faster_rcnn_r101_fpn_2x.yml 2.7 KB
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architecture: FasterRCNN
train_feed: FasterRCNNTrainFeed
eval_feed: FasterRCNNEvalFeed
test_feed: FasterRCNNTestFeed
max_iters: 360000
snapshot_iter: 10000
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use_gpu: true
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log_smooth_window: 20
save_dir: output
pretrain_weights: http://paddle-imagenet-models-name.bj.bcebos.com/ResNet101_pretrained.tar
weights: output/faster_rcnn_r101_fpn_2x/model_final
metric: COCO
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num_classes: 81
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FasterRCNN:
  backbone: ResNet
  fpn: FPN
  rpn_head: FPNRPNHead
  roi_extractor: FPNRoIAlign
  bbox_head: BBoxHead
  bbox_assigner: BBoxAssigner

ResNet:
  depth: 101
  feature_maps: [2, 3, 4, 5]
  freeze_at: 2
  norm_type: affine_channel

FPN:
  max_level: 6
  min_level: 2
  num_chan: 256
  spatial_scale: [0.03125, 0.0625, 0.125, 0.25]

FPNRPNHead:
  anchor_generator:
    anchor_sizes: [32, 64, 128, 256, 512]
    aspect_ratios: [0.5, 1.0, 2.0]
    stride: [16.0, 16.0]
    variance: [1.0, 1.0, 1.0, 1.0]
  anchor_start_size: 32
  max_level: 6
  min_level: 2
  num_chan: 256
  rpn_target_assign:
    rpn_batch_size_per_im: 256
    rpn_fg_fraction: 0.5
    rpn_negative_overlap: 0.3
    rpn_positive_overlap: 0.7
    rpn_straddle_thresh: 0.0
  train_proposal:
    min_size: 0.0
    nms_thresh: 0.7
    post_nms_top_n: 2000
    pre_nms_top_n: 2000
  test_proposal:
    min_size: 0.0
    nms_thresh: 0.7
    post_nms_top_n: 1000
    pre_nms_top_n: 1000

FPNRoIAlign:
  canconical_level: 4
  canonical_size: 224
  max_level: 5
  min_level: 2
  box_resolution: 7
  sampling_ratio: 2

BBoxAssigner:
  batch_size_per_im: 512
  bbox_reg_weights: [0.1, 0.1, 0.2, 0.2]
  bg_thresh_hi: 0.5
  bg_thresh_lo: 0.0
  fg_fraction: 0.25
  fg_thresh: 0.5

BBoxHead:
  head: TwoFCHead
  nms:
    keep_top_k: 100
    nms_threshold: 0.5
    score_threshold: 0.05

TwoFCHead:
  num_chan: 1024

LearningRate:
  base_lr: 0.01
  schedulers:
  - !PiecewiseDecay
    gamma: 0.1
    milestones: [240000, 320000]
  - !LinearWarmup
    start_factor: 0.3333333333333333
    steps: 500

OptimizerBuilder:
  optimizer:
    momentum: 0.9
    type: Momentum
  regularizer:
    factor: 0.0001
    type: L2

FasterRCNNTrainFeed:
  # batch size per device
  batch_size: 1
  dataset:
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    dataset_dir: dataset/coco
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    image_dir: train2017
    annotation: annotations/instances_train2017.json
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  batch_transforms:
  - !PadBatch
    pad_to_stride: 32
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  num_workers: 2

FasterRCNNEvalFeed:
  batch_size: 1
  dataset:
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    dataset_dir: dataset/coco
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    annotation: annotations/instances_val2017.json
    image_dir: val2017
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  batch_transforms:
  - !PadBatch
    pad_to_stride: 32
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  num_workers: 2

FasterRCNNTestFeed:
  batch_size: 1
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  dataset:
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    annotation: dataset/coco/annotations/instances_val2017.json
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  batch_transforms:
  - !PadBatch
    pad_to_stride: 32
  num_workers: 2