| crop_size = ( |
| 512, |
| 512, |
| ) |
| data_preprocessor = dict( |
| bgr_to_rgb=True, |
| mean=[ |
| 123.675, |
| 116.28, |
| 103.53, |
| ], |
| pad_val=0, |
| seg_pad_val=255, |
| size=( |
| 512, |
| 512, |
| ), |
| std=[ |
| 58.395, |
| 57.12, |
| 57.375, |
| ], |
| type='SegDataPreProcessor') |
| data_root = 'CVRPDataset/' |
| dataset_type = 'CVRPDataset' |
| default_hooks = dict( |
| checkpoint=dict( |
| by_epoch=False, |
| interval=2500, |
| max_keep_ckpts=1, |
| save_best='mIoU', |
| type='CheckpointHook'), |
| logger=dict(interval=100, log_metric_by_epoch=False, type='LoggerHook'), |
| param_scheduler=dict(type='ParamSchedulerHook'), |
| sampler_seed=dict(type='DistSamplerSeedHook'), |
| timer=dict(type='IterTimerHook'), |
| visualization=dict(type='SegVisualizationHook')) |
| default_scope = 'mmseg' |
| env_cfg = dict( |
| cudnn_benchmark=True, |
| dist_cfg=dict(backend='nccl'), |
| mp_cfg=dict(mp_start_method='fork', opencv_num_threads=0)) |
| img_ratios = [ |
| 0.5, |
| 0.75, |
| 1.0, |
| 1.25, |
| 1.5, |
| 1.75, |
| ] |
| load_from = None |
| log_level = 'INFO' |
| log_processor = dict(by_epoch=False) |
| model = dict( |
| auxiliary_head=dict( |
| align_corners=False, |
| channels=256, |
| concat_input=False, |
| dropout_ratio=0.1, |
| in_channels=1024, |
| in_index=2, |
| loss_decode=dict( |
| loss_weight=0.4, type='CrossEntropyLoss', use_sigmoid=False), |
| norm_cfg=dict(requires_grad=True, type='BN'), |
| num_classes=2, |
| num_convs=1, |
| type='FCNHead'), |
| backbone=dict( |
| contract_dilation=True, |
| depth=101, |
| dilations=( |
| 1, |
| 1, |
| 2, |
| 4, |
| ), |
| norm_cfg=dict(requires_grad=True, type='BN'), |
| norm_eval=False, |
| num_stages=4, |
| out_indices=( |
| 0, |
| 1, |
| 2, |
| 3, |
| ), |
| strides=( |
| 1, |
| 2, |
| 1, |
| 1, |
| ), |
| style='pytorch', |
| type='ResNetV1c'), |
| data_preprocessor=dict( |
| bgr_to_rgb=True, |
| mean=[ |
| 123.675, |
| 116.28, |
| 103.53, |
| ], |
| pad_val=0, |
| seg_pad_val=255, |
| size=( |
| 512, |
| 512, |
| ), |
| std=[ |
| 58.395, |
| 57.12, |
| 57.375, |
| ], |
| type='SegDataPreProcessor'), |
| decode_head=dict( |
| align_corners=False, |
| c1_channels=48, |
| c1_in_channels=256, |
| channels=512, |
| dilations=( |
| 1, |
| 12, |
| 24, |
| 36, |
| ), |
| dropout_ratio=0.1, |
| in_channels=2048, |
| in_index=3, |
| loss_decode=dict( |
| loss_weight=1.0, type='CrossEntropyLoss', use_sigmoid=False), |
| norm_cfg=dict(requires_grad=True, type='BN'), |
| num_classes=2, |
| type='DepthwiseSeparableASPPHead'), |
| pretrained='open-mmlab://resnet101_v1c', |
| test_cfg=dict(mode='whole'), |
| train_cfg=dict(), |
| type='EncoderDecoder') |
| norm_cfg = dict(requires_grad=True, type='BN') |
| optim_wrapper = dict( |
| clip_grad=None, |
| optimizer=dict(lr=0.01, momentum=0.9, type='SGD', weight_decay=0.0005), |
| type='OptimWrapper') |
| optimizer = dict(lr=0.01, momentum=0.9, type='SGD', weight_decay=0.0005) |
| param_scheduler = [ |
| dict( |
| begin=0, |
| by_epoch=False, |
| end=160000, |
| eta_min=0.0001, |
| power=0.9, |
| type='PolyLR'), |
| ] |
| randomness = dict(seed=0) |
| resume = False |
| test_cfg = dict(type='TestLoop') |
| test_dataloader = dict( |
| batch_size=1, |
| dataset=dict( |
| data_prefix=dict(img_path='img_dir/val', seg_map_path='ann_dir/val'), |
| data_root='CVRPDataset/', |
| pipeline=[ |
| dict(type='LoadImageFromFile'), |
| dict(keep_ratio=True, scale=( |
| 2048, |
| 1024, |
| ), type='Resize'), |
