/ContrastiveSeg

Exploring Cross-Image Pixel Contrast for Semantic Segmentation

Primary LanguagePythonMIT LicenseMIT

Exploring Cross-Image Pixel Contrast for Semantic Segmentation

Exploring Cross-Image Pixel Contrast for Semantic Segmentation,
Wenguan Wang, Tianfei Zhou, Fisher Yu, Jifeng Dai, Ender Konukoglu and Luc Van Gool
arXiv technical report (arXiv 2101.11939)

Abstract

Current semantic segmentation methods focus only on mining “local” context, i.e., dependencies between pixels within individual images, by context-aggregation modules (e.g., dilated convolution, neural attention) or structureaware optimization criteria (e.g., IoU-like loss). However, they ignore “global” context of the training data, i.e., rich semantic relations between pixels across different images. Inspired by the recent advance in unsupervised contrastive representation learning, we propose a pixel-wise contrastive framework for semantic segmentation in the fully supervised setting. The core idea is to enforce pixel embeddings belonging to a same semantic class to be more similar than embeddings from different classes. It raises a pixel-wise metric learning paradigm for semantic segmentation, by explicitly exploring the structures of labeled pixels, which are long ignored in the field. Our method can be effortlessly incorporated into existing segmentation frameworks without extra overhead during testing.

We experimentally show that, with famous segmentation models (i.e., DeepLabV3, HRNet, OCR) and backbones (i.e., ResNet, HRNet), our method brings consistent performance improvements across diverse datasets (i.e., Cityscapes, PASCALContext, COCO-Stuff).

Installation

This implementation is built on openseg.pytorch. Many thanks to the authors for the efforts.

Please follow the Getting Started for installation and dataset preparation.

Running

Cityscapes

  1. Train DeepLabV3

    bash scripts/cityscapes/deeplab/run_r_101_d_8_deeplabv3_train_contrast.sh train 'resnet101-deeplabv3-contrast'

Features (in progress)

  • Pixel-wise Contrastive Loss
  • Hard Anchor Sampling
  • Memory Bank
  • Hard Example Mining
  • Model Zoo

t-SNE Visualization

  • Pixel-wise Cross-Entropy Loss

  • Pixel-wise Contrastive Learning Objective

Citation

@article{wang2021exploring,
  title   = {Exploring Cross-Image Pixel Contrast for Semantic Segmentation},
  author  = {Wang, Wenguan and Zhou, Tianfei and Yu, Fisher and Dai, Jifeng and Konukoglu, Ender and Van Gool, Luc},
  journal = {arXiv preprint arXiv:2101.11939},
  year    = {2021}
}