/semantic-segmentation-pytorch

Pytorch implementation for Semantic Segmentation/Scene Parsing on MIT ADE20K dataset

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Semantic Segmentation on MIT ADE20K dataset in PyTorch

This is a PyTorch implementation of semantic segmentation models on MIT ADE20K scene parsing dataset.

ADE20K is the largest open source dataset for semantic segmentation and scene parsing, released by MIT Computer Vision team. Follow the link below to find the repository for our dataset and implementations on Caffe and Torch7: https://github.com/CSAILVision/sceneparsing

Pretrained models can be found at: http://sceneparsing.csail.mit.edu/model/

[From left to right: Test Image, Ground Truth, Predicted Result]

Highlights [NEW!]

Syncronized Batch Normalization on PyTorch

This module differs from the built-in PyTorch BatchNorm as the mean and standard-deviation are reduced across all devices during training. The importance of synchronized batch normalization in object detection has been recently proved with a an extensive analysis in the paper MegDet: A Large Mini-Batch Object Detector, and we empirically find that it is also important for segmentation.

The implementation is reasonable due to the following reasons:

  • This implementation is in pure-python. No C++ extra extension libs.
  • Easy to use.
  • It is completely compatible with PyTorch's implementation. Specifically, it uses unbiased variance to update the moving average, and use sqrt(max(var, eps)) instead of sqrt(var + eps).

To the best knowledge, it is the first pure-python implementation of sync bn on PyTorch, and also the first one completely compatible with PyTorch. It is also efficient, only 20% to 30% slower than un-sync bn. We especially thank Jiayuan Mao for his kind contributions. For more details about the implementation and usage, refer to Synchronized-BatchNorm-PyTorch.

Dynamic scales of input for training with multiple GPUs

Different from image classification task, where the input images are resized to a fixed scale such as 224x224, it is better to keep original aspect ratios of input images for semantic segmentation and object detection networks.

So we re-implement the DataParallel module, and make it support distributing data to multiple GPUs in python dict. At the same time, the dataloader also operates differently. Now the batch size of a dataloader always equals to the number of GPUs, each element will be sent to a GPU. It is also compatible with multi-processing. Note that the file index for the multi-processing dataloader is stored on the master process, which is in contradict to our goal that each worker maintains its own file list. So we use a trick that although the master process still gives dataloader an index for __getitem__ function, we just ignore such request and send a random batch dict. Also, the multiple workers forked by the dataloader all have the same seed, you will find that multiple workers will yield exactly the same data, if we use the above-mentioned trick directly. Therefore, we add one line of code which sets the defaut seed for numpy.random before activating multiple worker in dataloader.

An Efficient and Effective Framework: UPerNet

UPerNet based on Feature Pyramid Network (FPN) and Pyramid Pooling Module (PPM), with down-sampling rate of 4, 8 and 16. It doesn't need dilated convolution, a operator that is time-and-memory consuming. Without bells and whistles, it is comparable or even better compared with PSPNet, while requires much shorter training time and less GPU memory. E.g., you cannot train a PSPNet-101 on TITAN Xp GPUs with only 12GB memory, while you can train a UPerNet-101 on such GPUs.

Thanks to the efficient network design, we will soon opensource stronger models of UPerNet based on ResNeXt that is able to run on normal GPUs.

Supported models

We split our models into encoder and decoder, where encoders are usually modified directly from classification networks, and decoders consist of final convolutions and upsampling.

Encoder: (resnetXX_dilatedYY: customized resnetXX with dilated convolutions, output feature map is 1/YY of input size.)

  • ResNet50: resnet50_dilated16, resnet50_dilated8
  • ResNet101: resnet101_dilated16, resnet101_dilated8

Coming soon:

  • ResNeXt101: resnext101_dilated16, resnext101_dilated8

Decoder:

  • c1_bilinear (1 conv + bilinear upsample)
  • c1_bilinear_deepsup (c1_blinear + deep supervision trick)
  • ppm_bilinear (pyramid pooling + bilinear upsample, see PSPNet paper for details)
  • ppm_bilinear_deepsup (ppm_bilinear + deep supervision trick)
  • upernet (pyramid pooling + FPN head)

Performance:

IMPORTANT: We use our self-trained base model on ImageNet. The model takes the input in BGR form (consistent with opencv) instead of RGB form as used by default implementation of PyTorch. The base model will be automatically downloaded when needed.

