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picodet_s_192_lcnet_pedestrian.yml
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use_gpu: true
use_xpu: false
log_iter: 20
save_dir: output
snapshot_epoch: 1
print_flops: false
# Exporting the model
export:
post_process: True # Whether post-processing is included in the network when export model.
nms: True # Whether NMS is included in the network when export model.
benchmark: False # It is used to testing model performance, if set `True`, post-process and NMS will not be exported.
metric: COCO
num_classes: 1
architecture: PicoDet
pretrain_weights: https://paddle-imagenet-models-name.bj.bcebos.com/dygraph/legendary_models/PPLCNet_x0_75_pretrained.pdparams
weights: output/picodet_s_192_lcnet_pedestrian/best_model
find_unused_parameters: True
use_ema: true
epoch: 300
snapshot_epoch: 10
PicoDet:
backbone: LCNet
neck: LCPAN
head: PicoHeadV2
LCNet:
scale: 0.75
feature_maps: [3, 4, 5]
LCPAN:
out_channels: 96
use_depthwise: True
num_features: 4
PicoHeadV2:
conv_feat:
name: PicoFeat
feat_in: 96
feat_out: 96
num_convs: 2
num_fpn_stride: 4
norm_type: bn
share_cls_reg: True
use_se: True
feat_in_chan: 96
fpn_stride: [8, 16, 32, 64]
prior_prob: 0.01
reg_max: 7
cell_offset: 0.5
grid_cell_scale: 5.0
static_assigner_epoch: 100
use_align_head: True
static_assigner:
name: ATSSAssigner
topk: 4
force_gt_matching: False
assigner:
name: TaskAlignedAssigner
topk: 13
alpha: 1.0
beta: 6.0
loss_class:
name: VarifocalLoss
use_sigmoid: False
iou_weighted: True
loss_weight: 1.0
loss_dfl:
name: DistributionFocalLoss
loss_weight: 0.5
loss_bbox:
name: GIoULoss
loss_weight: 2.5
nms:
name: MultiClassNMS
nms_top_k: 1000
keep_top_k: 100
score_threshold: 0.025
nms_threshold: 0.6
LearningRate:
base_lr: 0.32
schedulers:
- !CosineDecay
max_epochs: 300
- !LinearWarmup
start_factor: 0.1
steps: 300
OptimizerBuilder:
optimizer:
momentum: 0.9
type: Momentum
regularizer:
factor: 0.00004
type: L2
worker_num: 6
eval_height: &eval_height 192
eval_width: &eval_width 192
eval_size: &eval_size [*eval_height, *eval_width]
TrainReader:
sample_transforms:
- Decode: {}
- RandomCrop: {}
- RandomFlip: {prob: 0.5}
- RandomDistort: {}
batch_transforms:
- BatchRandomResize: {target_size: [128, 160, 192, 224, 256], random_size: True, random_interp: True, keep_ratio: False}
- NormalizeImage: {is_scale: true, mean: [0.485,0.456,0.406], std: [0.229, 0.224,0.225]}
- Permute: {}
- PadGT: {}
batch_size: 64
shuffle: true
drop_last: true
EvalReader:
sample_transforms:
- Decode: {}
- Resize: {interp: 2, target_size: *eval_size, keep_ratio: False}
- NormalizeImage: {is_scale: true, mean: [0.485,0.456,0.406], std: [0.229, 0.224,0.225]}
- Permute: {}
batch_transforms:
- PadBatch: {pad_to_stride: 32}
batch_size: 8
shuffle: false
TestReader:
inputs_def:
image_shape: [1, 3, *eval_height, *eval_width]
sample_transforms:
- Decode: {}
- Resize: {interp: 2, target_size: *eval_size, keep_ratio: False}
- NormalizeImage: {is_scale: true, mean: [0.485,0.456,0.406], std: [0.229, 0.224,0.225]}
- Permute: {}
batch_size: 1
TrainDataset:
!COCODataSet
image_dir: ""
anno_path: aic_coco_train_cocoformat.json
dataset_dir: dataset
data_fields: ['image', 'gt_bbox', 'gt_class', 'is_crowd']
EvalDataset:
!COCODataSet
image_dir: val2017
anno_path: annotations/instances_val2017.json
dataset_dir: dataset/coco
TestDataset:
!ImageFolder
anno_path: annotations/instances_val2017.json # also support txt (like VOC's label_list.txt)
dataset_dir: dataset/coco # if set, anno_path will be 'dataset_dir/anno_path'