Distributed segmentation and classification of human actions using a wearable motion sensor network

A. Yang, Sameer Iyengar, S. Sastry, R. Bajcsy, P. Kuryloski, R. Jafari
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引用次数: 108

Abstract

We propose a distributed recognition method to classify human actions using a low-bandwidth wearable motion sensor network. Given a set of pre-segmented motion sequences as training examples, the algorithm simultaneously segments and classifies human actions, and it also rejects outlying actions that are not in the training set. The classification is distributedly operated on individual sensor nodes and a base station computer. We show that the distribution of multiple action classes satisfies a mixture subspace model, one sub-space for each action class. Given a new test sample, we seek the sparsest linear representation of the sample w.r.t. all training examples. We show that the dominant coefficients in the representation only correspond to the action class of the test sample, and hence its membership is encoded in the representation. We further provide fast linear solvers to compute such representation via l1-minimization. Using up to eight body sensors, the algorithm achieves state-of-the-art 98.8% accuracy on a set of 12 action categories. We further demonstrate that the recognition precision only decreases gracefully using smaller subsets of sensors, which validates the robustness of the distributed framework.
基于可穿戴运动传感器网络的人体动作分布式分割与分类
我们提出了一种基于低带宽可穿戴运动传感器网络的分布式识别方法。给定一组预先分割的动作序列作为训练样例,该算法在对人类动作进行分割和分类的同时,也拒绝不在训练集中的外围动作。分类分布在各个传感器节点和基站计算机上。我们证明了多个动作类的分布满足一个混合子空间模型,每个动作类一个子空间。给定一个新的测试样本,我们寻求样本的最稀疏线性表示,w.r.t.所有训练样本。我们表明,表示中的主导系数只对应于测试样本的动作类,因此它的隶属关系被编码在表示中。我们进一步提供了快速的线性求解器,通过11 -最小化来计算这种表示。该算法使用多达8个身体传感器,在12个动作类别中达到了98.8%的准确率。我们进一步证明,使用较小的传感器子集,识别精度只会优雅地降低,这验证了分布式框架的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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