queryinst_r50_fpn_1x_coco.py 5.2 KB

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  1. _base_ = [
  2. '../_base_/datasets/coco_instance.py',
  3. '../_base_/schedules/schedule_1x.py', '../_base_/default_runtime.py'
  4. ]
  5. num_stages = 6
  6. num_proposals = 100
  7. model = dict(
  8. type='QueryInst',
  9. data_preprocessor=dict(
  10. type='DetDataPreprocessor',
  11. mean=[123.675, 116.28, 103.53],
  12. std=[58.395, 57.12, 57.375],
  13. bgr_to_rgb=True,
  14. pad_mask=True,
  15. pad_size_divisor=32),
  16. backbone=dict(
  17. type='ResNet',
  18. depth=50,
  19. num_stages=4,
  20. out_indices=(0, 1, 2, 3),
  21. frozen_stages=1,
  22. norm_cfg=dict(type='BN', requires_grad=True),
  23. norm_eval=True,
  24. style='pytorch',
  25. init_cfg=dict(type='Pretrained', checkpoint='torchvision://resnet50')),
  26. neck=dict(
  27. type='FPN',
  28. in_channels=[256, 512, 1024, 2048],
  29. out_channels=256,
  30. start_level=0,
  31. add_extra_convs='on_input',
  32. num_outs=4),
  33. rpn_head=dict(
  34. type='EmbeddingRPNHead',
  35. num_proposals=num_proposals,
  36. proposal_feature_channel=256),
  37. roi_head=dict(
  38. type='SparseRoIHead',
  39. num_stages=num_stages,
  40. stage_loss_weights=[1] * num_stages,
  41. proposal_feature_channel=256,
  42. bbox_roi_extractor=dict(
  43. type='SingleRoIExtractor',
  44. roi_layer=dict(type='RoIAlign', output_size=7, sampling_ratio=2),
  45. out_channels=256,
  46. featmap_strides=[4, 8, 16, 32]),
  47. mask_roi_extractor=dict(
  48. type='SingleRoIExtractor',
  49. roi_layer=dict(type='RoIAlign', output_size=14, sampling_ratio=2),
  50. out_channels=256,
  51. featmap_strides=[4, 8, 16, 32]),
  52. bbox_head=[
  53. dict(
  54. type='DIIHead',
  55. num_classes=80,
  56. num_ffn_fcs=2,
  57. num_heads=8,
  58. num_cls_fcs=1,
  59. num_reg_fcs=3,
  60. feedforward_channels=2048,
  61. in_channels=256,
  62. dropout=0.0,
  63. ffn_act_cfg=dict(type='ReLU', inplace=True),
  64. dynamic_conv_cfg=dict(
  65. type='DynamicConv',
  66. in_channels=256,
  67. feat_channels=64,
  68. out_channels=256,
  69. input_feat_shape=7,
  70. act_cfg=dict(type='ReLU', inplace=True),
  71. norm_cfg=dict(type='LN')),
  72. loss_bbox=dict(type='L1Loss', loss_weight=5.0),
  73. loss_iou=dict(type='GIoULoss', loss_weight=2.0),
  74. loss_cls=dict(
  75. type='FocalLoss',
  76. use_sigmoid=True,
  77. gamma=2.0,
  78. alpha=0.25,
  79. loss_weight=2.0),
  80. bbox_coder=dict(
  81. type='DeltaXYWHBBoxCoder',
  82. clip_border=False,
  83. target_means=[0., 0., 0., 0.],
  84. target_stds=[0.5, 0.5, 1., 1.])) for _ in range(num_stages)
  85. ],
  86. mask_head=[
  87. dict(
  88. type='DynamicMaskHead',
  89. dynamic_conv_cfg=dict(
  90. type='DynamicConv',
  91. in_channels=256,
  92. feat_channels=64,
  93. out_channels=256,
  94. input_feat_shape=14,
  95. with_proj=False,
  96. act_cfg=dict(type='ReLU', inplace=True),
  97. norm_cfg=dict(type='LN')),
  98. num_convs=4,
  99. num_classes=80,
  100. roi_feat_size=14,
  101. in_channels=256,
  102. conv_kernel_size=3,
  103. conv_out_channels=256,
  104. class_agnostic=False,
  105. norm_cfg=dict(type='BN'),
  106. upsample_cfg=dict(type='deconv', scale_factor=2),
  107. loss_mask=dict(
  108. type='DiceLoss',
  109. loss_weight=8.0,
  110. use_sigmoid=True,
  111. activate=False,
  112. eps=1e-5)) for _ in range(num_stages)
  113. ]),
  114. # training and testing settings
  115. train_cfg=dict(
  116. rpn=None,
  117. rcnn=[
  118. dict(
  119. assigner=dict(
  120. type='HungarianAssigner',
  121. match_costs=[
  122. dict(type='FocalLossCost', weight=2.0),
  123. dict(type='BBoxL1Cost', weight=5.0, box_format='xyxy'),
  124. dict(type='IoUCost', iou_mode='giou', weight=2.0)
  125. ]),
  126. sampler=dict(type='PseudoSampler'),
  127. pos_weight=1,
  128. mask_size=28,
  129. ) for _ in range(num_stages)
  130. ]),
  131. test_cfg=dict(
  132. rpn=None, rcnn=dict(max_per_img=num_proposals, mask_thr_binary=0.5)))
  133. # optimizer
  134. optim_wrapper = dict(
  135. type='OptimWrapper',
  136. optimizer=dict(
  137. _delete_=True, type='AdamW', lr=0.0001, weight_decay=0.0001),
  138. paramwise_cfg=dict(
  139. custom_keys={'backbone': dict(lr_mult=0.1, decay_mult=1.0)}),
  140. clip_grad=dict(max_norm=0.1, norm_type=2))
  141. # learning rate
  142. param_scheduler = [
  143. dict(
  144. type='LinearLR', start_factor=0.001, by_epoch=False, begin=0,
  145. end=1000),
  146. dict(
  147. type='MultiStepLR',
  148. begin=0,
  149. end=12,
  150. by_epoch=True,
  151. milestones=[8, 11],
  152. gamma=0.1)
  153. ]