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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Target differentiation with simple infrared sensors using statistical pattern recognition techniques
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Target differentiation with simple infrared sensors using statistical pattern recognition techniques

机译:使用统计模式识别技术的简单红外传感器进行目标区分

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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. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:这项研究使用简单的红外线(IR)传感器比较了各种统计模式识别技术在区分室内环境中常见特征(可能具有不同的表面特性)方面的性能。从这种传感器获得的强度测量高度依赖于反射特征的位置,几何形状和表面特性,其方式无法通过简单的分析关系来表示,因此使区分过程复杂化。我们基于来自不同目标的角度红外强度扫描的参数构造特征向量,以确定其几何形状和/或表面类型。将法线分类器与三种成分混合使用,可以正确区分具有不同表面特性的三种类型的几何图形,从而在几何图形区分中获得最佳性能(100%)。参数微分可正确识别相同平面几何形状的六种不同表面类型,从而获得最佳的表面微分率(100%)。但是,如果包含更多表面,则无法保持该速率。结果表明,目标的几何特性比其表面特性更具特色,并且表面识别是区分的限制因素。结果表明,与适当的处理和识别技术结合使用时,简单的红外传感器可比通常使用的此类设备提取更多的信息。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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