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Configuration error
Configuration error
| img_scale = (640, 640) # width, height | |
| # model settings | |
| model = dict( | |
| type='YOLOX', | |
| data_preprocessor=dict( | |
| type='DetDataPreprocessor', | |
| pad_size_divisor=32, | |
| batch_augments=[ | |
| dict( | |
| type='BatchSyncRandomResize', | |
| random_size_range=(480, 800), | |
| size_divisor=32, | |
| interval=10) | |
| ]), | |
| backbone=dict( | |
| type='CSPDarknet', | |
| deepen_factor=1.0, | |
| widen_factor=1.0, | |
| out_indices=(2, 3, 4), | |
| use_depthwise=False, | |
| spp_kernal_sizes=(5, 9, 13), | |
| norm_cfg=dict(type='BN', momentum=0.03, eps=0.001), | |
| act_cfg=dict(type='Swish'), | |
| ), | |
| neck=dict( | |
| type='YOLOXPAFPN', | |
| in_channels=[256, 512, 1024], | |
| out_channels=256, | |
| num_csp_blocks=3, | |
| use_depthwise=False, | |
| upsample_cfg=dict(scale_factor=2, mode='nearest'), | |
| norm_cfg=dict(type='BN', momentum=0.03, eps=0.001), | |
| act_cfg=dict(type='Swish')), | |
| bbox_head=dict( | |
| type='YOLOXHead', | |
| num_classes=80, | |
| in_channels=256, | |
| feat_channels=256, | |
| stacked_convs=2, | |
| strides=(8, 16, 32), | |
| use_depthwise=False, | |
| norm_cfg=dict(type='BN', momentum=0.03, eps=0.001), | |
| act_cfg=dict(type='Swish'), | |
| loss_cls=dict( | |
| type='CrossEntropyLoss', | |
| use_sigmoid=True, | |
| reduction='sum', | |
| loss_weight=1.0), | |
| loss_bbox=dict( | |
| type='IoULoss', | |
| mode='square', | |
| eps=1e-16, | |
| reduction='sum', | |
| loss_weight=5.0), | |
| loss_obj=dict( | |
| type='CrossEntropyLoss', | |
| use_sigmoid=True, | |
| reduction='sum', | |
| loss_weight=1.0), | |
| loss_l1=dict(type='L1Loss', reduction='sum', loss_weight=1.0)), | |
| train_cfg=dict(assigner=dict(type='SimOTAAssigner', center_radius=2.5)), | |
| # In order to align the source code, the threshold of the val phase is | |
| # 0.01, and the threshold of the test phase is 0.001. | |
| test_cfg=dict(score_thr=0.01, nms=dict(type='nms', iou_threshold=0.65))) | |
| # dataset settings | |
| data_root = 'data/coco/' | |
| dataset_type = 'CocoDataset' | |
| # Example to use different file client | |
| # Method 1: simply set the data root and let the file I/O module | |
| # automatically infer from prefix (not support LMDB and Memcache yet) | |
| # data_root = 's3://openmmlab/datasets/detection/coco/' | |
| # Method 2: Use `backend_args`, `file_client_args` in versions before 3.0.0rc6 | |
| # backend_args = dict( | |
| # backend='petrel', | |
| # path_mapping=dict({ | |
| # './data/': 's3://openmmlab/datasets/detection/', | |
| # 'data/': 's3://openmmlab/datasets/detection/' | |
| # })) | |
| backend_args = None | |
| train_pipeline = [ | |
| dict(type='Mosaic', img_scale=img_scale, pad_val=114.0), | |
| dict( | |
| type='RandomAffine', | |
| scaling_ratio_range=(0.1, 2), | |
| # img_scale is (width, height) | |
| border=(-img_scale[0] // 2, -img_scale[1] // 2)), | |
| dict( | |
| type='MixUp', | |
| img_scale=img_scale, | |
| ratio_range=(0.8, 1.6), | |
| pad_val=114.0), | |
| dict(type='YOLOXHSVRandomAug'), | |
| dict(type='RandomFlip', prob=0.5), | |
| # According to the official implementation, multi-scale | |
| # training is not considered here but in the | |
| # 'mmdet/models/detectors/yolox.py'. | |
| # Resize and Pad are for the last 15 epochs when Mosaic, | |
| # RandomAffine, and MixUp are closed by YOLOXModeSwitchHook. | |
| dict(type='Resize', scale=img_scale, keep_ratio=True), | |
| dict( | |
| type='Pad', | |
| pad_to_square=True, | |
| # If the image is three-channel, the pad value needs | |
| # to be set separately for each channel. | |
| pad_val=dict(img=(114.0, 114.0, 114.0))), | |
| dict(type='FilterAnnotations', min_gt_bbox_wh=(1, 1), keep_empty=False), | |