Architecture MS Test Mean IoU Pixel Accuracy Overall Score Training Time
ResNet-50_dilated8 + c1_bilinear_deepsup No34.8876.5455.71 1.38 * 20 = 27.6 hours
ResNet-50_dilated8 + ppm_bilinear_deepsup No41.2679.7360.50 1.67 * 20 = 33.4 hours
Yes42.0480.2361.14
ResNet-101_dilated8 + ppm_bilinear_deepsup No42.1980.5961.39 3.82 * 25 = 95.5 hours
Yes42.5380.9161.72
UperNet-50 No40.4479.8060.12 1.75 * 20 = 35.0 hours
Yes41.5580.2360.89
UperNet-101 No41.9880.6361.34 2.5 * 25 = 62.5 hours
Yes42.6681.0161.84
UPerNet-ResNext101 (coming soon!) ---- - hours

The speed is benchmarked on a server with 8 NVIDIA Pascal Titan Xp GPUs (12GB GPU memory), except for ResNet-101_dilated8, which is benchmarked on a server with 8 NVIDIA Tesla P40 GPUS (22GB GPU memory), because of the insufficient memory issue when using dilated conv on a very deep network.

Environment

The code is developed under the following configurations.

  • Hardware: 2-8 GPUs (with at least 12G GPU memories) (change [--num_gpus NUM_GPUS] accordingly)
  • Software: Ubuntu 16.04.3 LTS, CUDA 8.0, Python>=3.5, PyTorch>=0.4.0

Warning: We don't support the outdated Python 2 anymore. PyTorch 0.4.0 or higher is required to run the codes.

Quick start: Test on an image using our trained model

  1. Here is a simple demo to do inference on a single image:
chmod +x demo_test.sh
./demo_test.sh

This script downloads trained models and a test image, runs the test script, and saves predicted segmentation (.png) to the working directory.

  1. Input arguments: (see full input arguments via python3 test.py -h)
usage: test.py [-h] --test_img TEST_IMG --model_path MODEL_PATH                                                                                                                  [--suffix SUFFIX] [--arch_encoder ARCH_ENCODER]
               [--arch_decoder ARCH_DECODER] [--fc_dim FC_DIM]
               [--num_val NUM_VAL] [--num_class NUM_CLASS]
               [--batch_size BATCH_SIZE] [--imgSize IMGSIZE [IMGSIZE ...]]
               [--imgMaxSize IMGMAXSIZE] [--padding_constant PADDING_CONSTANT]
               [--segm_downsampling_rate SEGM_DOWNSAMPLING_RATE]
               [--result RESULT] [--gpu_id GPU_ID]

Training

  1. Download the ADE20K scene parsing dataset:
chmod +x download_ADE20K.sh
./download_ADE20K.sh
  1. Train a default network (ResNet-50_dilated8 + ppm_bilinear_deepsup). During training, checkpoints will be saved in folder ckpt.
python3 train.py --num_gpus NUM_GPUS

Train a UPerNet (e.g., ResNet-50 or ResNet-101)

python3 train.py --num_gpus NUM_GPUS --arch_encoder resnet50 --arch_decoder upernet 
--segm_downsampling_rate 4 --padding_constant 32

