Single Image Dehazing Using End-To-End Deep-Dehaze Network

ELECTRONICS(2021)

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摘要
Haze is a natural distortion to the real-life images due to the specific weather conditions. This distortion limits the perceptual fidelity, as well as information integrity, of a given image. Image dehazing for the observed images is a complicated task because of its ill-posed nature. This study offers the Deep-Dehaze network to retrieve haze-free images. Given an input, the proposed architecture uses four feature extraction modules to perform nonlinear feature extraction. We improvise the traditional U-Net architecture and the residual network to design our architecture. We also introduce the l(1) spatial-edge loss function that enables our system to achieve better performance than that for the typical l(1) and l(2) loss function. Unlike other learning-based approaches, our network does not use any fusion connection for image dehazing. By training the image translation and dehazing network in an end-to-end manner, we can obtain better effects of both image translation and dehazing. Experimental results on synthetic and real-world images demonstrate that our model performs favorably against the state-of-the-art dehazing algorithms. We trained our network in an end-to-end manner and validated it on natural and synthetic hazy datasets. Our method shows favorable results on these datasets without any post-processing in contrast to the traditional approach.
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关键词
computing methodologies, artificial intelligence, computer vision, computer vision tasks, visual inspection, computing methodologies, artificial intelligence, computer vision, Image and video acquisition, computational photography
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