Buffon's needle model based walker recognition with distributed binary sensor networks

Rui Ma, Qi Hao
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引用次数: 12

Abstract

This paper presents a novel distributed binary sensing paradigm for walker recognition based on a well-known geometric probability model: Buffon's needle. The research aims to achieve a low-data-throughput gait biometric system suitable for wireless sensor network applications. We presents two types of Buffon's needle (BN) models for gait recognition: (1) a classical BN model based on a static distribution of limb motions; and (2) a hidden Markov BN model based on a dynamic distribution of limb motions. These two models are used to estimate static and dynamic gait features, respectively. By utilizing the random projection principle and the information geometry of binary variables, invariant measures of gait features are developed that can be independent of the walking path of subjects. We have performed both simulations and experiments to verify the proposed sensing theories. Although the experiments are based on a pyroelectric sensor network, the proposed sensing paradigm can be extended to various sensing modalities.
基于布冯针模型的分布式二元传感器网络行走者识别
本文提出了一种基于布冯针几何概率模型的步行者识别分布式二元感知范式。该研究旨在实现适合无线传感器网络应用的低数据吞吐量步态生物识别系统。我们提出了两种用于步态识别的布冯针(Buffon’s needle, BN)模型:(1)基于肢体运动静态分布的经典布冯针模型;(2)基于肢体运动动态分布的隐马尔可夫BN模型。这两种模型分别用于估计静态和动态步态特征。利用随机投影原理和二变量信息几何,建立了独立于受试者行走路径的步态特征不变性测度。我们进行了模拟和实验来验证所提出的传感理论。虽然实验是基于热释电传感器网络,但所提出的传感范式可以扩展到各种传感模式。
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