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An Improved Image Thresholding Method Based On Two-Dimensional Histogram*

机译:基于二维直方图 * 的改进的图像阈值方法

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摘要

The traditional two-dimensional histogram thresholding method ignores the existence of noise, which may lead to misclassification problem. Moreover, the calculation of the optimal threshold by two-dimensional Renyi entropy is too complex. To avoid these drawbacks, an improved segmentation method which combining grayscale-gradient histogram and traditional two-dimensional histogram is proposed in this paper. First, the gray-gradient histogram is constructed by using the gray value of each pixel and the gray value of its neighborhood. The noise points can be removed according to the distance between the pixels and the horizontal axis in grayscale-gradient histogram. After de-noising, the pixels are located near the main diagonal in the traditional two-dimensional histogram. Then, the distance from each pixel to the origin can be used to select the optimal segmentation threshold, which reduces the computational complexity from O(L4) to O(L2). The experimental result shows that the improved method proposed in this paper is faster, more accurate and more robust than traditional two-dimensional method, thus especially suitable for low signal-to-noise ratio (SNR) images.
机译:传统的二维直方图阈值方法忽略了噪声的存在,这可能导致错误分类问题。此外,通过二维仁怡熵计算最佳阈值太复杂。为了避免这些缺点,本文提出了一种改进的分割方法,该方法组合灰度梯度直方图和传统的二维直方图。首先,通过使用每个像素的灰度和其邻域的灰度值来构造灰度梯度直方图。可以根据灰度梯度直方图中的像素和水平轴之间的距离去除噪声点。在去噪之后,像素位于传统的二维直方图中的主对角线附近。然后,可以使用从每个像素到原点的距离来选择最佳分割阈值,这降低了来自O的计算复杂度(L 4 ) 工具 2 )。实验结果表明,本文提出的改进方法比传统的二维方法更快,更准确,更鲁棒,因此特别适用于低信噪比(SNR)图像。

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