anchor_head_multi.py 11.7 KB
Newer Older
Gus-Guo's avatar
Gus-Guo committed
1
2
3
import numpy as np
import torch.nn as nn
from .anchor_head_template import AnchorHeadTemplate
4
from ..backbones_2d import BaseBEVBackbone
Gus-Guo's avatar
Gus-Guo committed
5
6
import torch

7

8
class SingleHead(BaseBEVBackbone):
Gus-Guo's avatar
Gus-Guo committed
9
    def __init__(self, model_cfg, input_channels, num_class, num_anchors_per_location, code_size, encode_conv_cfg=None):
10
        super().__init__(encode_conv_cfg, input_channels)
Gus-Guo's avatar
Gus-Guo committed
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33

        self.num_anchors_per_location = num_anchors_per_location
        self.num_class = num_class
        self.code_size = code_size
        self.model_cfg = model_cfg

        self.conv_cls = nn.Conv2d(
            input_channels, self.num_anchors_per_location * self.num_class,
            kernel_size=1
        )
        self.conv_box = nn.Conv2d(
            input_channels, self.num_anchors_per_location * self.code_size,
            kernel_size=1
        )

        if self.model_cfg.get('USE_DIRECTION_CLASSIFIER', None) is not None:
            self.conv_dir_cls = nn.Conv2d(
                input_channels,
                self.num_anchors_per_location * self.model_cfg.NUM_DIR_BINS,
                kernel_size=1
            )
        else:
            self.conv_dir_cls = None
34
        self.use_multihead = self.model_cfg.get('USE_MULTIHEAD', False)
Gus-Guo's avatar
Gus-Guo committed
35
36
37
38
39
40
41
42
        self.init_weights()

    def init_weights(self):
        pi = 0.01
        nn.init.constant_(self.conv_cls.bias, -np.log((1 - pi) / pi))

    def forward(self, spatial_features_2d):
        ret_dict = {}
43
        spatial_features_2d = super().forward({'spatial_features': spatial_features_2d})['spatial_features_2d']
Gus-Guo's avatar
Gus-Guo committed
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58

        cls_preds = self.conv_cls(spatial_features_2d)
        box_preds = self.conv_box(spatial_features_2d)

        if not self.use_multihead:
            box_preds = box_preds.permute(0, 2, 3, 1).contiguous()
            cls_preds = cls_preds.permute(0, 2, 3, 1).contiguous()
        else:
            H, W = box_preds.shape[2:]
            batch_size = box_preds.shape[0]
            box_preds = box_preds.view(-1, self.num_anchors_per_location,
                                       self.code_size, H, W).permute(0, 1, 3, 4, 2).contiguous()
            cls_preds = cls_preds.view(-1, self.num_anchors_per_location,
                                       self.num_class, H, W).permute(0, 1, 3, 4, 2).contiguous()
            box_preds = box_preds.view(batch_size, -1, self.code_size)
59
60
            cls_preds = cls_preds.view(batch_size, -1, self.num_class)
        
Gus-Guo's avatar
Gus-Guo committed
61
62
63
64
65
66
67
68
        if self.conv_dir_cls is not None:
            dir_cls_preds = self.conv_dir_cls(spatial_features_2d)
            if self.use_multihead:
                dir_cls_preds = dir_cls_preds.view(
                    -1, self.num_anchors_per_location, self.model_cfg.NUM_DIR_BINS, H, W).permute(0, 1, 3, 4, 2).contiguous()
                dir_cls_preds = dir_cls_preds.view(batch_size, -1, self.model_cfg.NUM_DIR_BINS)
            else:
                dir_cls_preds = dir_cls_preds.permute(0, 2, 3, 1).contiguous()
69

Gus-Guo's avatar
Gus-Guo committed
70
71
72
73
74
75
76
77
78
        else:
            dir_cls_preds = None

        ret_dict['cls_preds'] = cls_preds
        ret_dict['box_preds'] = box_preds
        ret_dict['dir_cls_preds'] = dir_cls_preds

        return ret_dict

79

Gus-Guo's avatar
Gus-Guo committed
80
class AnchorHeadMulti(AnchorHeadTemplate):
81
    def __init__(self, model_cfg, input_channels, num_class, class_names, grid_size, point_cloud_range, predict_boxes_when_training=True):
Gus-Guo's avatar
Gus-Guo committed
82
        super().__init__(
83
            model_cfg=model_cfg, num_class=num_class, class_names=class_names, grid_size=grid_size, point_cloud_range=point_cloud_range, predict_boxes_when_training=predict_boxes_when_training
Gus-Guo's avatar
Gus-Guo committed
84
85
        )
        self.model_cfg = model_cfg
86
        self.seperate_multihead = self.model_cfg.get('SEPERATE_MULTIHEAD', False)
Gus-Guo's avatar
Gus-Guo committed
87
        
