Using a hybrid of fuzzy theory and neural network filter for image dehazing applications

Jyun-Guo Wang, S. Tai, Chin-Ling Lee, Cheng‐Jian Lin, Tsung-Hung Lin
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引用次数: 1

Abstract

When photographs are being taken in an outdoor environment, the medium in air will cause light attenuation and further reduce image quality, and this impact is especially obvious in a hazy environment. Reduction of image quality results in the loss of information, which renders an image recognition system unable to identify objects in the image. In order to eliminate the hazy effect on images and improve the visual quality, this paper presents an efficient method combining the fuzzy inference system and the neural network filter to solve image dehazing. During dehazing, the fuzzy inference system is adopted to estimate the variations in light attenuation, and the erosion of morphological operation and the neural network filter are used to eliminate the halation and achieve optimization in transmission map refinement. Finally, the brightest 1% of the atmospheric light is utilized to calculate the color vector of atmospheric light to eliminate color cast. The experimental results indicate that the proposed method is superior to other dehazing methods.
将模糊理论与神经网络滤波相结合,应用于图像去雾
在室外环境中拍摄照片时,空气中的介质会造成光线衰减,进一步降低图像质量,这种影响在雾霾环境中尤为明显。图像质量的降低会导致信息的丢失,从而使图像识别系统无法识别图像中的物体。为了消除图像的模糊影响,提高视觉质量,本文提出了一种将模糊推理系统与神经网络滤波相结合的有效方法来解决图像去雾问题。在除雾过程中,采用模糊推理系统来估计光衰减的变化,并采用形态运算的侵蚀和神经网络滤波来消除光晕,实现传输图细化的优化。最后,利用大气光中最亮的1%计算大气光的颜色向量,消除偏色。实验结果表明,该方法优于其他除雾方法。
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