Back to Search Start Over

Multiple-Human Parsing in the Wild

Authors :
Li, Jianshu
Zhao, Jian
Wei, Yunchao
Lang, Congyan
Li, Yidong
Sim, Terence
Yan, Shuicheng
Feng, Jiashi
Publication Year :
2017

Abstract

Human parsing is attracting increasing research attention. In this work, we aim to push the frontier of human parsing by introducing the problem of multi-human parsing in the wild. Existing works on human parsing mainly tackle single-person scenarios, which deviates from real-world applications where multiple persons are present simultaneously with interaction and occlusion. To address the multi-human parsing problem, we introduce a new multi-human parsing (MHP) dataset and a novel multi-human parsing model named MH-Parser. The MHP dataset contains multiple persons captured in real-world scenes with pixel-level fine-grained semantic annotations in an instance-aware setting. The MH-Parser generates global parsing maps and person instance masks simultaneously in a bottom-up fashion with the help of a new Graph-GAN model. We envision that the MHP dataset will serve as a valuable data resource to develop new multi-human parsing models, and the MH-Parser offers a strong baseline to drive future research for multi-human parsing in the wild.<br />Comment: The first two authors are with equal contribution

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1705.07206
Document Type :
Working Paper