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首页> 外文期刊>Indian Journal of Science and Technology >Comparative Analysis of DTW based Outlier Segregation Algorithms for Wrist Pulse Analysis
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Comparative Analysis of DTW based Outlier Segregation Algorithms for Wrist Pulse Analysis

机译:基于DTW的手腕脉冲分析离群值分离算法的比较分析

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Background/Objectives: Quantification of Wrist Pulse Signals is helpful to take benefit of ancient approach i.e. Pulse Diagnosis. The objective of this paper is to effectively segregate outliers present within wrist pulses. Methods/Statistical Analysis: This work presents modification in Dynamic Time Warping (DTW) algorithm. The existing DTW algorithm searches for an optimal path using squared Euclidean distance to measure the local distance between segments. Here, we are discussing and integrating different local distance measures such as Correlation Distance, Manhattan Distance, Kendall’s τ Distance and Canberra Distance with DTW. All the discussed local distance measures were compared with existing Euclidean based DTW algorithm on the basis of Similarity Index parameter. Findings: Results shown that Manhattan Distance and Canberra Distance based DTW algorithm was efficient in optimal path selection and segregation of segments which lose their shape characteristics. In euclidean based DTW, outlier segregation was difficult as all values lied between 0 to 1.Correlation distance and Kendall’s tau distance algorithm were inappropriate in detecting outliers as results were not matched with visual observations. It was noticed that combination of Manhattan Distance and Canberra Distance based DTW algorithm were giving better outlier finding.
机译:背景/目的:腕式脉搏信号的量化有助于利用古老的方法,即脉搏诊断。本文的目的是有效隔离手腕脉搏中存在的异常值。方法/统计分析:这项工作提出了动态时间规整(DTW)算法的修改。现有的DTW算法使用平方的欧几里德距离搜索最佳路径,以测量线段之间的局部距离。在这里,我们正在讨论和整合不同的本地距离度量,例如相关距离,曼哈顿距离,肯德尔的τ距离和堪培拉距离与DTW。在相似指数参数的基础上,将所有讨论的局部距离测度与现有的基于欧几里得的DTW算法进行比较。研究结果:结果表明,基于曼哈顿距离和堪培拉距离的DTW算法在失去形状特征的线段的最佳路径选择和隔离中是有效的。在基于欧几里得的DTW中,离群值很难分离,因为所有值都介于0到1之间。由于结果与视觉观察结果不匹配,因此相关距离和Kendall的tau距离算法不适用于检测离群值。注意到基于曼哈顿距离和堪培拉距离的DTW算法的组合给出了更好的离群值发现。

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