Zhang Hang, Liu Jian, Chen Lin, Chen Ning, Yang Xiao
State Key Laboratory of Advanced Design and Manufacture for Vehicle Body, Hunan University, Changsha 410082, China.
Sensors (Basel). 2019 Jul 26;19(15):3285. doi: 10.3390/s19153285.
Due to the limitation of the fixed structures of neighborhood windows, the quality of spatial information obtained from the neighborhood pixels may be affected by noise. In order to compensate this drawback, a robust fuzzy c-means clustering with non-neighborhood spatial information (FCM_NNS) is presented. Through incorporating non-neighborhood spatial information, the robustness performance of the proposed FCM_NNS with respect to the noise can be significantly improved. The results indicate that FCM_NNS is very effective and robust to noisy aliasing images. Moreover, the comparison of other seven roughness indexes indicates that the proposed FCM_NNS-based index can characterize the aliasing degree in the surface images and is highly correlated with surface roughness ( = 0.9327 for thirty grinding samples).
由于邻域窗口固定结构的限制,从邻域像素获得的空间信息质量可能会受到噪声的影响。为了弥补这一缺点,提出了一种具有非邻域空间信息的鲁棒模糊c均值聚类算法(FCM_NNS)。通过纳入非邻域空间信息,所提出的FCM_NNS对噪声的鲁棒性能可以得到显著提高。结果表明,FCM_NNS对噪声混叠图像非常有效且鲁棒。此外,与其他七个粗糙度指标的比较表明,所提出的基于FCM_NNS 的指标可以表征表面图像中的混叠程度,并且与表面粗糙度高度相关(对于30个磨削样本,相关系数为0.9327)。