图学学报
圖學學報
도학학보
Journal of Graphics
2015年
3期
432-437
,共6页
赵仁涛%郭彩乔%李华德%崔佳星%张志芳%铁军
趙仁濤%郭綵喬%李華德%崔佳星%張誌芳%鐵軍
조인도%곽채교%리화덕%최가성%장지방%철군
直方图修正%条件概率%图像增强%RBF神经网络
直方圖脩正%條件概率%圖像增彊%RBF神經網絡
직방도수정%조건개솔%도상증강%RBF신경망락
histogram modification%conditional probability%image enhancement%RBF neural network
针对低对比度图像增强问题,提出了一种将直方图修正与RBF神经网络相结合的图像对比度增强算法。首先由原始图像获得与其邻域存在对比度的像素的条件概率直方图,通过调整两个增强参数可以改变条件概率直方图和均匀分布直方图的权重,生成新的直方图对图像进行增强。采用RBF神经网络建立图像特征与两个增强参数之间的非线性映射关系。根据图像本身的特征快速获得增强参数,从而实现图像的自适应增强。该方法计算量小,实时性强,应用范围广,有较强的自适应性。
針對低對比度圖像增彊問題,提齣瞭一種將直方圖脩正與RBF神經網絡相結閤的圖像對比度增彊算法。首先由原始圖像穫得與其鄰域存在對比度的像素的條件概率直方圖,通過調整兩箇增彊參數可以改變條件概率直方圖和均勻分佈直方圖的權重,生成新的直方圖對圖像進行增彊。採用RBF神經網絡建立圖像特徵與兩箇增彊參數之間的非線性映射關繫。根據圖像本身的特徵快速穫得增彊參數,從而實現圖像的自適應增彊。該方法計算量小,實時性彊,應用範圍廣,有較彊的自適應性。
침대저대비도도상증강문제,제출료일충장직방도수정여RBF신경망락상결합적도상대비도증강산법。수선유원시도상획득여기린역존재대비도적상소적조건개솔직방도,통과조정량개증강삼수가이개변조건개솔직방도화균균분포직방도적권중,생성신적직방도대도상진행증강。채용RBF신경망락건립도상특정여량개증강삼수지간적비선성영사관계。근거도상본신적특정쾌속획득증강삼수,종이실현도상적자괄응증강。해방법계산량소,실시성강,응용범위엄,유교강적자괄응성。
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.