or

python3 train.py --num_gpus NUM_GPUS --arch_encoder resnet101 --arch_decoder upernet 
--segm_downsampling_rate 4 --padding_constant 32
  1. Input arguments: (see full input arguments via python3 train.py -h )
usage: train.py [-h] [--id ID] [--arch_encoder ARCH_ENCODER]
                [--arch_decoder ARCH_DECODER]
                [--weights_encoder WEIGHTS_ENCODER]
                [--weights_decoder WEIGHTS_DECODER] [--fc_dim FC_DIM]
                [--list_train LIST_TRAIN] [--list_val LIST_VAL]
                [--root_dataset ROOT_DATASET] [--num_gpus NUM_GPUS]
                [--batch_size_per_gpu BATCH_SIZE_PER_GPU]
                [--num_epoch NUM_EPOCH] [--epoch_iters EPOCH_ITERS]
                [--optim OPTIM] [--lr_encoder LR_ENCODER]
                [--lr_decoder LR_DECODER] [--lr_pow LR_POW] [--beta1 BETA1]
                [--weight_decay WEIGHT_DECAY]
                [--deep_sup_scale DEEP_SUP_SCALE] [--fix_bn FIX_BN]
                [--num_class NUM_CLASS] [--workers WORKERS]
                [--imgSize IMGSIZE] [--imgMaxSize IMGMAXSIZE]
                [--padding_constant PADDING_CONSTANT]
                [--segm_downsampling_rate SEGM_DOWNSAMPLING_RATE]
                [--random_flip RANDOM_FLIP] [--seed SEED] [--ckpt CKPT]
                [--disp_iter DISP_ITER]

Evaluation

  1. Evaluate a trained network on the validation set. Add --visualize option to output visualizations as shown in teaser.
python3 eval.py --id MODEL_ID --suffix SUFFIX

Evaluate a UPerNet (e.g, UPerNet-50)

python3 eval.py --id MODEL_ID --suffix SUFFIX 
--arch_encoder resnet50 --arch_decoder upernet --padding_constant 32

We also provide a multi-GPU evaluation script. It is extremely easy to use. For example, to run the evaluation codes on 8 GPUs, simply add --device 0-7. You can also choose which GPUs to use, for example, --device 0,2,4,6.

python3 eval_multipro.py --id MODEL_ID --suffix SUFFIX --device DEVICE_ID
  1. Input arguments: (see full input arguments via python3 eval.py -h )
usage: eval.py [-h] --id ID [--suffix SUFFIX] [--arch_encoder ARCH_ENCODER]
               [--arch_decoder ARCH_DECODER] [--fc_dim FC_DIM]
               [--list_val LIST_VAL] [--root_dataset ROOT_DATASET]
               [--num_val NUM_VAL] [--num_class NUM_CLASS]
               [--batch_size BATCH_SIZE] [--imgSize IMGSIZE]
               [--imgMaxSize IMGMAXSIZE] [--padding_constant PADDING_CONSTANT]
               [--ckpt CKPT] [--visualize] [--result RESULT] [--gpu_id GPU_ID]

Reference

If you find the code or pre-trained models useful, please cite the following papers:

Scene Parsing through ADE20K Dataset. B. Zhou, H. Zhao, X. Puig, S. Fidler, A. Barriuso and A. Torralba. Computer Vision and Pattern Recognition (CVPR), 2017. (http://people.csail.mit.edu/bzhou/publication/scene-parse-camera-ready.pdf)

@inproceedings{zhou2017scene,
    title={Scene Parsing through ADE20K Dataset},
    author={Zhou, Bolei and Zhao, Hang and Puig, Xavier and Fidler, Sanja and Barriuso, Adela and Torralba, Antonio},
    booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
    year={2017}
}

Unified Perceptual Parsing for Scene Understanding. T. Xiao, Y. Liu, B. Zhou, Y. Jiang, and J. Sun. arXiv preprint

@article{xiao2018unified,
  title={Unified Perceptual Parsing for Scene Understanding},
  author={Xiao, Tete and Liu, Yingcheng and Zhou, Bolei and Jiang, Yuning and Sun, Jian},
  journal={arXiv preprint},
  year={2018}
}

Semantic Understanding of Scenes through ADE20K Dataset. B. Zhou, H. Zhao, X. Puig, S. Fidler, A. Barriuso and A. Torralba. arXiv:1608.05442. (https://arxiv.org/pdf/1608.05442.pdf)

@article{zhou2016semantic,
  title={Semantic understanding of scenes through the ade20k dataset},
  author={Zhou, Bolei and Zhao, Hang and Puig, Xavier and Fidler, Sanja and Barriuso, Adela and Torralba, Antonio},
  journal={arXiv preprint arXiv:1608.05442},
  year={2016}
}