nfg x 1x14x14 target_masks_for_fg = tf.squeeze(target_masks_for_fg, 1, 'sampled_fg_mask_targets') all_losses.append( maskrcnn_loss(mask_logits, proposals.fg_labels(), target_masks_for_fg)) wd_cost = regularize_cost('.*/W', l2_regularizer(cfg.TRAIN.WEIGHT_DECAY), name='wd_cost') all_losses.append(wd_cost) total_cost = tf.add_n(all_losses, 'total_cost') add_moving_summary(total_cost, wd_cost) return total_cost else: decoded_boxes = fastrcnn_head.decoded_output_boxes() decoded_boxes = clip_boxes(decoded_boxes, image_shape2d, name='fastrcnn_all_boxes') label_scores = fastrcnn_head.output_scores( name='fastrcnn_all_scores') final_boxes, final_scores, final_labels = fastrcnn_predictions( decoded_boxes, label_scores, name_scope='output') if cfg.MODE_MASK: roi_resized = roi_align( featuremap, final_boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE), 14) feature_maskrcnn = resnet_conv5( roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', feature_maskrcnn, cfg.DATA.NUM_CATEGORY, 0) # #result x #cat x 14x14 indices = tf.stack([ tf.range(tf.size(final_labels)), tf.to_int32(final_labels) - 1 ], axis=1) final_mask_logits = tf.gather_nd(mask_logits, indices) # #resultx14x14 tf.sigmoid(final_mask_logits, name='output/masks')
def build_graph(self, *inputs): is_training = get_current_tower_context().is_training if cfg.MODE_MASK: image, anchor_labels, anchor_boxes, gt_boxes, gt_labels, gt_masks = inputs else: image, anchor_labels, anchor_boxes, gt_boxes, gt_labels = inputs image = self.preprocess(image) # 1CHW #with varreplace.freeze_variables(stop_gradient=True, skip_collection=True): featuremap = resnet_c4_backbone(image, cfg.BACKBONE.RESNET_NUM_BLOCK[:3]) # freeze # featuremap = tf.stop_gradient(featuremap) rpn_label_logits, rpn_box_logits = rpn_head('rpn', featuremap, cfg.RPN.HEAD_DIM, cfg.RPN.NUM_ANCHOR) anchors = RPNAnchors(get_all_anchors(), anchor_labels, anchor_boxes) anchors = anchors.narrow_to(featuremap) image_shape2d = tf.shape(image)[2:] # h,w pred_boxes_decoded = anchors.decode_logits(rpn_box_logits) # fHxfWxNAx4, floatbox proposal_boxes, proposal_scores = generate_rpn_proposals( tf.reshape(pred_boxes_decoded, [-1, 4]), tf.reshape(rpn_label_logits, [-1]), image_shape2d, cfg.RPN.TRAIN_PRE_NMS_TOPK if is_training else cfg.RPN.TEST_PRE_NMS_TOPK, cfg.RPN.TRAIN_POST_NMS_TOPK if is_training else cfg.RPN.TEST_POST_NMS_TOPK) if is_training: # sample proposal boxes in training rcnn_boxes, rcnn_labels, fg_inds_wrt_gt = sample_fast_rcnn_targets( proposal_boxes, gt_boxes, gt_labels) else: # The boxes to be used to crop RoIs. # Use all proposal boxes in inference rcnn_boxes = proposal_boxes featuremap = resnet_conv5(featuremap, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) rfcn_cls = Conv2D('rfcn_cls', featuremap, cfg.DATA.NUM_CLASS*3*3, (1, 1), data_format='channels_first') rfcn_reg = Conv2D('rfcn_reg', featuremap, cfg.DATA.NUM_CLASS*4*3*3, (1, 1), data_format='channels_first') boxes_on_featuremap = rcnn_boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE) classify_vote = VotePooling('votepooling_cls', rfcn_cls, boxes_on_featuremap, 3, 3) classify_regr = VotePooling('votepooling_regr', rfcn_reg, boxes_on_featuremap, 3, 3, isCls=False) classify_regr = tf.reshape(classify_regr, [-1, cfg.DATA.NUM_CLASS, 4]) if is_training: # rpn loss rpn_label_loss, rpn_box_loss = rpn_losses( anchors.gt_labels, anchors.encoded_gt_boxes(), rpn_label_logits, rpn_box_logits) # fastrcnn