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Hybrid Genetic Algorithm Based Optimization of Coupled HMM for Complex Interacting Processes Recognition 被引量:1
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作者 刘江华 Chen +2 位作者 Jiapin Cheng Junshi 《High Technology Letters》 EI CAS 2004年第3期82-85,共4页
Coupled Hidden Markov Model (CHMM) is the extension of traditional HMM, which is mainly used for complex interactive process modeling such as two-hand gestures. However, the problems of finding optimal model parameter... Coupled Hidden Markov Model (CHMM) is the extension of traditional HMM, which is mainly used for complex interactive process modeling such as two-hand gestures. However, the problems of finding optimal model parameter are still of great interest to the researches in this area. This paper proposes a hybrid genetic algorithm (HGA) for the CHMM training. Chaos is used to initialize GA and used as mutation operator. Experiments on Chinese TaiChi gestures show that standard GA (SGA) based CHMM training is superior to Maximum Likelihood (ML) HMM training. HGA approach has the highest recognition rate of 98.0769%, then 96.1538% for SGA. The last one is ML method, only with a recognition rate of 69.2308%. 展开更多
关键词 混合基因算法 最优化 CHMM HMM 复杂交互式处理模型 手势识别 信号分析
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