Pyramid Scene Parsing Network

Hengshuang Zhao(Chinese University of Hong Kong), Jianping Shi(Group Sense (China)), Xiaojuan Qi(Chinese University of Hong Kong), Xiaogang Wang(Chinese University of Hong Kong), Jiaya Jia(Chinese University of Hong Kong)
Unknown
July 1, 2017
Cited by 15,406

Abstract

Scene parsing is challenging for unrestricted open vocabulary and diverse scenes. In this paper, we exploit the capability of global context information by different-region-based context aggregation through our pyramid pooling module together with the proposed pyramid scene parsing network (PSPNet). Our global prior representation is effective to produce good quality results on the scene parsing task, while PSPNet provides a superior framework for pixel-level prediction. The proposed approach achieves state-of-the-art performance on various datasets. It came first in ImageNet scene parsing challenge 2016, PASCAL VOC 2012 benchmark and Cityscapes benchmark. A single PSPNet yields the new record of mIoU accuracy 85.4% on PASCAL VOC 2012 and accuracy 80.2% on Cityscapes.


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