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Segmentation of heart sound signals based on duration hidden Markov model / 生物医学工程学杂志
Article 在 Zh | WPRIM | ID: wpr-879203
Responsible library: WPRO
ABSTRACT
Heart sound segmentation is a key step before heart sound classification. It refers to the processing of the acquired heart sound signal that separates the cardiac cycle into systolic and diastolic, etc. To solve the accuracy limitation of heart sound segmentation without relying on electrocardiogram, an algorithm based on the duration hidden Markov model (DHMM) was proposed. Firstly, the heart sound samples were positionally labeled. Then autocorrelation estimation method was used to estimate cardiac cycle duration, and Gaussian mixture distribution was used to model the duration of sample-state. Next, the hidden Markov model (HMM) was optimized in the training set and the DHMM was established. Finally, the Viterbi algorithm was used to track back the state of heart sounds to obtain S
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全文: 1 索引: WPRIM 主要主题: Algorithms / Normal Distribution / Markov Chains / Heart Sounds / Electrocardiography 研究类型: Health_economic_evaluation 语言: Zh 期刊: Journal of Biomedical Engineering 年: 2020 类型: Article
全文: 1 索引: WPRIM 主要主题: Algorithms / Normal Distribution / Markov Chains / Heart Sounds / Electrocardiography 研究类型: Health_economic_evaluation 语言: Zh 期刊: Journal of Biomedical Engineering 年: 2020 类型: Article