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Comparative analysis of different approaches to target differentiation and localization with sonar

机译:声纳对目标区分和定位的不同方法的比较分析

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This study compares the performances of different methods for the differentiation and localization of commonly encountered features in indoor environments. Differentiation of such features is of interest for intelligent systems in a variety of applications such as system control based on acoustic signal detection and identification, map building, navigation, obstacle avoidance, and target tracking. Different representations of amplitude and time-of-flight measurement patterns experimentally acquired from a real sonar system are processed. The approaches compared in this study include the target differentiation algorithm, Dempster-Shafer evidential reasoning, different kinds of voting schemes, statistical pattern recognition techniques (k-nearest neighbor classifier, kernel estimator, parameterized density estimator, linear discriminant analysis, and fuzzy c-means clustering algorithm), and artificial neural networks. The neural networks are trained with different input signal representations obtained using pre-processing techniques such as discrete ordinary and fractional Fourier, Hartley and wavelet transforms, and Kohonen's self-organizing feature map. The use of neural networks trained with the back-propagation algorithm, usually with fractional Fourier transform or wavelet pre-processing results in near perfect differentiation, around 85% correct range estimation and around 95% correct azimuth estimation, which would be satisfactory in a wide range of applications. (C) 2002 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 59]
机译:这项研究比较了不同方法在室内环境中常见特征的区分和定位方面的性能。在许多应用中,例如基于声信号检测和识别的系统控制,地图构建,导航,避障和目标跟踪等,智能系统都需要对这些功能进行区分。从真实声纳系统实验获得的幅度和飞行时间测量模式的不同表示形式都将得到处理。本研究中比较的方法包括目标区分算法,Dempster-Shafer证据推理,不同的投票方案,统计模式识别技术(k近邻分类器,核估计器,参数化密度估计器,线性判别分析和模糊c-表示聚类算法)和人工神经网络。使用预处理技术(例如离散的普通和分数阶傅里叶,Hartley和小波变换以及Kohonen的自组织特征图)获得的不同输入信号表示形式训练神经网络。使用经过反向传播算法训练的神经网络,通常是分数阶傅里叶变换或小波预处理,可以实现近乎完美的微分,大约85%的正确范围估计和大约95%的正确方位估计,在较大范围内都是令人满意的应用范围。 (C)2002模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:59]

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