88
89
90
91
92
93
94
        shared_conv_num_filter = self.model_cfg.SHARED_CONV_NUM_FILTER
        self.shared_conv = nn.Sequential(
                nn.Conv2d(input_channels, shared_conv_num_filter, 3, stride=1, padding=1, bias=False),
                nn.BatchNorm2d(shared_conv_num_filter, eps=1e-3, momentum=0.01),
                nn.ReLU(),
            )
        self.make_multihead(shared_conv_num_filter)
Gus-Guo's avatar
Gus-Guo committed
95
96
97
98
99
100

    def make_multihead(self, input_channels):
        rpn_head_cfgs = self.model_cfg.RPN_HEAD_CFGS
        rpn_heads = []
        class_names = []
        for rpn_head_cfg in rpn_head_cfgs:
101
            class_names.extend(rpn_head_cfg['HEAD_CLS_NAME'])
Gus-Guo's avatar
Gus-Guo committed
102
        for rpn_head_cfg in rpn_head_cfgs:
103
            num_anchors_per_location = sum([self.num_anchors_per_location[class_names.index(head_cls)] for head_cls in rpn_head_cfg['HEAD_CLS_NAME']])
104
            rpn_head = SingleHead(self.model_cfg, input_channels, len(rpn_head_cfg['HEAD_CLS_NAME']) if self.seperate_multihead else self.num_class, num_anchors_per_location, self.box_coder.code_size, rpn_head_cfg)
Gus-Guo's avatar
Gus-Guo committed
105
106
107
108
109
            rpn_heads.append(rpn_head)
        self.rpn_heads = nn.ModuleList(rpn_heads)

    def forward(self, data_dict):
        spatial_features_2d = data_dict['spatial_features_2d']
110
        spatial_features_2d = self.shared_conv(spatial_features_2d)
Gus-Guo's avatar
Gus-Guo committed
111
112
113
114

        ret_dicts = []
        for rpn_head in self.rpn_heads:
            ret_dicts.append(rpn_head(spatial_features_2d))
115
116
117
118
        
        cls_preds = [ret_dict['cls_preds'] for ret_dict in ret_dicts]
        box_preds = [ret_dict['box_preds'] for ret_dict in ret_dicts]
        
Gus-Guo's avatar
Gus-Guo committed
119
        ret = {
120
121
            'cls_preds': cls_preds if self.seperate_multihead else torch.cat(cls_preds, dim=1),
            'box_preds': box_preds if self.seperate_multihead else torch.cat(box_preds, dim=1),
Gus-Guo's avatar
Gus-Guo committed
122
        }
123

Gus-Guo's avatar
Gus-Guo committed
124
        if self.model_cfg.get('USE_DIRECTION_CLASSIFIER', False):
125
126
            dir_cls_preds = [ret_dict['dir_cls_preds'] for ret_dict in ret_dicts]
            ret['dir_cls_preds'] = dir_cls_preds if self.seperate_multihead else torch.cat(dir_cls_preds, dim=1)
Gus-Guo's avatar
Gus-Guo committed
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
        else:
            dir_cls_preds = None
 
        self.forward_ret_dict.update(ret)
       
        if self.training:
            targets_dict = self.assign_targets(
                gt_boxes=data_dict['gt_boxes']
            )
            self.forward_ret_dict.update(targets_dict)
        else:
            batch_cls_preds, batch_box_preds = self.generate_predicted_boxes(
                batch_size=data_dict['batch_size'],
                cls_preds=cls_preds, box_preds=box_preds, dir_cls_preds=dir_cls_preds
            )
            data_dict['batch_cls_preds'] = batch_cls_preds
            data_dict['batch_box_preds'] = batch_box_preds
            data_dict['cls_preds_normalized'] = False

