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首页> 外文期刊>Engineering >Motion Classification Using Proposed Principle Component Analysis Hybrid K-Means Clustering
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Motion Classification Using Proposed Principle Component Analysis Hybrid K-Means Clustering

机译:使用提议的主成分分析混合K均值聚类的运动分类

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This study investigates and acts as a trial clinical outcome for human motion and behaviour analysis in consensus of health related quality of life in Malaysia. The proposed technique was developed to analyze and access the quality of human motion that can be used in hospitals, clinics and human motion researches. It aims to establish how to?widespread the quality of life effects of human motion. Reliability and validity are needed to facilitate subject outcomes. An experiment was set up in a laboratory environment with conjunction of analyzing human motion and its behaviour. Five classifiers and algorithms were used to recognize and classify the motion patterns. The proposed PCA-K-Means clustering took 0.058 seconds for classification process. Resubstitution error for the proposed technique was 0.002 and achieved 94.67% of true positive for total confusion matrix of the classification accuracy. The proposed clustering algorithm achieved higher speed of processing, higher accuracy of performance and reliable cross validation error.
机译:这项研究调查并作为人类运动和行为分析的临床试验结果,以与马来西亚健康相关的生活质量达成共识。开发该提议的技术是为了分析和获取可用于医院,诊所和人体运动研究的人体运动质量。它旨在确定如何广泛传播人体运动对生活的影响。需要可靠性和有效性来促进受试者的结果。在实验室环境中建立了一个实验,结合分析人体运动及其行为。使用五个分类器和算法来识别和分类运动模式。提出的PCA-K-Means聚类过程花费了0.058秒进行分类。拟议技术的重新替代误差为0.002,对于总分类精度的混淆矩阵,实现了94.67%的真实阳性。提出的聚类算法实现了更高的处理速度,更高的性能精度和可靠的交叉验证错误。

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