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Gaussian-Weighted Moving-Window Robust Automatic Threshold Selection

机译:高斯加权移动窗口鲁棒自动阈值选择

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A multi-scale, moving-window method for local thresholding based on Robust Automatic Threshold Selection (RATS) is developed. Using a model for the noise response of the optimal edge detector in this context, the reliability of thresholds computed at different scales is determined. The threshold computed at the smallest scale at which the reliability is sufficient is used. The performance on 2-D images is evaluated on synthetic an natural images in the presence of varying background and noise. Results show the method deals better with these problems than earlier versions of RATS at most noise levels.
机译:提出了一种基于鲁棒自动阈值选择(RATS)的局部阈值多尺度移动窗口方法。在这种情况下,使用用于最佳边缘检测器的噪声响应的模型,可以确定在不同比例下计算出的阈值的可靠性。使用在足够可靠的最小尺度下计算的阈值。在存在变化的背景和噪声的情况下,在合成的自然图像上评估2-D图像的性能。结果表明,在大多数噪声水平下,该方法比早期版本的RATS能够更好地解决这些问题。

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