Single Image Very Deep Super Resolution (SIVDSR) Dehaze

Sangita Roy, S. S. Chaudhuri
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Abstract

Adverse climate conditions affect digital photography causing colour shifting, poor visibility, contrast reduction, and fainted appearance due to the scattering of atmospheric Particulate Matter (APM). To get an optimum transmission matrix is the key success of any single image dehazing technique. Deep Learning based Super Resolution technique with VDSR 20-weighted Layers ImageNet classifier improves any image resolution leading to noise suppression. High Residual Learning gradient clipping makes the algorithm converge fast with denoising and removal of artifacts by compression. This key observation has been exercised in improving resolution of the hazy images with an optical image formation model. In addition, benchmark established images are evaluated and their comparisons to the state-of-the-art methods show a consistent improvement in accurate scene transmission estimation resulting in clear, natural haze-free radiance. A good balance between execution speed and processing speed has been achieved.
单图像非常深超分辨率(SIVDSR)去雾
不利的气候条件会影响数码摄影,导致色彩偏移、能见度低、对比度降低,以及由于大气颗粒物(APM)的散射而晕倒。获得最优的传输矩阵是任何单幅图像去雾技术成功的关键。基于深度学习的超分辨率技术与VDSR 20加权层ImageNet分类器提高任何图像分辨率导致噪声抑制。高残差学习梯度裁剪使得算法收敛速度快,通过压缩去噪和去除伪影。这一关键观测结果已应用于光学成像模型来提高模糊图像的分辨率。此外,对建立的基准图像进行了评估,并将其与最先进的方法进行了比较,显示出准确的场景传输估计的持续改进,从而产生清晰,自然的无雾辐射。在执行速度和处理速度之间达到了很好的平衡。
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