loss matched_gt_boxes = tf.gather(gt_boxes, fg_inds_wrt_gt) fg_inds_wrt_sample = tf.reshape(tf.where(rcnn_labels > 0), [-1]) # fg inds w.r.t all samples fg_sampled_boxes = tf.gather(rcnn_boxes, fg_inds_wrt_sample) fg_fastrcnn_box_logits = tf.gather(classify_regr, fg_inds_wrt_sample) fastrcnn_label_loss, fastrcnn_box_loss = self.fastrcnn_training( image, rcnn_labels, fg_sampled_boxes, matched_gt_boxes, classify_vote, fg_fastrcnn_box_logits) if cfg.MODE_MASK: # maskrcnn loss fg_labels = tf.gather(rcnn_labels, fg_inds_wrt_sample) # In training, mask branch shares the same C5 feature. fg_feature = tf.gather(feature_fastrcnn, fg_inds_wrt_sample) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', fg_feature, cfg.DATA.NUM_CATEGORY, num_convs=0) # #fg x #cat x 14x14 target_masks_for_fg = crop_and_resize( tf.expand_dims(gt_masks, 1), fg_sampled_boxes, fg_inds_wrt_gt, 14, pad_border=False) # nfg x 1x14x14 target_masks_for_fg = tf.squeeze(target_masks_for_fg, 1, 'sampled_fg_mask_targets') mrcnn_loss = maskrcnn_loss(mask_logits, fg_labels, target_masks_for_fg) else: mrcnn_loss = 0.0 wd_cost = regularize_cost( '.*/W', l2_regularizer(cfg.TRAIN.WEIGHT_DECAY), name='wd_cost') total_cost = tf.add_n([ rpn_label_loss, rpn_box_loss, fastrcnn_label_loss, fastrcnn_box_loss, mrcnn_loss, wd_cost], 'total_cost') add_moving_summary(total_cost, wd_cost) return total_cost else: final_boxes, final_labels = self.fastrcnn_inference( image_shape2d, rcnn_boxes, classify_vote, classify_regr) if cfg.MODE_MASK: roi_resized = roi_align(featuremap, final_boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE), 14) feature_maskrcnn = resnet_conv5(roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', feature_maskrcnn, cfg.DATA.NUM_CATEGORY, 0) # #result x #cat x 14x14 indices = tf.stack([tf.range(tf.size(final_labels)), tf.to_int32(final_labels) - 1], axis=1) final_mask_logits = tf.gather_nd(mask_logits, indices) # #resultx14x14 tf.sigmoid(final_mask_logits, name='final_masks')
def build_graph(self, *inputs): num_fpn_level = len(cfg.FPN.ANCHOR_STRIDES) assert len(cfg.RPN.ANCHOR_SIZES) == num_fpn_level is_training = get_current_tower_context().is_training image = inputs[0] input_anchors = inputs[1: 1 + 2 * num_fpn_level] multilevel_anchors = [RPNAnchors(*args) for args in zip(get_all_anchors_fpn(), input_anchors[0::2], input_anchors[1::2])] gt_boxes, gt_labels = inputs[11], inputs[12] if cfg.MODE_MASK: gt_masks = inputs[-1] image = self.preprocess(image) # 1CHW image_shape2d = tf.shape(image)[2:] # h,w c2345 = resnet_fpn_backbone(image, cfg.BACKBONE.RESNET_NUM_BLOCK) p23456 = fpn_model('fpn', c2345) self.slice_feature_and_anchors(image_shape2d, p23456, multilevel_anchors) # Multi-Level RPN Proposals rpn_outputs = [rpn_head('rpn', pi, cfg.FPN.NUM_CHANNEL, len(cfg.RPN.ANCHOR_RATIOS)) for pi in p23456] multilevel_label_logits = [k[0] for k in rpn_outputs] multilevel_box_logits = [k[1] for k in rpn_outputs] proposal_boxes, proposal_scores = generate_fpn_proposals( multilevel_anchors, multilevel_label_logits, multilevel_box_logits, image_shape2d) if is_training: rcnn_boxes, rcnn_labels, fg_inds_wrt_gt = sample_fast_rcnn_targets( proposal_boxes, gt_boxes, gt_labels) else: # The boxes to be used to crop RoIs. rcnn_boxes = proposal_boxes roi_feature_fastrcnn = multilevel_roi_align(p23456[:4], rcnn_boxes, 7) fastrcnn_head_func = getattr(model_frcnn, cfg.FPN.FRCNN_HEAD_FUNC) fastrcnn_label_logits, fastrcnn_box_logits = fastrcnn_head_func( 'fastrcnn', roi_feature_fastrcnn, cfg.DATA.NUM_CLASS) if is_training: # rpn loss: rpn_label_loss, rpn_box_loss = multilevel_rpn_losses( multilevel_anchors, multilevel_label_logits, multilevel_box_logits) # fastrcnn loss: matched_gt_boxes = tf.gather(gt_boxes, fg_inds_wrt_gt) fg_inds_wrt_sample = tf.reshape(tf.where(rcnn_labels > 0), [-1]) # fg inds w.r.t all samples fg_sampled_boxes = tf.gather(rcnn_boxes, fg_inds_wrt_sample) fg_fastrcnn_box_logits = tf.gather(fastrcnn_box_logits, fg_inds_wrt_sample) fastrcnn_label_loss, fastrcnn_box_loss = self.fastrcnn_training( image, rcnn_labels, fg_sampled_boxes, matched_gt_boxes, fastrcnn_label_logits, fg_fastrcnn_box_logits) if cfg.MODE_MASK: # maskrcnn loss fg_labels = tf.gather(rcnn_labels, fg_inds_wrt_sample) roi_feature_maskrcnn = multilevel_roi_align( p23456[:4], fg_sampled_boxes, 14, name_scope='multilevel_roi_align_mask') mask_logits = maskrcnn_upXconv_head( 'maskrcnn', roi_feature_maskrcnn, cfg.DATA.NUM_CATEGORY, 4) # #fg x #cat x 28 x 28 target_masks_for_fg = crop_and_resize( tf.expand_dims(gt_masks, 1), fg_sampled_boxes, fg_inds_wrt_gt, 28, pad_border=False) # fg x 1x28x28 target_masks_for_fg = tf.squeeze(target_masks_for_fg, 1, 'sampled_fg_mask_targets') mrcnn_loss = maskrcnn_loss(mask_logits, fg_labels, target_masks_for_fg) else: mrcnn_loss = 0.0 wd_cost = regularize_cost( '(?:group1|group2|group3|rpn|fpn|fastrcnn|maskrcnn)/.*W', l2_regularizer(cfg.TRAIN.WEIGHT_DECAY), name='wd_cost') total_cost = tf.add_n([rpn_label_loss, rpn_box_loss, fastrcnn_label_loss, fastrcnn_box_loss, mrcnn_loss, wd_cost], 'total_cost') add_moving_summary(total_cost, wd_cost) return total_cost * (1. / cfg.TRAIN.NUM_GPUS) else: final_boxes, final_labels = self.fastrcnn_inference( image_shape2d, rcnn_boxes, fastrcnn_label_logits, fastrcnn_box_logits) if cfg.MODE_MASK: # Cascade inference needs roi transform with refined boxes. roi_feature_maskrcnn = multilevel_roi_align(p23456[:4], final_boxes, 14) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', roi_feature_maskrcnn, cfg.DATA.NUM_CATEGORY, 4) # #fg x #cat x 28 x 28 indices = tf.stack([tf.range(tf.size(final_labels)), tf.to_int32(final_labels) - 1], axis=1) final_mask_logits = tf.gather_nd(mask_logits, indices) # #resultx28x28 tf.sigmoid(final_mask_logits, name='final_masks')
def build_graph(self, *inputs): is_training = get_current_tower_context().is_training # if cfg.MODE_MASK: # image, anchor_labels, anchor_boxes, gt_boxes, gt_labels, gt_masks = inputs # else: # image, anchor_labels, anchor_boxes, gt_boxes, gt_labels, scale_index = inputs image, anchor_labels, anchor_boxes, gt_boxes, gt_labels = inputs image = self.preprocess(image) # 1CHW featuremap = resnet_c4_backbone(image, cfg.BACKBONE.RESNET_NUM_BLOCK[:3]) rpn_label_logits, rpn_box_logits = rpn_head( 'rpn', featuremap, cfg.RPN.HEAD_DIM, cfg.RPN.NUM_ANCHOR) anchors = RPNAnchors(get_all_anchors(), anchor_labels, anchor_boxes) anchors = anchors.narrow_to(featuremap) image_shape2d = tf.shape(image)[2:] # h,w pred_boxes_decoded = anchors.decode_logits( rpn_box_logits) # fHxfWxNAx4, floatbox proposal_boxes, proposal_scores = generate_rpn_proposals( tf.reshape(pred_boxes_decoded, [-1, 4]), tf.reshape(rpn_label_logits, [-1]), image_shape2d, cfg.RPN.TRAIN_PRE_NMS_TOPK if is_training else cfg.RPN.TEST_PRE_NMS_TOPK, cfg.RPN.TRAIN_POST_NMS_TOPK if is_training else cfg.RPN.TEST_POST_NMS_TOPK) if