Degradation of image quality due to the presence of haze is a very common phenomenon. Existing DehazeNet [3], MSCNN [11] tackled the drawbacks of hand crafted haze relevant features. However, these methods have the problem of color distortion in gloomy (poor illumination) environment. In this paper, a cardinal (red, green and blue) color fusion network for single image haze removal is proposed. In first stage, network fusses color information present in hazy images and generates multi-channel depth maps. The second stage estimates the scene transmission map from generated dark channels using multi channel multi scale convolutional neural network (McMs-CNN) to recover the original scene. To train the proposed network, we have used two standard datasets namely: ImageNet [5] and D-HAZY [1]. Performance evaluation of the proposed approach has been carried out using structural similarity index (SSIM), mean square error (MSE) and peak signal to noise ratio (PSNR). Performance analysis shows that the proposed approach outperforms the existing state-of-the-art methods for single image dehazing.
翻译:现有DehazeNet[3],MSCNN[11]处理手造烟雾相关特征的缺点,然而,这些方法在阴暗(低光度)环境中存在色彩扭曲问题。在本文中,提议建立一个用于单一图像烟雾去除的红、绿、蓝)彩色聚合网络。在第一阶段,网络会大惊小怪,在青雾图像中提供彩色信息,并生成多通道深度地图。第二阶段,利用多频道多层共振神经网络(McMS-CNN)从生成的黑暗频道中估算现场传输地图,以恢复原始场景。为培训拟议的网络,我们使用了两个标准数据集:图像网[5]和D-HAZ[1]。对拟议方法的绩效评估使用了结构相似指数、中方错误和噪音比率峰值信号(PSNR)。绩效分析显示,拟议方法超出了现有单一图像去除状态方法。