Learning directional co-occurrence for human action classification
Spatio-temporal interest point (STIP) based methods have shown promising results for human action classification. However, state-of-art works typically utilize bag-of-visual words (BoVW), which focuses on the statistical distribution of features but ignores their inherent structural relationships. T...
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sg-smu-ink.sis_research-54672019-11-28T07:46:47Z Learning directional co-occurrence for human action classification LIU, Hong LIU, Mengyuan SUN, Qianru Spatio-temporal interest point (STIP) based methods have shown promising results for human action classification. However, state-of-art works typically utilize bag-of-visual words (BoVW), which focuses on the statistical distribution of features but ignores their inherent structural relationships. To solve this problem, a descriptor, namely directional pair-wise feature (DPF), is proposed to encode the mutual direction information between pairwise words, aiming at adding more spatial discriminant to BoVW. Firstly, STIP features are extracted and classified into a set of labeled words. Then in each frame, the DPF is constructed for every pair of words with different labels, according to their assigned directional vector. Finally, DPFs are quantized to be a probability histogram as a representation of human action. The proposed method is evaluated on two challenging datasets, Rochester and UT-interaction, and the results based on chi-squared kernel SVM classifiers confirm that our method can classify human actions with high accuracies. 2014-05-09T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4464 info:doi/10.1109/ICASSP.2014.6853794 https://ink.library.smu.edu.sg/context/sis_research/article/5467/viewcontent/LEARNINGDIRECTIONALCO_OCCURRENCEFORHUMANACTIONCLASSIFICATION.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Human action recognition bag-of-word co-occurrence Computer Engineering Software Engineering |
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Human action recognition bag-of-word co-occurrence Computer Engineering Software Engineering LIU, Hong LIU, Mengyuan SUN, Qianru Learning directional co-occurrence for human action classification |
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Spatio-temporal interest point (STIP) based methods have shown promising results for human action classification. However, state-of-art works typically utilize bag-of-visual words (BoVW), which focuses on the statistical distribution of features but ignores their inherent structural relationships. To solve this problem, a descriptor, namely directional pair-wise feature (DPF), is proposed to encode the mutual direction information between pairwise words, aiming at adding more spatial discriminant to BoVW. Firstly, STIP features are extracted and classified into a set of labeled words. Then in each frame, the DPF is constructed for every pair of words with different labels, according to their assigned directional vector. Finally, DPFs are quantized to be a probability histogram as a representation of human action. The proposed method is evaluated on two challenging datasets, Rochester and UT-interaction, and the results based on chi-squared kernel SVM classifiers confirm that our method can classify human actions with high accuracies. |
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text |
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LIU, Hong LIU, Mengyuan SUN, Qianru |
author_facet |
LIU, Hong LIU, Mengyuan SUN, Qianru |
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LIU, Hong |
title |
Learning directional co-occurrence for human action classification |
title_short |
Learning directional co-occurrence for human action classification |
title_full |
Learning directional co-occurrence for human action classification |
title_fullStr |
Learning directional co-occurrence for human action classification |
title_full_unstemmed |
Learning directional co-occurrence for human action classification |
title_sort |
learning directional co-occurrence for human action classification |
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Institutional Knowledge at Singapore Management University |
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2014 |
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https://ink.library.smu.edu.sg/sis_research/4464 https://ink.library.smu.edu.sg/context/sis_research/article/5467/viewcontent/LEARNINGDIRECTIONALCO_OCCURRENCEFORHUMANACTIONCLASSIFICATION.pdf |
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