is_training: # sample proposal boxes in training # rcnn_boxes, rcnn_labels, fg_inds_wrt_gt = sample_sniper_targets( # proposal_boxes, gt_boxes, gt_labels, scale_index) rcnn_boxes, rcnn_labels, fg_inds_wrt_gt = sample_sniper_targets( proposal_boxes, gt_boxes, gt_labels) else: # The boxes to be used to crop RoIs. # Use all proposal boxes in inference rcnn_boxes = proposal_boxes boxes_on_featuremap = rcnn_boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE) roi_resized = roi_align(featuremap, boxes_on_featuremap, 14) feature_fastrcnn = resnet_conv5( roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) # nxcx7x7 # Keep C5 feature to be shared with mask branch feature_gap = GlobalAvgPooling( 'gap', feature_fastrcnn, data_format='channels_first') fastrcnn_label_logits, fastrcnn_box_logits = fastrcnn_outputs( 'fastrcnn', feature_gap, cfg.DATA.NUM_CLASS) if is_training: # rpn loss rpn_label_loss, rpn_box_loss = rpn_losses( anchors.gt_labels, anchors.encoded_gt_boxes(), rpn_label_logits, rpn_box_logits) # fastrcnn loss matched_gt_boxes = tf.gather(gt_boxes, fg_inds_wrt_gt) fg_inds_wrt_sample = tf.reshape(tf.where(rcnn_labels > 0), [-1]) # fg inds w.r.t all samples fg_sampled_boxes = tf.gather(rcnn_boxes, fg_inds_wrt_sample) fg_fastrcnn_box_logits = tf.gather(fastrcnn_box_logits, fg_inds_wrt_sample) fastrcnn_label_loss, fastrcnn_box_loss = self.fastrcnn_training( image, rcnn_labels, fg_sampled_boxes, matched_gt_boxes, fastrcnn_label_logits, fg_fastrcnn_box_logits) if cfg.MODE_MASK: # maskrcnn loss fg_labels = tf.gather(rcnn_labels, fg_inds_wrt_sample) # In training, mask branch shares the same C5 feature. fg_feature = tf.gather(feature_fastrcnn, fg_inds_wrt_sample) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', fg_feature, cfg.DATA.NUM_CATEGORY, num_convs=0) # #fg x #cat x 14x14 target_masks_for_fg = crop_and_resize( tf.expand_dims(gt_masks, 1), fg_sampled_boxes, fg_inds_wrt_gt, 14, pad_border=False) # nfg x 1x14x14 target_masks_for_fg = tf.squeeze(target_masks_for_fg, 1, 'sampled_fg_mask_targets') mrcnn_loss = maskrcnn_loss(mask_logits, fg_labels, target_masks_for_fg) else: mrcnn_loss = 0.0 wd_cost = regularize_cost( '(?:group1|group2|group3|rpn|fastrcnn|maskrcnn)/.*W', l2_regularizer(cfg.TRAIN.WEIGHT_DECAY), name='wd_cost') total_cost = tf.add_n([ rpn_label_loss, rpn_box_loss, fastrcnn_label_loss, fastrcnn_box_loss, mrcnn_loss, wd_cost ], 'total_cost') add_moving_summary(total_cost, wd_cost) return total_cost * (1. / cfg.TRAIN.NUM_GPUS) else: final_boxes, final_labels = self.fastrcnn_inference( image_shape2d, rcnn_boxes, fastrcnn_label_logits, fastrcnn_box_logits) if cfg.MODE_MASK: roi_resized = roi_align( featuremap, final_boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE), 14) feature_maskrcnn = resnet_conv5( roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', feature_maskrcnn, cfg.DATA.NUM_CATEGORY, 0) # #result x #cat x 14x14 indices = tf.stack( [ tf.range(tf.size(final_labels)), tf.to_int32(final_labels) - 1 ], axis=1) final_mask_logits = tf.gather_nd(mask_logits, indices) # #resultx14x14 tf.sigmoid(final_mask_logits, name='final_masks')
