Dynamic human object recognition by combining color and depth information with a clothing image histogram

Human object detection, tracking, and recognition have applications in many areas, such as in the development of assistance robots and intelligent monitoring systems. The emergence of an RGB-D camera, namely the Kinect v2, has simplified the process of human object detection and tracking. Color spac...

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Main Authors: Yen-Han Wang, Tzu-Wei Wang, Jia-Yush Yen, Fu-Cheng Wang
Format: Article
Language:English
Published: SAGE Publishing 2019-02-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881419828105
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spelling doaj-ba7f710145d6430ca4cab62d00978f452020-11-25T03:04:14ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142019-02-011610.1177/1729881419828105Dynamic human object recognition by combining color and depth information with a clothing image histogramYen-Han WangTzu-Wei WangJia-Yush YenFu-Cheng WangHuman object detection, tracking, and recognition have applications in many areas, such as in the development of assistance robots and intelligent monitoring systems. The emergence of an RGB-D camera, namely the Kinect v2, has simplified the process of human object detection and tracking. Color space methods are dependent on lighting conditions. Because skeleton-tracking algorithms are based on depth images, they are light invariant relative to color space methods. However, skeleton information may sometimes be incorrect or become lost. An algorithm for human-target recognition is thus required. Therefore, this study proposes a human-target tracking and recognition system combining RGB images, depth images, body index, and skeleton information. The system first extracts the color information of five body parts (two upper arms, the torso, and two thighs) using color, depth, and skeleton information. The system then analyzes the color information using a mixed nine-dimensional histogram and single-color analysis method. The algorithm also includes overlap detection during the process of human-target tracking to prevent misidentification caused by occlusion. To test the proposed system, various scenarios were carefully designed to simulate the extremely complex environmental changes characteristic of the real world. Furthermore, the dynamic statistical method of event statistics was used to collect results. Experiments revealed that the proposed method is robust under varying lighting conditions and increases the success rate for individuals wearing similar clothing with monochrome colors.https://doi.org/10.1177/1729881419828105
collection DOAJ
language English
format Article
sources DOAJ
author Yen-Han Wang
Tzu-Wei Wang
Jia-Yush Yen
Fu-Cheng Wang
spellingShingle Yen-Han Wang
Tzu-Wei Wang
Jia-Yush Yen
Fu-Cheng Wang
Dynamic human object recognition by combining color and depth information with a clothing image histogram
International Journal of Advanced Robotic Systems
author_facet Yen-Han Wang
Tzu-Wei Wang
Jia-Yush Yen
Fu-Cheng Wang
author_sort Yen-Han Wang
title Dynamic human object recognition by combining color and depth information with a clothing image histogram
title_short Dynamic human object recognition by combining color and depth information with a clothing image histogram
title_full Dynamic human object recognition by combining color and depth information with a clothing image histogram
title_fullStr Dynamic human object recognition by combining color and depth information with a clothing image histogram
title_full_unstemmed Dynamic human object recognition by combining color and depth information with a clothing image histogram
title_sort dynamic human object recognition by combining color and depth information with a clothing image histogram
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2019-02-01
description Human object detection, tracking, and recognition have applications in many areas, such as in the development of assistance robots and intelligent monitoring systems. The emergence of an RGB-D camera, namely the Kinect v2, has simplified the process of human object detection and tracking. Color space methods are dependent on lighting conditions. Because skeleton-tracking algorithms are based on depth images, they are light invariant relative to color space methods. However, skeleton information may sometimes be incorrect or become lost. An algorithm for human-target recognition is thus required. Therefore, this study proposes a human-target tracking and recognition system combining RGB images, depth images, body index, and skeleton information. The system first extracts the color information of five body parts (two upper arms, the torso, and two thighs) using color, depth, and skeleton information. The system then analyzes the color information using a mixed nine-dimensional histogram and single-color analysis method. The algorithm also includes overlap detection during the process of human-target tracking to prevent misidentification caused by occlusion. To test the proposed system, various scenarios were carefully designed to simulate the extremely complex environmental changes characteristic of the real world. Furthermore, the dynamic statistical method of event statistics was used to collect results. Experiments revealed that the proposed method is robust under varying lighting conditions and increases the success rate for individuals wearing similar clothing with monochrome colors.
url https://doi.org/10.1177/1729881419828105
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AT jiayushyen dynamichumanobjectrecognitionbycombiningcoloranddepthinformationwithaclothingimagehistogram
AT fuchengwang dynamichumanobjectrecognitionbycombiningcoloranddepthinformationwithaclothingimagehistogram
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