| dict(type='LoadAnnotations'), |
| dict(type='PackSegInputs'), |
| ], |
| type='CVRPDataset'), |
| num_workers=4, |
| persistent_workers=True, |
| sampler=dict(shuffle=False, type='DefaultSampler')) |
| test_evaluator = dict( |
| iou_metrics=[ |
| 'mIoU', |
| 'mDice', |
| 'mFscore', |
| ], type='IoUMetric') |
| test_pipeline = [ |
| dict(type='LoadImageFromFile'), |
| dict(keep_ratio=True, scale=( |
| 2048, |
| 1024, |
| ), type='Resize'), |
| dict(type='LoadAnnotations'), |
| dict(type='PackSegInputs'), |
| ] |
| train_cfg = dict(max_iters=20000, type='IterBasedTrainLoop', val_interval=500) |
| train_dataloader = dict( |
| batch_size=4, |
| dataset=dict( |
| data_prefix=dict( |
| img_path='img_dir/train', seg_map_path='ann_dir/train'), |
| data_root='CVRPDataset/', |
| pipeline=[ |
| dict(type='LoadImageFromFile'), |
| dict(type='LoadAnnotations'), |
| dict( |
| keep_ratio=True, |
| ratio_range=( |
| 0.5, |
| 2.0, |
| ), |
| scale=( |
| 2048, |
| 1024, |
| ), |
| type='RandomResize'), |
| dict( |
| cat_max_ratio=0.75, crop_size=( |
| 512, |
| 512, |
| ), type='RandomCrop'), |
| dict(prob=0.5, type='RandomFlip'), |
| dict(type='PhotoMetricDistortion'), |
| dict(type='PackSegInputs'), |
| ], |
| type='CVRPDataset'), |
| num_workers=2, |
| persistent_workers=True, |
| sampler=dict(shuffle=True, type='InfiniteSampler')) |
| train_pipeline = [ |
| dict(type='LoadImageFromFile'), |
| dict(type='LoadAnnotations'), |
| dict( |
| keep_ratio=True, |
| ratio_range=( |
| 0.5, |
| 2.0, |
| ), |
| scale=( |
| 2048, |
| 1024, |
| ), |
| type='RandomResize'), |
| dict(cat_max_ratio=0.75, crop_size=( |
| 512, |
| 512, |
| ), type='RandomCrop'), |
| dict(prob=0.5, type='RandomFlip'), |
| dict(type='PhotoMetricDistortion'), |
| dict(type='PackSegInputs'), |
| ] |
| tta_model = dict(type='SegTTAModel') |
| tta_pipeline = [ |
| dict(file_client_args=dict(backend='disk'), type='LoadImageFromFile'), |
| dict( |
| transforms=[ |
| [ |
| dict(keep_ratio=True, scale_factor=0.5, type='Resize'), |
| dict(keep_ratio=True, scale_factor=0.75, type='Resize'), |
| dict(keep_ratio=True, scale_factor=1.0, type='Resize'), |
| dict(keep_ratio=True, scale_factor=1.25, type='Resize'), |
| dict(keep_ratio=True, scale_factor=1.5, type='Resize'), |
| dict(keep_ratio=True, scale_factor=1.75, type='Resize'), |
| ], |
| [ |
| dict(direction='horizontal', prob=0.0, type='RandomFlip'), |
| dict(direction='horizontal', prob=1.0, type='RandomFlip'), |
| ], |
| [ |
| dict(type='LoadAnnotations'), |
| ], |
| [ |
| dict(type='PackSegInputs'), |
| ], |
| ], |
| type='TestTimeAug'), |
| ] |
| val_cfg = dict(type='ValLoop') |
| val_dataloader = dict( |
| batch_size=1, |
| dataset=dict( |
| data_prefix=dict(img_path='img_dir/val', seg_map_path='ann_dir/val'), |
| data_root='CVRPDataset/', |
| pipeline=[ |
| dict(type='LoadImageFromFile'), |
| dict(keep_ratio=True, scale=( |
| 2048, |
| 1024, |
| ), type='Resize'), |
| dict(type='LoadAnnotations'), |
| dict(type='PackSegInputs'), |
| ], |
| type='CVRPDataset'), |
| num_workers=4, |
| persistent_workers=True, |
| sampler=dict(shuffle=False, type='DefaultSampler')) |
| val_evaluator = dict( |
| iou_metrics=[ |
| 'mIoU', |
| 'mDice', |
| 'mFscore', |
| ], type='IoUMetric') |
| vis_backends = [ |
| dict(type='LocalVisBackend'), |
| ] |
| visualizer = dict( |
| name='visualizer', |
| type='SegLocalVisualizer', |
| vis_backends=[ |
| dict(type='LocalVisBackend'), |
| ]) |
| work_dir = './work_dirs/CVRP_deeplabv3plus' |
|
|