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How to Reduce Anomaly Detection in Images to Anomaly Detection in Noise

机译:如何将图像中的异常检测减少为噪声中的异常检测

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Anomaly detectors address the difficult problem of detecting automatically exceptions in a background image, that can be as diverse as a fabric or a mammography. Detection methods have been proposed by the thousands because each problem requires a different background model. By analyzing the existing approaches, we show that the problem can be reduced to detecting anomalies in residual images (extracted from the target image) in which noise and anomalies prevail. Hence, the general and impossible background modeling problem is replaced by a simple noise model, and allows the calculation of rigorous detection thresholds. Our approach is therefore unsupervised and works on arbitrary images. The residual images can favorably be computed on dense features of neural networks. Our detector is powered by the a contrario detection theory, which avoids over-detection by fixing detection thresholds taking into account the multiple tests.
机译:异常检测器解决了在背景图像中自动检测异常的难题,该异常可能与织物或乳房X线照片一样多样。成千上万的检测方法已经提出,因为每个问题都需要不同的背景模型。通过分析现有方法,我们表明该问题可以减少为检测残留噪声图像(从目标图像中提取)中的异常,在该图像中存在噪声和异常。因此,一般的和不可能的背景建模问题被简单的噪声模型取代,并允许计算严格的检测阈值。因此,我们的方法不受监督,可用于任意图像。残差图像可以有利地在神经网络的密集特征上计算。我们的检测器采用了反向检测理论,该方法通过考虑多个测试来确定检测阈值,从而避免了过度检测。

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