def build_graph(self, *inputs): inputs = dict(zip(self.input_names, inputs)) is_training = get_current_tower_context().is_training image = self.preprocess(inputs['image']) # 1CHW featuremap = resnet_c4_backbone(image, cfg.BACKBONE.RESNET_NUM_BLOCK[:3]) rpn_label_logits, rpn_box_logits = rpn_head('rpn', featuremap, cfg.RPN.HEAD_DIM, cfg.RPN.NUM_ANCHOR) anchors = RPNAnchors(get_all_anchors(), inputs['anchor_labels'], inputs['anchor_boxes']) anchors = anchors.narrow_to(featuremap) image_shape2d = tf.shape(image)[2:] # h,w pred_boxes_decoded = anchors.decode_logits(rpn_box_logits) # fHxfWxNAx4, floatbox proposal_boxes, proposal_scores = generate_rpn_proposals( tf.reshape(pred_boxes_decoded, [-1, 4]), tf.reshape(rpn_label_logits, [-1]), image_shape2d, cfg.RPN.TRAIN_PRE_NMS_TOPK if is_training else cfg.RPN.TEST_PRE_NMS_TOPK, cfg.RPN.TRAIN_POST_NMS_TOPK if is_training else cfg.RPN.TEST_POST_NMS_TOPK) gt_boxes, gt_labels = inputs['gt_boxes'], inputs['gt_labels'] if is_training: # sample proposal boxes in training proposals = sample_fast_rcnn_targets(proposal_boxes, gt_boxes, gt_labels) else: # The boxes to be used to crop RoIs. # Use all proposal boxes in inference proposals = BoxProposals(proposal_boxes) boxes_on_featuremap = proposals.boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE) roi_resized = roi_align(featuremap, boxes_on_featuremap, 14) feature_fastrcnn = resnet_conv5(roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) # nxcx7x7 # Keep C5 feature to be shared with mask branch feature_gap = GlobalAvgPooling('gap', feature_fastrcnn, data_format='channels_first') fastrcnn_label_logits, fastrcnn_box_logits = fastrcnn_outputs('fastrcnn', feature_gap, cfg.DATA.NUM_CLASS) fastrcnn_head = FastRCNNHead(proposals, fastrcnn_box_logits, fastrcnn_label_logits, tf.constant(cfg.FRCNN.BBOX_REG_WEIGHTS, dtype=tf.float32)) if is_training: all_losses = [] # rpn loss all_losses.extend(rpn_losses( anchors.gt_labels, anchors.encoded_gt_boxes(), rpn_label_logits, rpn_box_logits)) # fastrcnn loss all_losses.extend(fastrcnn_head.losses()) if cfg.MODE_MASK: # maskrcnn loss # In training, mask branch shares the same C5 feature. fg_feature = tf.gather(feature_fastrcnn, proposals.fg_inds()) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', fg_feature, cfg.DATA.NUM_CATEGORY, num_convs=0) # #fg x #cat x 14x14 target_masks_for_fg = crop_and_resize( tf.expand_dims(inputs['gt_masks'], 1), proposals.fg_boxes(), proposals.fg_inds_wrt_gt, 14, pad_border=False) # nfg x 1x14x14 target_masks_for_fg = tf.squeeze(target_masks_for_fg, 1, 'sampled_fg_mask_targets') all_losses.append(maskrcnn_loss(mask_logits, proposals.fg_labels(), target_masks_for_fg)) wd_cost = regularize_cost( '.*/W', l2_regularizer(cfg.TRAIN.WEIGHT_DECAY), name='wd_cost') all_losses.append(wd_cost) total_cost = tf.add_n(all_losses, 'total_cost') add_moving_summary(total_cost, wd_cost) return total_cost else: decoded_boxes = fastrcnn_head.decoded_output_boxes() decoded_boxes = clip_boxes(decoded_boxes, image_shape2d, name='fastrcnn_all_boxes') label_scores = fastrcnn_head.output_scores(name='fastrcnn_all_scores') final_boxes, final_scores, final_labels = fastrcnn_predictions( decoded_boxes, label_scores, name_scope='output') if cfg.MODE_MASK: roi_resized = roi_align(featuremap, final_boxes * (1.0 / cfg.RPN.ANCHOR_STRIDE), 14) feature_maskrcnn = resnet_conv5(roi_resized, cfg.BACKBONE.RESNET_NUM_BLOCK[-1]) mask_logits = maskrcnn_upXconv_head( 'maskrcnn', feature_maskrcnn, cfg.DATA.NUM_CATEGORY, 0) # #result x #cat x 14x14 indices = tf.stack([tf.range(tf.size(final_labels)), tf.to_int32(final_labels) - 1], axis=1) final_mask_logits = tf.gather_nd(mask_logits, indices) # #resultx14x14 tf.sigmoid(final_mask_logits, name='output/masks')