New Results on Efficient Optimal Multilevel Image Thresholding

Martin Luessi, Marco Eichmann, G. Schuster, A. Katsaggelos
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引用次数: 21

Abstract

Image thresholding is one of the most common image processing operations, since almost all image processing schemes need some sort of separation of the pixels into different classes. In order to find the thresholds, almost all methods analyze the histogram of the image. In most cases, the optimal thresholds are found by either minimizing or maximizing an objective function, which depends on the positions of the thresholds. We identify two classes of objective functions for which the optimal thresholds can be found by algorithms with low time complexity. We show, that for example the method proposed by Otsu (1979) and other well known methods have objective functions belonging to these classes. By implementing the algorithms in ANSI C and comparing their execution times, we can make a quantitative statement about their performance.
高效最优多级图像阈值分割的新结果
图像阈值分割是最常见的图像处理操作之一,因为几乎所有的图像处理方案都需要将像素分成不同的类。为了找到阈值,几乎所有的方法都是对图像的直方图进行分析。在大多数情况下,通过最小化或最大化目标函数来找到最优阈值,这取决于阈值的位置。我们确定了两类目标函数,它们的最优阈值可以用低时间复杂度的算法找到。我们表明,例如Otsu(1979)提出的方法和其他众所周知的方法具有属于这些类的目标函数。通过在ANSI C中实现这些算法并比较它们的执行时间,我们可以对它们的性能做出定量的陈述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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