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 CGA Clustering Based Vector Quantization Approach for Human Activity Recognition Using Discrete Hidden Markov Model
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Tác giả hoặc Nhóm tác giả: Nguyen Nang Hung Van, Pham Minh Tuan, Tachibana Kanta
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Nơi đăng: The 13th international symposium on advanced technology (ISAT 13); Số: 1;Từ->đến trang: 131-135;Năm: 2014
Lĩnh vực: Công nghệ thông tin; Loại: Bài báo khoa học; Thể loại: Quốc tế
TÓM TẮT
Activity recognition has been paid much consideration by many scientists over the world. However, the conventional research results need to be improved because of the complexity and unstability of object recognition. Especially with human activity recognition (HAR) in 3-dimensional space, the vector quantization based on k-means was not able to cluster two objects rotating around a common point but is not same a plane because they have the same cluster centroid. In this paper, we propose a new method of vector quantization (VQ) performance optimally distribute VQ codebook components on Hidden Markov Model (HMM) state. This proposed method is carried out through two steps. First, the proposed method use Conformal Geometric Algebra (CGA) clustering algorithms to optimize VQ. Then, the proposed method uses discrete HMM to recognize the human activity. The experimental result with the CMU graphics lab motion capture database shows that the proposed method is better than conventional method.
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ABSTRACT
Activity recognition has been paid much consideration by many scientists over the world. However, the conventional research results need to be improved because of the complexity and unstability of object recognition. Especially with human activity recognition (HAR) in 3-dimensional space, the vector quantization based on k-means was not able to cluster two objects rotating around a common point but is not same a plane because they have the same cluster centroid. In this paper, we propose a new method of vector quantization (VQ) performance optimally distribute VQ codebook components on Hidden Markov Model (HMM) state. This proposed method is carried out through two steps. First, the proposed method use Conformal Geometric Algebra (CGA) clustering algorithms to optimize VQ. Then, the proposed method uses discrete HMM to recognize the human activity. The experimental result with the CMU graphics lab motion capture database shows that the proposed method is better than conventional method.
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