首页> 外文会议>2011 IEEE/RSJ International Conference on Intelligent Robots and Systems >Nonlinear structure of escape-times to falls for a passive dynamic walker on an irregular slope: Anomaly detection using multi-class support vector machine and latent state extraction by canonical correlation analysis
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Nonlinear structure of escape-times to falls for a passive dynamic walker on an irregular slope: Anomaly detection using multi-class support vector machine and latent state extraction by canonical correlation analysis

机译:被动动力助行器在不规则斜坡上跌落时间的非线性结构:使用多类支持向量机的异常检测和典范相关性分析的潜在状态提取

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Falls that occur during walking are a significant problem from the viewpoints of both medicine and robotics engineering. It is very important to predict falls in order to prevent the falls or minimize the ensuing damage from them. In this study, we investigate the structure of the escape-times from walking to falling of a passive dynamic biped walker on a slope in a 2D plane with irregularities. We find that the structure lies on a manifold with high nonlinearity in state space that cannot be analyzed by linear methods under the assumption of a Gaussian distribution. Therefore, we first apply an extension of the support vector machine (SVM) to characterize its nonlinear structure, which enables us to predict imminent falls. Next, we find a latent space which describes the essential dynamics of the passive walker in a lower-dimensional space using canonical correlation analysis (CCA). There is wide applicability of this work for monitoring walking anomalies of both robots and human beings.
机译:从医学和机器人工程学的角度来看,行走过程中发生的跌落都是一个重大问题。预测跌倒非常重要,以防止跌倒或最大程度地减少跌落带来的损失。在这项研究中,我们研究了在具有不规则性的2D平面的斜坡上,被动动态Biped步行者从步行到跌落的逃逸时间结构。我们发现,该结构位于状态空间中具有高度非线性的流形上,在高斯分布的假设下,该线性无法通过线性方法进行分析。因此,我们首先应用支持向量机(SVM)的扩展来表征其非线性结构,这使我们能够预测即将发生的跌倒。接下来,我们找到了一个潜在空间,该空间使用规范相关分析(CCA)描述了低维空间中被动式助行器的基本动力学。这项工作在监视机器人和人类的步行异常方面具有广泛的适用性。

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