| dict(type='PackDetInputs') | |
| ] | |
| train_dataset = dict( | |
| # use MultiImageMixDataset wrapper to support mosaic and mixup | |
| type='MultiImageMixDataset', | |
| dataset=dict( | |
| type=dataset_type, | |
| data_root=data_root, | |
| ann_file='annotations/instances_train2017.json', | |
| data_prefix=dict(img='train2017/'), | |
| pipeline=[ | |
| dict(type='LoadImageFromFile', backend_args=backend_args), | |
| dict(type='LoadAnnotations', with_bbox=True) | |
| ], | |
| filter_cfg=dict(filter_empty_gt=False, min_size=32), | |
| backend_args=backend_args), | |
| pipeline=train_pipeline) | |
| test_pipeline = [ | |
| dict(type='LoadImageFromFile', backend_args=backend_args), | |
| dict(type='Resize', scale=img_scale, keep_ratio=True), | |
| dict( | |
| type='Pad', | |
| pad_to_square=True, | |
| pad_val=dict(img=(114.0, 114.0, 114.0))), | |
| dict(type='LoadAnnotations', with_bbox=True), | |
| dict( | |
| type='PackDetInputs', | |
| meta_keys=('img_id', 'img_path', 'ori_shape', 'img_shape', | |
| 'scale_factor')) | |
| ] | |
| train_dataloader = dict( | |
| batch_size=8, | |
| num_workers=4, | |
| persistent_workers=True, | |
| sampler=dict(type='DefaultSampler', shuffle=True), | |
| dataset=train_dataset) | |
| val_dataloader = dict( | |
| batch_size=8, | |
| num_workers=4, | |
| persistent_workers=True, | |
| drop_last=False, | |
| sampler=dict(type='DefaultSampler', shuffle=False), | |
| dataset=dict( | |
| type=dataset_type, | |
| data_root=data_root, | |
| ann_file='annotations/instances_val2017.json', | |
| data_prefix=dict(img='val2017/'), | |
| test_mode=True, | |
| pipeline=test_pipeline, | |
| backend_args=backend_args)) | |
| test_dataloader = val_dataloader | |
| val_evaluator = dict( | |
| type='CocoMetric', | |
| ann_file=data_root + 'annotations/instances_val2017.json', | |
| metric='bbox', | |
| backend_args=backend_args) | |
| test_evaluator = val_evaluator | |
| # training settings | |
| max_epochs = 300 | |
| num_last_epochs = 15 | |
| interval = 10 | |
| train_cfg = dict(max_epochs=max_epochs, val_interval=interval) | |
| # optimizer | |
| # default 8 gpu | |
| base_lr = 0.01 | |
| optim_wrapper = dict( | |
| type='OptimWrapper', | |
| optimizer=dict( | |
| type='SGD', lr=base_lr, momentum=0.9, weight_decay=5e-4, | |
| nesterov=True), | |
| paramwise_cfg=dict(norm_decay_mult=0., bias_decay_mult=0.)) | |
| # learning rate | |
| param_scheduler = [ | |
| dict( | |
| # use quadratic formula to warm up 5 epochs | |
| # and lr is updated by iteration | |
| # TODO: fix default scope in get function | |
| type='mmdet.QuadraticWarmupLR', | |
| by_epoch=True, | |
| begin=0, | |
| end=5, | |
| convert_to_iter_based=True), | |
| dict( | |
| # use cosine lr from 5 to 285 epoch | |
| type='CosineAnnealingLR', | |
| eta_min=base_lr * 0.05, | |
| begin=5, | |
| T_max=max_epochs - num_last_epochs, | |
| end=max_epochs - num_last_epochs, | |
| by_epoch=True, | |
| convert_to_iter_based=True), | |
| dict( | |
| # use fixed lr during last 15 epochs | |
| type='ConstantLR', | |
| by_epoch=True, | |
| factor=1, | |
| begin=max_epochs - num_last_epochs, | |
| end=max_epochs, | |
| ) | |
| ] | |
| default_hooks = dict( | |
| checkpoint=dict( | |
| interval=interval, | |
| max_keep_ckpts=3 # only keep latest 3 checkpoints | |
| )) | |
| custom_hooks = [ | |
| dict( | |
| type='YOLOXModeSwitchHook', | |
| num_last_epochs=num_last_epochs, | |
| priority=48), | |
| dict(type='SyncNormHook', priority=48), | |
| dict( | |
| type='EMAHook', | |
| ema_type='ExpMomentumEMA', | |
| momentum=0.0001, | |
| update_buffers=True, | |
| priority=49) | |
| ] | |
| # NOTE: `auto_scale_lr` is for automatically scaling LR, | |
| # USER SHOULD NOT CHANGE ITS VALUES. | |
| # base_batch_size = (8 GPUs) x (8 samples per GPU) | |
| auto_scale_lr = dict(base_batch_size=64) |