Target differentiation with simple infrared sensors using statistical pattern recognition techniques

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摘要

This study compares the performances of various statistical pattern recognition techniques for the differentiation of commonly encountered features in indoor environments, possibly with different surface properties, using simple infrared (IR) sensors. The intensity measurements obtained from such sensors are highly dependent on the location, geometry, and surface properties of the reflecting feature in a way that cannot be represented by a simple analytical relationship, therefore complicating the differentiation process. We construct feature vectors based on the parameters of angular IR intensity scans from different targets to determine their geometry and/or surface type. Mixture of normals classifier with three components correctly differentiates three types of geometries with different surface properties, resulting in the best performance (100%) in geometry differentiation. Parametric differentiation correctly identifies six different surface types of the same planar geometry, resulting in the best surface differentiation rate (100%). However, this rate is not maintained with the inclusion of more surfaces. The results indicate that the geometrical properties of the targets are more distinctive than their surface properties, and surface recognition is the limiting factor in differentiation. The results demonstrate that simple IR sensors, when coupled with appropriate processing and recognition techniques, can be used to extract substantially more information than such devices are commonly employed for.

论文关键词:Target differentiation,Geometry differentiation,Surface differentiation,Statistical pattern recognition,Feature extraction,Infrared sensors,Optical sensing

论文评审过程:Received 22 March 2006, Revised 1 November 2006, Accepted 3 January 2007, Available online 24 January 2007.

论文官网地址:https://doi.org/10.1016/j.patcog.2007.01.007