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An Unsupervised Approach for Graph-based Robust Clustering of Human Gait Signatures

机译:一种无监督的人体步态群体鲁棒聚类方法

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Classification of gait abnormalities plays a key role in medical diagnosis, sports, physiotherapy and rehabilitation. We demonstrate the effectiveness of a new graph construction-based outlier detection method and and the applicability of a new parameter-free clustering approach on radar-based human gait signatures. Micro-Doppler radar-based human gait signatures of ten test subjects for five different gait types consisting of normal, simulated abnormal and assisted walks are clustered using five different clustering algorithms. The proposed algorithm outperforms existing methods both in cluster enumeration and partition and achieves an overall correct clustering rate of 92.8%. The developed method is promising for performing medical diagnosis in a robust unsupervised fashion.
机译:步态异常的分类在医学诊断,体育,物理治疗和康复中起着关键作用。我们展示了基于新的图形施工的异常检测方法的有效性以及新的无参数集群方法对基于雷达的人体步态签名的应用。基于微多普勒雷达的10个测试对象的人态步态签名,用于五种不同的步态类型,包括正常,模拟的异常和辅助散步,使用五种不同的聚类算法聚集。所提出的算法优于集群枚举和分区中的现有方法,并实现了92.8%的总体正确聚类率。开发的方法是以强大无人监督的方式执行医学诊断。

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