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Contrast Image Enhancement Using Multi-Histogram Equalization

초록

영어

Mean separated histogram equalization in order to preserve the original mean brightness has been proposed. To provide the minimum mean brightness error after the histogram modification, the input image’s histogram is successively divided by the factor of 2 until the mean brightness error is satisfied the defined threshold. Then each divided group or sub-histogram will be independently equalized based on the proportional input mean. To provide the overall minimum mean brightness error, each group will be controlled by adding some certain pixels from the adjacent grey level of the next group for giving its mean near by the corresponding the divided mean. However, it still exists some little error which will be put into the next adjacent group. By successive dividing the original histogram, we found that the absolute mean brightness error is gradually decreased when the number of group is increased. Therefore, the error threshold is assigned in order to automatically dividing the original histogram for obtaining the desired absolute mean brightness error (AMBE). This process will be applied to the color image by treating each color independently.

목차

Abstract
 1. INTRODUCTION
 2. HISTOGRAM EQUALIZATION
 3. MINIMUM MEAN BRIGHTNESS ERROR BI-HISTOGRAM EQUALIZATION
 4. FINDING ANALYSIS
 5. CONCLUSION
 REFERENCES

저자정보

  • Nattapong Phanthuna Rajamangala University of Technology Phra Nakhon, Thailand
  • Fusak cheevasuwit King Mongkut’s Institute of Technology Ladkrabang, Thailand

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