Natural Science Project of Department of Education of Henan Province (No.15A520057);Natural Science Program of Science and Technology Department of Henan Province (No.132102210494, No.162102210189);Fund for High-level Talents (No.21476062);Fundamental Research Funds for the Provincial Universities (No.2016QNJH25)
An image segmentation method based on robust regional constraint FCM (Fuzzy C-Means) is proposed
which combines hidden Markov random filed (HMRF) model with FCM.In order to improve the performance of the proposed method
the consistency of superpixels of the input image is adaptively used as a priori in clustering process.The proposed method first obtains the superpixels of the image
and for each superpixel
calculates a contribution of each pixel to the superpixel and the contributions are used to compute the superpixel's membership functions.And then the pointwise prior probabilities of pixels are calculated with pixel-level membership function or region-level membership function according to whether the superpixel to which the pixels belong has the dominant label.The use of region-level membership function is to guide the direction of clustering optimization
and thus there are some unused labels which are removed in the iteration process.Finally
the segmentation result is obtained after iteration stop.Experimental results demonstrate the good performance of the proposed method.