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Target detection and target type amp; motion classification: Comparison of feature extraction algorithms

机译:目标检测,目标类型和运动分类:特征提取算法的比较

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This paper addresses sensor network-based surveillance of target detection and target type & motion classification. The performance of target detection and classification could be compromised (e.g., due to high rates of false alarm and misclassification), because of inadequacies of feature extraction from (possibly noisy) sensor data and subsequent pattern classification over the network. A feature extraction algorithm, called symbolic dynamic filtering (SDF), is investigated for solving the target detection & classification problem. In this paper, the performance of SDF is compared with two commonly used feature extractors, namely, Cepstrum and principal component analysis (PCA)). Each of these three feature extractors is executed in conjunction with three well-known pattern classifiers, namely, k-nearest neighbor (k-NN), support vector machine (SVM), and sparse representation classification (SRC). Results of numerical simulation are presented based on a dynamic model of target maneuvering and passive sonar sensing in the ocean environment. These results show that SDF has a consistently superior performance for all tasks - target detection and target type & motion classification.
机译:本文介绍了基于传感器网络的目标检测以及目标类型和运动分类的监视。由于从(可能是嘈杂的)传感器数据中提取特征以及随后通过网络进行的模式分类的不足,可能会损害目标检测和分类的性能(例如,由于误报和误分类的发生率很高)。为了解决目标检测与分类问题,研究了一种称为符号动态滤波(SDF)的特征提取算法。在本文中,将SDF的性能与两个常用的特征提取器(倒谱和主成分分析(PCA))进行了比较。这三个特征提取器中的每一个都与三个众所周知的模式分类器(即k最近邻(k-NN),支持向量机(SVM)和稀疏表示分类(SRC))结合执行。基于海洋环境中目标机动和被动声纳传感的动态模型,给出了数值模拟的结果。这些结果表明,SDF在所有任务(目标检测以及目标类型和运动分类)上均具有始终如一的卓越性能。

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