Human Body Multiple Parts Parsing for Person Reidentification Based on Xception

A mass of information grows explosively in socially networked industries, as extensive data, such as images and texts, is captured by vast sensors. Pedestrians are the main initiators of various activities in socially networked industries, hence, it is very important to quickly obtain relevant infor...

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Main Authors: Sibo Qiao, Shanchen Pang, Xue Zhai, Min Wang, Shihang Yu, Tong Ding, Xiaochun Cheng
Format: Article
Language:English
Published: Atlantis Press 2020-12-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/125949984/view
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spelling doaj-fda52f44671146398089ce521c3dbe812021-02-01T15:03:50ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832020-12-0114110.2991/ijcis.d.201222.001Human Body Multiple Parts Parsing for Person Reidentification Based on XceptionSibo QiaoShanchen PangXue ZhaiMin WangShihang YuTong DingXiaochun ChengA mass of information grows explosively in socially networked industries, as extensive data, such as images and texts, is captured by vast sensors. Pedestrians are the main initiators of various activities in socially networked industries, hence, it is very important to quickly obtain relevant information of pedestrians from a large number of images. Person reidentification is an image retrieval technology, which can immediately retrieve target person in abundant images. However, due to the complexity of many important factors especially of changeful poses, occlusion and background clutter, person reidentification still faces extensive challenges. Considering these challenges, robust and distinguishing person representations are hard to be extracted well to identify different people. In this paper, to obtain more discriminative representations, we propose a human body multiple parts parsing (BMPP) architecture, which captures local pixel-level representations from body parts and global representations from whole body simultaneously. Additionally, a straightforward preprocessing method is adopted in this paper to improve the resolution of images in person reidentification benchmarks. To eliminate the negative effects of changeful poses, a simple yet effective representation fusion strategy is used for the original and horizontally flipped images to get final representations. Experimental results indicate that the method proposed in this article attains superior performance to most of state-of-the-art methods on CUHK03 and Market-1501.https://www.atlantis-press.com/article/125949984/viewPerson reidentificationSemantic parsingGlobal representationsLocal representations
collection DOAJ
language English
format Article
sources DOAJ
author Sibo Qiao
Shanchen Pang
Xue Zhai
Min Wang
Shihang Yu
Tong Ding
Xiaochun Cheng
spellingShingle Sibo Qiao
Shanchen Pang
Xue Zhai
Min Wang
Shihang Yu
Tong Ding
Xiaochun Cheng
Human Body Multiple Parts Parsing for Person Reidentification Based on Xception
International Journal of Computational Intelligence Systems
Person reidentification
Semantic parsing
Global representations
Local representations
author_facet Sibo Qiao
Shanchen Pang
Xue Zhai
Min Wang
Shihang Yu
Tong Ding
Xiaochun Cheng
author_sort Sibo Qiao
title Human Body Multiple Parts Parsing for Person Reidentification Based on Xception
title_short Human Body Multiple Parts Parsing for Person Reidentification Based on Xception
title_full Human Body Multiple Parts Parsing for Person Reidentification Based on Xception
title_fullStr Human Body Multiple Parts Parsing for Person Reidentification Based on Xception
title_full_unstemmed Human Body Multiple Parts Parsing for Person Reidentification Based on Xception
title_sort human body multiple parts parsing for person reidentification based on xception
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2020-12-01
description A mass of information grows explosively in socially networked industries, as extensive data, such as images and texts, is captured by vast sensors. Pedestrians are the main initiators of various activities in socially networked industries, hence, it is very important to quickly obtain relevant information of pedestrians from a large number of images. Person reidentification is an image retrieval technology, which can immediately retrieve target person in abundant images. However, due to the complexity of many important factors especially of changeful poses, occlusion and background clutter, person reidentification still faces extensive challenges. Considering these challenges, robust and distinguishing person representations are hard to be extracted well to identify different people. In this paper, to obtain more discriminative representations, we propose a human body multiple parts parsing (BMPP) architecture, which captures local pixel-level representations from body parts and global representations from whole body simultaneously. Additionally, a straightforward preprocessing method is adopted in this paper to improve the resolution of images in person reidentification benchmarks. To eliminate the negative effects of changeful poses, a simple yet effective representation fusion strategy is used for the original and horizontally flipped images to get final representations. Experimental results indicate that the method proposed in this article attains superior performance to most of state-of-the-art methods on CUHK03 and Market-1501.
topic Person reidentification
Semantic parsing
Global representations
Local representations
url https://www.atlantis-press.com/article/125949984/view
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