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SVM-Based Sea-Surface Small Target Detection: A False-Alarm-Rate-Controllable Approach

机译:基于SVM的海面小目标检测:一种错误警报率可控制的方法

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摘要

In this letter, we consider the varying detection environments to address the problem of detecting small targets within sea clutter. We first extract three simple yet practically discriminative features from the returned signals in the time and frequency domains and then fuse them into a 3-D feature space. Based on the constructed space, we then adopt and elegantly modify the support vector machine to design a learning-based detector that enfolds the false alarm rate (FAR). Most importantly, our proposed detector can flexibly control the FAR by simply adjusting two introduced parameters, which facilitates to regulate detector's sensitivity to the outliers incurred by the sea spikes and to fairly evaluate the performance of different detection algorithms. Experimental results demonstrate that our proposed detector significantly improves the detection probability over several existing classical detectors in both low signal to clutter ratio (up to 58%) and low FAR (up to 40%) cases.
机译:在这封信中,我们考虑了各种检测环境,以解决在海杂波中检测小目标的问题。我们首先从时域和频域中从返回的信号中提取三个简单但实​​际上具有区分性的特征,然后将它们融合到3-D特征空间中。然后,基于构造的空间,我们采用并优雅地修改了支持向量机,以设计一个基于学习的检测器,该检测器包含了误报率(FAR)。最重要的是,我们提出的检测器可以通过简单地调整两个引入的参数来灵活地控制FAR,这有助于调节检测器对海峰引起的异常值的敏感性,并公平地评估不同检测算法的性能。实验结果表明,在低信号杂波比(最高58%)和低FAR(最高40%)的情况下,我们提出的检测器比现有的几种传统检测器显着提高了检测概率。

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