Fast adaptive PNN-based thresholding algorithms

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摘要

Thresholding is a fundamental operation in image processing. Based on the pairwise nearest neighbor technique and the variance criterion, this theme presents two fast adaptive thresholding algorithms. The proposed first algorithm takes O((m−k)mτ) time where k denotes the number of thresholds specified by the user; m denotes the size of the compact image histogram, and the parameter τ has the constraint 1⩽τ⩽m. On a set of different real images, experimental results reveal that the proposed first algorithm is faster than the previous three algorithms considerably while having a good feature-preserving capability. The previous three mentioned algorithms need O(mk) time. Given a specific peak-signal-to-noise ratio (PSNR), we further present the second thresholding algorithm to determine the number of thresholds as few as possible in order to obtain a thresholded image satisfying the given PSNR. The proposed second algorithm takes O((m−k)mτ+γN) time where N and γ denote the image size and the fewest number of thresholds required, respectively. Some experiments are carried out to demonstrate the thresholded images that are encouraging. Since the time complexities required in our proposed two thresholding algorithms are polynomial, they could meet the real-time demand in image preprocessing.

论文关键词:Algorithms,Clustering,Compact Histogram,PNN,PSNR,Thresholding

论文评审过程:Received 22 October 2002, Accepted 2 April 2003, Available online 1 July 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(03)00138-9