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Through-the-sensor performance estimation of the Mondrian detection algorithm in sonar imagery

机译:声纳图像中的蒙德里亚检测算法的传感器性能估计

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The Mondrian detection algorithm (MDA) is a powerful method for automatic object detection of targets on the sea floor using synthetic aperture sonar (SAS) images. If a target is present, this will be reflected in a highlight with an accompanying acoustic shadow downrange. In this work we focus on the core detection stage of the MDA which consists of threshold checks of mean sonar intensity of sub-patches of different sizes within the SAS image (e.g. the shadow is generally larger than the highlight). We use statistical analysis to evaluate the probability of passing and failing these tests, given the statistics of the target we want to detect (e.g. a naval mine) and the SAS image statistics (e.g. signal-to-noise levels). The highlight, shadow and background signals are modelled using gamma distributions, leading to closed-form expressions for the multiple detector tests. From these estimated probabilities for passing the corresponding detector tests, the False Positive (FP) and False Negative (FN) rates can be calculated. The utility of these estimates is two-fold: 1) They can be used to optimize the MDA's performance as a function of the threshold parameters used in the detector tests. Given a preferred balance between FPs and FNs, the best parameter values can be found to be used in future ATR scenarios; 2) Once the parameters for MDA are set, we can use the false negative estimate to quantify the remaining risk of an undetected mine being present in a given SAS image. This can be used in a performance evaluation framework to determine whether further investigation is required (i.e. more SAS images of the same area of sea bed should be captured). We illustrate the effectiveness of our proposed methodology by applying it to previously gathered SAS data.
机译:Mondrian检测算法(MDA)是使用合成孔径声纳(SAS)图像自动对象检测海底目标的强大方法。如果存在目标,则将在伴随声学阴影下方反映在突出显示中。在这项工作中,我们专注于MDA的核心检测阶段,该MDA由SAS图像内的不同大小的子斑块的平均声纳强度的阈值检查(例如,阴影通常大于突出显示)。我们使用统计分析来评估传递和失败这些测试的概率,鉴于我们想要检测的目标的统计数据和SAS图像统计(例如信噪比水平)。使用伽马分布建模突出显示,阴影和背景信号,导致多个检测器测试的闭合表达式。从这些用于通过相应的检测器测试的这些估计概率,可以计算出假正(FP)和假阴性(FN)速率。这些估计的效用是两倍:1)它们可用于优化MDA的性能作为检测器测试中使用的阈值参数的函数。鉴于FPS和FNS之间的首选平衡,可以找到最佳参数值以在未来的ATR场景中使用; 2)一旦设定了MDA的参数,我们就可以使用假负估计来量化未检测到的矿井存在于给定的SAS图像中的剩余风险。这可以用于性能评估框架,以确定是否需要进一步调查(即,应捕获海床的相同区域的更多SAS图像)。我们通过将其应用于先前收集的SAS数据来说明我们提出的方法的有效性。

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