Article ID Journal Published Year Pages File Type
384353 Expert Systems with Applications 2012 9 Pages PDF
Abstract

The current major theme in contrast enhancement is to partition the input histogram into multiple sub-histograms before final equalization of each sub-histogram is performed. This paper presents a novel contrast enhancement method based on Gaussian mixture modeling of image histograms, which provides a sound theoretical underpinning of the partitioning process. Our method comprises five major steps. First, the number of Gaussian functions to be used in the model is determined using a cost function of input histogram partitioning. Then the parameters of a Gaussian mixture model are estimated to find the best fit to the input histogram under a threshold. A binary search strategy is then applied to find the intersection points between the Gaussian functions. The intersection points thus found are used to partition the input histogram into a new set of sub-histograms, on which the classical histogram equalization (HE) is performed. Finally, a brightness preservation operation is performed to adjust the histogram produced in the previous step into a final one. Based on three representative test images, the experimental results demonstrate the contrast enhancement advantage of the proposed method when compared to twelve state-of-the-art methods in the literature.

► We proposed a CE method based on Gaussian mixture modeling of image histograms. ► A binary search strategy is applied to find the intersection points. ► We performed a brightness preservation operation to adjust the resultant images. ► Our results are superior to other relevant methods objectively and subjectively.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
, , , ,