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Statistically Normalized Coherent Change Detection for Synthetic Aperture Sonar Imagery

机译:合成孔径声纳图像的统计归一化相干变化检测

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Coherent Change Detection (CCD) is a process of highlighting an area of activity in scenes (seafloor) under survey and generated from pairs of synthetic aperture sonar (SAS) images of approximately the same location observed at two different time instances. The problem of CCD and subsequent anomaly feature extraction/detection is complicated due to several factors such as the presence of random speckle pattern in the images, changing environmental conditions, and platform instabilities. These complications make the detection of weak target activities even more difficult. Typically, the degree of similarity between two images measured at each pixel locations is the coherence between the complex pixel values in the two images. Higher coherence indicates little change in the scene represented by the pixel and lower coherence indicates change activity in the scene. Such coherence estimation scheme based on the pixel intensity correlation is an ad-hoc procedure where the effectiveness of the change detection is determined by the choice of threshold which can lead to high false alarm rates. In this paper, we propose a novel approach for anomalous change pattern detection using the statistical normalized coherence and multi-pass coherent processing. This method may be used to mitigate shadows by reducing the false alarms resulting in the coherent map due to speckles and shadows. Test results of the proposed methods on a data set of SAS images will be presented, illustrating the effectiveness of the normalized coherence in terms statistics from multi-pass survey of the same scene.
机译:相干变化检测(CCD)是一种突出显示正在调查的场景(海底)中的活动区域的过程,该过程是从在两个不同时间实例中观察到的大致相同位置的成对合成孔径声纳(SAS)图像对生成的。 CCD和随后异常特征提取/检测的问题由于多种因素而变得复杂,例如图像中存在随机斑点图案,变化的环境条件以及平台不稳定性。这些并发症使检测弱目标活动变得更加困难。通常,在每个像素位置处测量的两个图像之间的相似度是两个图像中复像素值之间的相干性。较高的相干性表示由像素表示的场景中几乎没有变化,而较低的相干性表示场景中的变化活动。这种基于像素强度相关性的相干估计方案是一种临时过程,其中通过选择阈值来确定变化检测的有效性,该阈值会导致高的虚警率。在本文中,我们提出了一种使用统计归一化相干和多遍相干处理进行异常变化模式检测的新方法。该方法可用于通过减少由于斑点和阴影而导致产生连贯映射的错误警报来减轻阴影。将介绍所提出方法在SAS图像数据集上的测试结果,从而说明从同一场景的多遍调查统计数据中归一化相干性的有效性。

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