Journal of Graphics
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Abstract: For low-contrast image enhancement problem, we propose an algorithm based on histogram correction and RBF neural network methods. Obtained the conditional probability histogram of the pixels in the presence of contrast with its neighborhood through original image, adjusting the weights of two parameters can change the conditional probability histogram and uniform distribution histogram. In this paper, RBF neural network is applied to set up the nonlinear mapping between image features and two enhanced parameters. In order to achieve adaptive image enhancement, rapid enhancement parameters are obtained according to the characteristics of the original image. The results show this method has good real-time ability, wide range of application, low computational complexity and good adaptability.
Key words: histogram modification, conditional probability, image enhancement, RBF neural network
Zhao Rentao, Guo Caiqiao, Li Huade, Cui Jiaxing, Zhang Zhifang, Tie Jun. Adaptive Low Contrast Image Enhancement Algorithm Based on the RBF Neural Network[J]. Journal of Graphics.
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http://www.txxb.com.cn/EN/Y2015/V36/I3/432