# Rethinking BiSeNet For Real-time Semantic Segmentation[[PDF](https://openaccess.thecvf.com/content/CVPR2021/papers/Fan_Rethinking_BiSeNet_for_Real-Time_Semantic_Segmentation_CVPR_2021_paper.pdf)] [![License: MIT](https://img.shields.io/badge/License-MIT-green.svg)](https://opensource.org/licenses/MIT) Mingyuan Fan, Shenqi Lai, Junshi Huang, Xiaoming Wei, Zhenhua Chai, Junfeng Luo, Xiaolin Wei In CVPR 2021. ## Overview

overview-of-our-method
Speed-Accuracy performance comparison on the Cityscapes test set

We present STDC-Seg, an mannully designed semantic segmentation network with not only state-of-the-art performance but also faster speed than current methods. Highlights: * **Short-Term Dense Concatenation Net**: A task-specific network for dense prediction task. * **Detail Guidance**: encode spatial information without harming inference speed. * **SOTA**: STDC-Seg achieves extremely fast speed (over 45\% faster than the closest automatically designed competitor on CityScapes) and maintains competitive accuracy. - see our Cityscapes test set submission [STDC1-Seg50](https://www.cityscapes-dataset.com/anonymous-results/?id=805e22f63fc53d1d0726cefdfe12527275afeb58d7249393bec6f483c3342b3b) [STDC1-Seg75](https://www.cityscapes-dataset.com/anonymous-results/?id=6bd0def75600fd0f1f411101fe2bbb0a2be5dba5c74e2f7d7f50eecc23bae64c) [STDC2-Seg50](https://www.cityscapes-dataset.com/anonymous-results/?id=b009a595f0d4e10a7f10ac25f29962b67995dc11b059f0c733ddd212a56b9ee0) [STDC2-Seg75](https://www.cityscapes-dataset.com/anonymous-results/?id=9012a16cdeb9d52aaa9ad5fb9cc1c6284efe8a3daecee85b4413284364ff3f45). - Here is our speed-accuracy comparison on Cityscapes test&val set.

