Author/Authors :
bakhshali، mohamad amin نويسنده Department of Electrical Engineering , , Shamsi، Mousa نويسنده Department of Electrical Engineering ,
Abstract :
Nowadays, analyzing human facial image has gained an ever?increasing importance due to its various applications. Image
segmentation is required as a very important and fundamental operation for significant analysis and interpretation of images. Among
the segmentation methods, image thresholding technique is one of the most well?known methods due to its simplicity, robustness, and
high precision. Thresholding based on optimization of the objective function is among the best methods. Numerous methods exist for
the optimization process and bacterial foraging optimization (BFO) is among the most efficient and novel ones. Using this method,
optimal threshold is extracted and then segmentation of facial skin is performed. In the proposed method, first, the color facial image
is converted from RGB color space to Improved Hue?Luminance?Saturation (IHLS) color space, because IHLS has a great mapping
of the skin color. To perform thresholding, the entropy?based method is applied. In order to find the optimum threshold, BFO is used.
In order to analyze the proposed algorithm, color images of the database of Sahand University of Technology of Tabriz, Iran were
used. Then, using Otsu and Kapur methods, thresholding was performed. In order to have a better understanding from the proposed
algorithm; genetic algorithm (GA) is also used for finding the optimum threshold. The proposed method shows the better results than
other thresholding methods. These results include misclassification error accuracy (88%), non?uniformity accuracy (89%), and the
accuracy of region’s area error (89%).