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Enhanced ATR Using Fisher Fusion Techniques with Application toSide-Looking Sonar

机译:使用Fisher Fusion Technique具有应用程序的融合技术,增强ATR

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Raytheon has extensively processed high-resolution sidescan sonar images with its Automatic Target Recognition (ATR) algorithms to classify target-like objects (TLOs) in a variety of underwater environments. The ATR algorithm segments the image into candidate highlight and shadow regions of interest (ROIs), and extracts and scores features from these ROIs. The TLOs are classified by thresholding an overall classification score, formed by summing the individual feature scores. The algorithm performs reliably against TLOs that exhibit highlight and shadow regions that are both distinct relative to the ambient background. However, the sonar images for many real-world undersea environments can contain a significant percentage of TLOs exhibiting either "weak" highlight or shadow regions. Robust performance in these environments is achieved by tailoring the individual feature scoring algorithms to optimize the separation between the corresponding highlight or shadow feature scores of targets and non-targets. This study examines modifications to a previously presented alternate approach that employs Fisher fusion principles to generate optimal weighting coefficients which are applied to the individual feature scores before final classification processing. Results from processing of at-sea data sets demonstrate the performance benefits obtained from the modifications.
机译:Raytheon广泛处理了具有其自动目标识别(ATR)算法的高分辨率SideScan Sonar图像,以在各种水下环境中对目标类似物体(TLOS)进行分类。 ATR算法将图像分段为候选突出显示和感兴趣的影子区域(ROI),并从这些ROI中提取和分数特征。通过通过求解各个特征分数来进行整体分类评分来分类TLO。该算法可靠地对TLOS表现出展示相对于环境背景不同的突出显示和阴影区域。然而,许多真实世界的下部环境的声纳图像可以包含显着百分比的TLO,其展示了“弱”突出或阴影区域。通过定制各个特征评分算法来实现这些环境中的鲁棒性能,以优化目标和非目标的相应突出显示或阴影特征分数之间的分离。本研究将修改审查了先前呈现的替代方法,该方法采用Fisher融合原理来生成在最终分类处理之前应用于各个特征分数的最佳加权系数。在海上数据集的处理结果证明了从修改中获得的性能益处。

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