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Benchmarking the performance of SVMs and HMMs for accelerometer-based biometric gait recognition

机译:基于加速度计的生物识别步态识别的SVMS和HMMS的性能基准测试

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Support Vector Machines (SVMs) and Hidden Markov Models (HMMs) have been in use for numerous classification tasks in pattern recognition. HMMs can be considered as a de-facto standard in speaker recognition. For accelerometer-based biometric gait recognition these methods have also shown good classification results, which are, however, not comparable as different data sets and features have been used. The contribution of this paper is a comprehensive benchmarking of the stated methods on a single database composed using a standard cell phone. In total, more than 19 hours of accelerometer data from 36 subjects were collected during two sessions. We analyze the influence of time on the recognition rates and state the results for normal and fast walk. In addition, we compare the results obtained when different amounts of training data are used. We show that SVMs are slightly superior to HMMs yielding an Equal Error Rate (EER) of around 10%.
机译:支持向量机(SVM)和隐藏的Markov模型(HMMS)已用于模式识别中的众多分类任务。 HMMS可以被视为扬声器识别中的遗传标准。对于加速度计的生物识别步态识别,这些方法也显示出良好的分类结果,然而,由于使用的不同数据集和特征,这是不可比较的。本文的贡献是使用标准手机组成的单个数据库中所述方法的全面基准。总共收集了36个受试者的超过19小时的加速度计数据。我们分析了时间对识别率的影响,并对正常和快速行走的结果进行了状态。此外,我们可以比较在使用不同量的训练数据时获得的结果。我们表明SVMS略微优于HMMS,产生约10%的相同错误率(eer)。

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