Authors
Wenguan Wang, Tianfei Zhou, Fisher Yu, Jifeng Dai, Ender Konukoglu, Luc Van Gool
Publication date
2021
Conference
Proceedings of the IEEE/CVF international conference on computer vision
Pages
7303-7313
Description
Current semantic segmentation methods focus only on mining" local" context, ie, dependencies between pixels within individual images, by context-aggregation modules (eg, dilated convolution, neural attention) or structure-aware optimization criteria (eg, IoU-like loss). However, they ignore" global" context of the training data, ie, rich semantic relations between pixels across different images. Inspired by recent advance in unsupervised contrastive representation learning, we propose a pixel-wise contrastive algorithm 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 were rarely explored before. Our method can be effortlessly incorporated into existing segmentation frameworks without extra overhead during testing. We experimentally show that, with famous segmentation models (ie, DeepLabV3, HRNet, OCR) and backbones (ie, ResNet, HRNet), our method brings performance improvements across diverse datasets (ie, Cityscapes, PASCAL-Context, COCO-Stuff, CamVid). We expect this work will encourage our community to rethink the current de facto training paradigm in semantic segmentation.
Total citations
202120222023202432137212122
Scholar articles
W Wang, T Zhou, F Yu, J Dai, E Konukoglu, L Van Gool - Proceedings of the IEEE/CVF international conference …, 2021