        return data_dict
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161

    def get_cls_layer_loss(self):
        cls_preds = self.forward_ret_dict['cls_preds']
        box_cls_labels = self.forward_ret_dict['box_cls_labels']
        if not isinstance(cls_preds, list):
            cls_preds = [cls_preds]
        batch_size = int(cls_preds[0].shape[0])
        cared = box_cls_labels >= 0  # [N, num_anchors]
        positives = box_cls_labels > 0
        negatives = box_cls_labels == 0
        negative_cls_weights = negatives * 1.0
        cls_weights = (negative_cls_weights + 1.0 * positives).float()
        reg_weights = positives.float()
        if self.num_class == 1:
            # class agnostic
162
            box_cls_labels[positives] = 1
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
        pos_normalizer = positives.sum(1, keepdim=True).float()
        reg_weights /= torch.clamp(pos_normalizer, min=1.0)
        cls_weights /= torch.clamp(pos_normalizer, min=1.0)
        cls_targets = box_cls_labels * cared.type_as(box_cls_labels)
        one_hot_target = torch.zeros(
            *list(cls_targets.shape), cls_preds[0].shape[-1] + 1 if self.seperate_multihead else self.num_class + 1, dtype=cls_preds[0].dtype, device=cls_targets.device
            )
        one_hot_target.scatter_(-1, cls_targets.unsqueeze(dim=-1).long(), 1.0)
        one_hot_targets = one_hot_target[..., 1:]
        start_idx = 0
        cls_losses = 0
        for cls_pred in cls_preds:
            cls_pred = cls_pred.view(batch_size, -1, cls_pred.shape[-1])
            one_hot_target = one_hot_targets[:, start_idx:start_idx+cls_pred.shape[1]]
            cls_weight = cls_weights[:, start_idx:start_idx+cls_pred.shape[1]]
            cls_loss_src = self.cls_loss_func(cls_pred, one_hot_target, weights=cls_weight)  # [N, M]
            cls_loss = cls_loss_src.sum() / batch_size
            cls_loss = cls_loss * self.model_cfg.LOSS_CONFIG.LOSS_WEIGHTS['cls_weight']
            cls_losses += cls_loss
            start_idx += cls_pred.shape[1]
        tb_dict = {
            'rpn_loss_cls': cls_losses.item()
        }
        return cls_losses, tb_dict

    def get_box_reg_layer_loss(self):
        box_preds = self.forward_ret_dict['box_preds']
        box_dir_cls_preds = self.forward_ret_dict.get('dir_cls_preds', None)
        box_reg_targets = self.forward_ret_dict['box_reg_targets']
        box_cls_labels = self.forward_ret_dict['box_cls_labels']

        positives = box_cls_labels > 0
        reg_weights = positives.float()
        pos_normalizer = positives.sum(1, keepdim=True).float()
        reg_weights /= torch.clamp(pos_normalizer, min=1.0)

        if not isinstance(box_preds, list):
            box_preds = [box_preds]
        batch_size = int(box_preds[0].shape[0])

        if isinstance(self.anchors, list):
            if self.use_multihead:
                anchors = torch.cat(
                    [anchor.permute(3, 4, 0, 1, 2, 5).contiguous().view(-1, anchor.shape[-1]) for anchor in
                     self.anchors], dim=0)
            else:
                anchors = torch.cat(self.anchors, dim=-3)
        else:
            anchors = self.anchors
        anchors = anchors.view(1, -1, anchors.shape[-1]).repeat(batch_size, 1, 1)

        start_idx = 0
        box_losses = 0
        tb_dict = {}
        for idx, box_pred in enumerate(box_preds):
            box_pred = box_pred.view(batch_size, -1,
                                   box_pred.shape[-1] // self.num_anchors_per_location if not self.use_multihead else
                                   box_pred.shape[-1])
            box_reg_target = box_reg_targets[:, start_idx:start_idx+box_pred.shape[1]]
            reg_weight = reg_weights[:, start_idx:start_idx+box_pred.shape[1]]
            # sin(a - b) = sinacosb-cosasinb
            box_pred_sin, reg_target_sin = self.add_sin_difference(box_pred, box_reg_target)
            loc_loss_src = self.reg_loss_func(box_pred_sin, reg_target_sin, weights=reg_weight)  # [N, M]
            loc_loss = loc_loss_src.sum() / batch_size

            loc_loss = loc_loss * self.model_cfg.LOSS_CONFIG.LOSS_WEIGHTS['loc_weight']
            box_losses += loc_loss
            tb_dict['rpn_loss_loc'] = tb_dict.get('rpn_loss_loc', 0) + loc_loss

            if box_dir_cls_preds is not None:
                if not isinstance(box_dir_cls_preds, list):
                    box_dir_cls_preds = [box_dir_cls_preds]
                dir_targets = self.get_direction_target(
                    anchors, box_reg_targets,
                    dir_offset=self.model_cfg.DIR_OFFSET,
                    num_bins=self.model_cfg.NUM_DIR_BINS
                )
                box_dir_cls_pred = box_dir_cls_preds[idx]
                dir_logit = box_dir_cls_pred.view(batch_size, -1, self.model_cfg.NUM_DIR_BINS)
                weights = positives.type_as(dir_logit)
                weights /= torch.clamp(weights.sum(-1, keepdim=True), min=1.0)
                
                weight = weights[:, start_idx:start_idx+box_pred.shape[1]]
                dir_target = dir_targets[:, start_idx:start_idx+box_pred.shape[1]]
                dir_loss = self.dir_loss_func(dir_logit, dir_target, weights=weight)
                dir_loss = dir_loss.sum() / batch_size
                dir_loss = dir_loss * self.model_cfg.LOSS_CONFIG.LOSS_WEIGHTS['dir_weight']
                box_losses += dir_loss
                tb_dict['rpn_loss_dir'] = tb_dict.get('rpn_loss_dir', 0) + dir_loss.item()
            start_idx += box_pred.shape[1]
        return box_losses, tb_dict