# Tutorial 3: Customize Data Pipelines ## Design of Data pipelines Following typical conventions, we use `Dataset` and `DataLoader` for data loading with multiple workers. `Dataset` returns a dict of data items corresponding the arguments of models' forward method. Since the data in semantic segmentation may not be the same size, we introduce a new `DataContainer` type in MMCV to help collect and distribute data of different size. See [here](https://github.com/open-mmlab/mmcv/blob/master/mmcv/parallel/data_container.py) for more details. The data preparation pipeline and the dataset is decomposed. Usually a dataset defines how to process the annotations and a data pipeline defines all the steps to prepare a data dict. A pipeline consists of a sequence of operations. Each operation takes a dict as input and also output a dict for the next transform. The operations are categorized into data loading, pre-processing, formatting and test-time augmentation. Here is an pipeline example for PSPNet. ```python img_norm_cfg = dict( mean=[123.675, 116.28, 103.53], std=[58.395, 57.12, 57.375], to_rgb=True) crop_size = (512, 1024) train_pipeline = [ dict(type='LoadImageFromFile'), dict(type='LoadAnnotations'), dict(type='Resize', img_scale=(2048, 1024), ratio_range=(0.5, 2.0)), dict(type='RandomCrop', crop_size=crop_size, cat_max_ratio=0.75), dict(type='RandomFlip', flip_ratio=0.5), dict(type='PhotoMetricDistortion'), dict(type='Normalize', **img_norm_cfg), dict(type='Pad', size=crop_size, pad_val=0, seg_pad_val=255), dict(type='DefaultFormatBundle'), dict(type='Collect', keys=['img', 'gt_semantic_seg']), ] test_pipeline = [ dict(type='LoadImageFromFile'), dict( type='MultiScaleFlipAug', img_scale=(2048, 1024), # img_ratios=[0.5, 0.75, 1.0, 1.25, 1.5, 1.75], flip=False, transforms=[ dict(type='Resize', keep_ratio=True), dict(type='RandomFlip'), dict(type='Normalize', **img_norm_cfg), dict(type='ImageToTensor', keys=['img']), dict(type='Collect', keys=['img']), ]) ] ``` For each operation, we list the related dict fields that are added/updated/removed. ### Data loading `LoadImageFromFile` - add: img, img_shape, ori_shape `LoadAnnotations` - add: gt_semantic_seg, seg_fields ### Pre-processing `Resize` - add: scale, scale_idx, pad_shape, scale_factor, keep_ratio - update: img, img_shape, *seg_fields `RandomFlip` - add: flip - update: img, *seg_fields `Pad` - add: pad_fixed_size, pad_size_divisor - update: img, pad_shape, *seg_fields `RandomCrop` - update: img, pad_shape, *seg_fields `Normalize` - add: img_norm_cfg - update: img `SegRescale` - update: gt_semantic_seg `PhotoMetricDistortion` - update: img ### Formatting `ToTensor` - update: specified by `keys`. `ImageToTensor` - update: specified by `keys`. `Transpose` - update: specified by `keys`. `ToDataContainer` - update: specified by `fields`. `DefaultFormatBundle` - update: img, gt_semantic_seg `Collect` - add: img_meta (the keys of img_meta is specified by `meta_keys`) - remove: all other keys except for those specified by `keys` ### Test time augmentation `MultiScaleFlipAug` ## Extend and use custom pipelines 1. Write a new pipeline in any file, e.g., `my_pipeline.py`. It takes a dict as input and return a dict. ```python from mmseg.datasets import PIPELINES @PIPELINES.register_module() class MyTransform: def __call__(self, results): results['dummy'] = True return results ``` 2. Import the new class. ```python from .my_pipeline import MyTransform ``` 3. Use it in config files. ```python img_norm_cfg = dict( mean=[123.675, 116.28, 103.53], std=[58.395, 57.12, 57.375], to_rgb=True) crop_size = (512, 1024) train_pipeline = [ dict(type='LoadImageFromFile'), dict(type='LoadAnnotations'), dict(type='Resize', img_scale=(2048, 1024), ratio_range=(0.5, 2.0)), dict(type='RandomCrop', crop_size=crop_size, cat_max_ratio=0.75), dict(type='RandomFlip', flip_ratio=0.5), dict(type='PhotoMetricDistortion'), dict(type='Normalize', **img_norm_cfg), dict(type='Pad', size=crop_size, pad_val=0, seg_pad_val=255), dict(type='MyTransform'), dict(type='DefaultFormatBundle'), dict(type='Collect', keys=['img', 'gt_semantic_seg']), ] ```