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Haze Image Recognition Based on Brightness Optimization Feedback and Color Correction

机译:基于亮度优化反馈和色彩校正的雾度图像识别

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摘要

At present, the identification of haze levels mostly relies on traditional measurement methods, the real-time operation and convenience of these methods are poor. This paper aims to realize the identification of haze levels based on the method of haze images processing. Therefore, this paper divides the haze images into five levels, and obtains the high-quality haze images in each level by the brightness correction of the optimization solution and the color correction of the feature matching. At the same time, in order to reduce the noise of the haze images, this article improved the Butterworth filter. Finally, based on the processed haze images, this paper uses the Faster R-CNN network to identify the haze levels. The results of multiple sets of comparison experiments demonstrate the accuracy of the study.
机译:目前,雾度的识别主要依靠传统的测量方法,这些方法的实时性和便捷性差。本文旨在通过雾度图像处理方法实现雾度的识别。因此,本文将雾度图像分为五个等级,并通过优化方案的亮度校正和特征匹配的色彩校正来获得各个等级的高质量雾度图像。同时,为了减少雾度图像的噪声,本文对巴特沃斯滤波器进行了改进。最后,基于处理后的雾度图像,本文使用Faster R-CNN网络识别雾度级别。多组比较实验的结果证明了这项研究的准确性。

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