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# Running DeepLab on ADE20K Semantic Segmentation Dataset |
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This page walks through the steps required to run DeepLab on ADE20K dataset on a |
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local machine. |
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## Download dataset and convert to TFRecord |
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We have prepared the script (under the folder `datasets`) to download and |
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convert ADE20K semantic segmentation dataset to TFRecord. |
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```bash |
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# From the tensorflow/models/research/deeplab/datasets directory. |
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bash download_and_convert_ade20k.sh |
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``` |
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The converted dataset will be saved at ./deeplab/datasets/ADE20K/tfrecord |
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## Recommended Directory Structure for Training and Evaluation |
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``` |
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+ datasets |
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- build_data.py |
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- build_ade20k_data.py |
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- download_and_convert_ade20k.sh |
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+ ADE20K |
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+ tfrecord |
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+ exp |
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+ train_on_train_set |
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+ train |
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+ eval |
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+ vis |
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+ ADEChallengeData2016 |
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+ annotations |
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+ training |
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+ validation |
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+ images |
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+ training |
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+ validation |
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``` |
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where the folder `train_on_train_set` stores the train/eval/vis events and |
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results (when training DeepLab on the ADE20K train set). |
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## Running the train/eval/vis jobs |
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A local training job using `xception_65` can be run with the following command: |
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```bash |
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# From tensorflow/models/research/ |
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python deeplab/train.py \ |
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--logtostderr \ |
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--training_number_of_steps=150000 \ |
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--train_split="train" \ |
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--model_variant="xception_65" \ |
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--atrous_rates=6 \ |
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--atrous_rates=12 \ |
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--atrous_rates=18 \ |
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--output_stride=16 \ |
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--decoder_output_stride=4 \ |
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--train_crop_size="513,513" \ |
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--train_batch_size=4 \ |
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--min_resize_value=513 \ |
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--max_resize_value=513 \ |
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--resize_factor=16 \ |
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--dataset="ade20k" \ |
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--tf_initial_checkpoint=${PATH_TO_INITIAL_CHECKPOINT} \ |
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--train_logdir=${PATH_TO_TRAIN_DIR}\ |
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--dataset_dir=${PATH_TO_DATASET} |
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``` |
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where ${PATH\_TO\_INITIAL\_CHECKPOINT} is the path to the initial checkpoint. |
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${PATH\_TO\_TRAIN\_DIR} is the directory in which training checkpoints and |
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events will be written to (it is recommended to set it to the |
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`train_on_train_set/train` above), and ${PATH\_TO\_DATASET} is the directory in |
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which the ADE20K dataset resides (the `tfrecord` above) |
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**Note that for train.py:** |
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1. In order to fine tune the BN layers, one needs to use large batch size (> |
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12), and set fine_tune_batch_norm = True. Here, we simply use small batch |
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size during training for the purpose of demonstration. If the users have |
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limited GPU memory at hand, please fine-tune from our provided checkpoints |
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whose batch norm parameters have been trained, and use smaller learning rate |
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with fine_tune_batch_norm = False. |
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2. User should fine tune the `min_resize_value` and `max_resize_value` to get |
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better result. Note that `resize_factor` has to be equal to `output_stride`. |
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3. The users should change atrous_rates from [6, 12, 18] to [12, 24, 36] if |
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setting output_stride=8. |
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4. The users could skip the flag, `decoder_output_stride`, if you do not want |
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to use the decoder structure. |
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## Running Tensorboard |
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Progress for training and evaluation jobs can be inspected using Tensorboard. If |
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using the recommended directory structure, Tensorboard can be run using the |
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following command: |
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```bash |
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tensorboard --logdir=${PATH_TO_LOG_DIRECTORY} |
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``` |
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where `${PATH_TO_LOG_DIRECTORY}` points to the directory that contains the train |
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directorie (e.g., the folder `train_on_train_set` in the above example). Please |
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note it may take Tensorboard a couple minutes to populate with data. |
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