Traditional edge detection methods are very vulnerable to noise. Statistical models, which
are based on t-test, Wilcoxon test, and rank-order test, are suggested for noisy images in the
literature. In this paper, we suggest a framework based on rank-order test and k-means
clustering, which increases the efficiency of the rank-order test. The performance of the
proposed statistical framework was tested on corrupted images with different noise variance …