标准差
阈值
大津法
计算机科学
差异(会计)
选择(遗传算法)
班级(哲学)
模式识别(心理学)
统计参数
图像(数学)
人工智能
统计
数学
会计
业务
作者
Jung-Min Sung,Dae-Chul Kim,Bong-Yeol Choi,Yeong‐Ho Ha
摘要
Threshold selection using the within-class variance in Otsu's method is generally moderate, yet inappropriate for expressing class statistical distributions. Otsu uses a variance to represent the dispersion of each class based on the distance square from the mean to any data. However, since the optimal threshold is biased toward the larger variance among two class variances, variances cannot be used to denote the real class statistical distributions. Therefore, to express more accurate class statistical distributions, this paper proposes the within-class standard deviation as a criterion for threshold selection, and the optimal threshold is then determined by minimizing the within-class standard deviation. Experimental results confirm that the proposed method produced a better performance than existing algorithms.
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