HMM-based people counting
碩士 === 國立清華大學 === 電機工程學系 === 101 === This paper presents a new people counting approach using ellipse detection , HOG upper body detection, HMM and tracking. First of all, the foreground object silhouettes are extracted described as blobs. The linkage is generated by analyzing the blob information b...
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ndltd-TW-101NTHU54420032015-10-13T21:55:44Z http://ndltd.ncl.edu.tw/handle/13179025336191393905 HMM-based people counting 基於隱藏式馬可夫模型的人流計數技術 Chen, Pin Han 陳品翰 碩士 國立清華大學 電機工程學系 101 This paper presents a new people counting approach using ellipse detection , HOG upper body detection, HMM and tracking. First of all, the foreground object silhouettes are extracted described as blobs. The linkage is generated by analyzing the blob information between blobs and the relationship between pedestrian. We can get the object blobs previous states by analyzing the linkage information in the region of interest. Then we have the information of the objects which are merged or separated. To count the objects in the blob, we use ellipse detection and HOG upper body detection to get the number of objects in the blob. We use ellipse detection by matching the area and fitting the outline of the blobs with the ellipse, and then we use HOG upper body detection to detect the position of the pedestrian if the blob information is not enough. To solve occlusion problem, we use HMM to model the variations blob states on each linkage, which can be used to find the most matching hypothesis to determine the people number. Different from previous methods, we analyze the image sequences from the objects entering the scene till the objects exiting the scene. Compare with the specific frames analyzing way, we have better accuracy. In the experiments, we illustrate the effectiveness of our method. Huang, Chung Lin Jong, Tai Lang 黃仲陵 鐘太郎 2012 學位論文 ; thesis 48 zh-TW |
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碩士 === 國立清華大學 === 電機工程學系 === 101 === This paper presents a new people counting approach using ellipse detection , HOG upper body detection, HMM and tracking. First of all, the foreground object silhouettes are extracted described as blobs. The linkage is generated by analyzing the blob information between blobs and the relationship between pedestrian. We can get the object blobs previous states by analyzing the linkage information in the region of interest. Then we have the information of the objects which are merged or separated. To count the objects in the blob, we use ellipse detection and HOG upper body detection to get the number of objects in the blob. We use ellipse detection by matching the area and fitting the outline of the blobs with the ellipse, and then we use HOG upper body detection to detect the position of the pedestrian if the blob information is not enough. To solve occlusion problem, we use HMM to model the variations blob states on each linkage, which can be used to find the most matching hypothesis to determine the people number. Different from previous methods, we analyze the image sequences from the objects entering the scene till the objects exiting the scene. Compare with the specific frames analyzing way, we have better accuracy. In the experiments, we illustrate the effectiveness of our method.
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author2 |
Huang, Chung Lin |
author_facet |
Huang, Chung Lin Chen, Pin Han 陳品翰 |
author |
Chen, Pin Han 陳品翰 |
spellingShingle |
Chen, Pin Han 陳品翰 HMM-based people counting |
author_sort |
Chen, Pin Han |
title |
HMM-based people counting |
title_short |
HMM-based people counting |
title_full |
HMM-based people counting |
title_fullStr |
HMM-based people counting |
title_full_unstemmed |
HMM-based people counting |
title_sort |
hmm-based people counting |
publishDate |
2012 |
url |
http://ndltd.ncl.edu.tw/handle/13179025336191393905 |
work_keys_str_mv |
AT chenpinhan hmmbasedpeoplecounting AT chénpǐnhàn hmmbasedpeoplecounting AT chenpinhan jīyúyǐncángshìmǎkěfūmóxíngderénliújìshùjìshù AT chénpǐnhàn jīyúyǐncángshìmǎkěfūmóxíngderénliújìshùjìshù |
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1718070444736643072 |