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Quantitative Evaluation for Contrast Enhancement and Image Qualities Measurement

D. Veenaivani, M. Balasaraswathi

Abstract


Histogram equalization, which aims at information
maximization, is widely used in different ways to perform contrast enhancement in images. In this paper, an automatic exact histogram specification technique is proposed and used for global and local contrast enhancement of images. The desired histogram is obtained by first subjecting the image histogram to a modification process and then by maximizing a measure that represents increase in information and
decrease in ambiguity. A new method of measuring image contrast based upon local band-limited approach and center-surround retinal receptive field model is also devised in this paper. This method works at multiple scales (frequency bands) and combines the contrast measures obtained at different scales using Lp-norm. In comparison to
a few existing methods, the effectiveness of the proposed automatic exact histogram specification technique in enhancing contrasts of images is demonstrated through qualitative analysis and the proposed image contrast measure based quantitative analysis 


Keywords


Ambiguity Measures, Beam Theory, Center-Surround Retinal Receptive field, Contrast Enhancement, Exact Histogram Specification, Local Band-Limited Contrast.

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