Cityscapes

## Methods

stdc-architecture

stdcseg-artchitecture
Overview of the STDC Segmentation network

## Prerequisites - Pytorch 1.1 - Python 3.5.6 - NVIDIA GPU - TensorRT v5.1.5.0 (Only need for testing inference speed) This repository has been trained on Tesla V100. Configurations (e.g batch size, image patch size) may need to be changed on different platforms. Also, for fair competition, we test the inference speed on NVIDIA GTX 1080Ti. ## Installation * Clone this repo: ```bash git clone https://github.com/MichaelFan01/STDC-Seg.git cd STDC-Seg ``` * Install dependencies: ```bash pip install -r requirements.txt ``` * Install [PyCuda](https://wiki.tiker.net/PyCuda/Installation) which is a dependency of TensorRT. * Install [TensorRT](https://github.com/NVIDIA/TensorRT) (v5.1.5.0): a library for high performance inference on NVIDIA GPUs with [Python API](https://docs.nvidia.com/deeplearning/sdk/tensorrt-api/index.html#python). ## Usage ### 0. Prepare the dataset * Download the [leftImg8bit_trainvaltest.zip](https://www.cityscapes-dataset.com/file-handling/?packageID=3) and [gtFine_trainvaltest.zip](https://www.cityscapes-dataset.com/file-handling/?packageID=1) from the Cityscapes. * Link data to the `data` dir. ```bash ln -s /path_to_data/cityscapes/gtFine data/gtFine ln -s /path_to_data/leftImg8bit data/leftImg8bit ``` ### 1. Train STDC-Seg Note: Backbone STDCNet813 denotes STDC1, STDCNet1446 denotes STDC2. * Train STDC1Seg: ```bash export CUDA_VISIBLE_DEVICES=0,1,2 python -m torch.distributed.launch \ --nproc_per_node=3 train.py \ --respath checkpoints/train_STDC1-Seg/ \ --backbone STDCNet813 \ --mode train \ --n_workers_train 12 \ --n_workers_val 1 \ --max_iter 60000 \ --use_boundary_8 True \ --pretrain_path checkpoints/STDCNet813M_73.91.tar ``` * Train STDC2Seg: ```bash export CUDA_VISIBLE_DEVICES=0,1,2 python -m torch.distributed.launch \ --nproc_per_node=3 train.py \ --respath checkpoints/train_STDC2-Seg/ \ --backbone STDCNet1446 \ --mode train \ --n_workers_train 12 \ --n_workers_val 1 \ --max_iter 60000 \ --use_boundary_8 True \ --pretrain_path checkpoints/STDCNet1446_76.47.tar ``` We will save the model's params in model_maxmIOU50.pth for input resolution 512x1024,and model_maxmIOU75.pth for input resolution 768 x 1536. ImageNet Pretrained STDCNet Weights for training and Cityscapes trained STDC-Seg weights for evaluation: BaiduYun Link: https://pan.baidu.com/s/1OdMsuQSSiK1EyNs6_KiFIw Password: q7dt GoogleDrive Link:[https://drive.google.com/drive/folders/1wROFwRt8qWHD4jSo8Zu1gp1d6oYJ3ns1?usp=sharing](https://drive.google.com/drive/folders/1wROFwRt8qWHD4jSo8Zu1gp1d6oYJ3ns1?usp=sharing) ### ### 2. Evaluation Here we use our pretrained STDCSeg as an example for the evaluation. * Choose the evaluation model in evaluation.py: ```python #STDC1-Seg50 mIoU 0.7222 evaluatev0('./checkpoints/STDC1-Seg/model_maxmIOU50.pth', dspth='./data', backbone='STDCNet813', scale=0.5, use_boundary_2=False, use_boundary_4=False, use_boundary_8=True, use_boundary_16=False) #STDC1-Seg75 mIoU 0.7450 evaluatev0('./checkpoints/STDC1-Seg/model_maxmIOU75.pth', dspth='./data', backbone='STDCNet813', scale=0.75, use_boundary_2=False, use_boundary_4=False, use_boundary_8=True, use_boundary_16=False) #STDC2-Seg50 mIoU 0.7424 evaluatev0('./checkpoints/STDC2-Seg/model_maxmIOU50.pth', dspth='./data', backbone='STDCNet1446', scale=0.5, use_boundary_2=False, use_boundary_4=False, use_boundary_8=True, use_boundary_16=False) #STDC2-Seg75 mIoU 0.7704 evaluatev0('./checkpoints/STDC2-Seg/model_maxmIOU75.pth', dspth='./data', backbone='STDCNet1446', scale=0.75, use_boundary_2=False, use_boundary_4=False, use_boundary_8=True, use_boundary_16=False) ``` * Start the evaluation process: ```bash CUDA_VISIBLE_DEVICES=0 python evaluation.py ``` ### 3. Latency #### 3.0 Latency measurement tools * If you have successfully installed [TensorRT](https://github.com/chenwydj/FasterSeg#installation), you will automatically use TensorRT for the following latency tests (see [function](https://github.com/chenwydj/FasterSeg/blob/master/tools/utils/darts_utils.py#L167) here). * Otherwise you will be switched to use Pytorch for the latency tests (see [function](https://github.com/chenwydj/FasterSeg/blob/master/tools/utils/darts_utils.py#L184) here). #### 3.1 Measure the latency of the FasterSeg * Choose the evaluation model in run_latency: ```python # STDC1Seg-50 250.4FPS on NVIDIA GTX 1080Ti backbone = 'STDCNet813' methodName = 'STDC1-Seg' inputSize = 512 inputScale = 50 inputDimension = (1, 3, 512, 1024) # STDC1Seg-75 126.7FPS on NVIDIA GTX 1080Ti backbone = 'STDCNet813' methodName = 'STDC1-Seg' inputSize = 768 inputScale = 75 inputDimension = (1, 3, 768, 1536) # STDC2Seg-50 188.6FPS on NVIDIA GTX 1080Ti backbone = 'STDCNet1446' methodName = 'STDC2-Seg' inputSize = 512 inputScale = 50 inputDimension = (1, 3, 512, 1024) # STDC2Seg-75 97.0FPS on NVIDIA GTX 1080Ti backbone = 'STDCNet1446' methodName = 'STDC2-Seg' inputSize = 768 inputScale = 75 inputDimension = (1, 3, 768, 1536) ``` * Run the script: ```bash CUDA_VISIBLE_DEVICES=0 python run_latency.py ``` ## Citation ``` @InProceedings{Fan_2021_CVPR, author = {Fan, Mingyuan and Lai, Shenqi and Huang, Junshi and Wei, Xiaoming and Chai, Zhenhua and Luo, Junfeng and Wei, Xiaolin}, title = {Rethinking BiSeNet for Real-Time Semantic Segmentation}, booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, month = {June}, year = {2021}, pages = {9716-9725} } ``` ## Acknowledgement * Segmentation training and evaluation code from [BiSeNet](https://github.com/CoinCheung/BiSeNet). * Latency measurement from the [Faster-Seg](https://github.com/VITA-Group/FasterSeg).