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Anomaly Based Sea-Surface Small Target Detection Using K-Nearest Neighbor Classification

机译:基于异常的海面小目标检测,使用k-最近邻分类

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摘要

Sea-surface small target detection is always a difficult problem in high-resolution maritime ubiquitous radars for complex characteristics of sea clutter, weak target returns, and diversity of targets. Multiple features extracted from radar returns in different domains have ability but not enough to solely distinguish radar returns with target from sea clutter. Joint exploitation of multiple features becomes the key to improve detection performance. In this article, the K-nearest neighbor (KNN) algorithm and anomaly detection idea are cooperated to develop a novel sea-surface target detection method in the feature space spanned by the eight existing salient features. The detection is realized by the anomaly detection followed by a specially designed KNN-based classifier with a controllable false alarm rate. In the anomaly detection, a decision region is determined by the hyper-spherical coverage of the training set of sea clutter that is sufficient and ergodic in the feature space. The KNN-based classifier is designed based on the training sample set of sea clutter and the training sample set of simulated target returns plus sea clutter that is sufficient but nonergodic, by joint usage of feature weighting, neighbor weighting, and distance weighting. The novel method is validated by the two open and recognized IPIX and CSIR radar databases for sea-surface small target detection. The results show that it provides significant performance improvement in comparison with the existing multiple-feature-based detection methods, owing to the fact that the novel method avoids the dimension restriction and feature compression loss in the existing methods.
机译:海面小目标检测始终是海杂波复杂特征的高分辨率海上无处不在的雷达难题,弱目标返回和目标的多样性。在不同域中从雷达返回中提取的多个特征具有能力,但不足以仅区分雷达与来自海杂波的目标的雷达回报。对多个功能的联合开发成为提高检测性能的关键。在本文中,K最近邻(KNN)算法和异常检测思想被协作,以在八个现有突出特征跨越的特征空间中开发新的海面目标检测方法。通过异常检测实现检测,然后通过具有可控误报率的特殊设计的KNN的分类器来实现。在异常检测中,决策区域由训练套的海杂波的超球覆盖确定,该射流在特征空间中足够且遍历。基于KNN的分类器是基于训练样本集的海杂波和训练样本集的模拟目标返回,通过具有特征加权,邻居加权和距离加权的联合使用,返回大海杂波。通过两个开放和认可的IPIX和CSIR雷达数据库验证了新的方法,用于海面小目标检测。结果表明,与新的方法避免现有方法中的尺寸限制和特征压缩损耗,它相比,它提供了显着的性能改进。

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