Author:
Su Wenbin,Zhang Yifei,Wei Hongbo,Gao Qi
Abstract
Automatic vision systems have been widely used in the continuous casting of the steel industry, which improve efficiency and reduce labor. At present, high temperatures with evaporating fog cause images to be noisy and hazy, impeding the usage of advanced machine learning algorithms in this task. Instead of considering denoising and dehazing separately like previous papers, we established that by taking advantage of deep learning in a modeling complex formulation, our proposed algorithm, called Cascaded Denoising and Dehazing Net (CDDNet) reduces noise and hazy in a cascading pattern. Experimental results on both synthesized images and a pragmatic video from a continuous casting factory demonstrate our method’s superior performance in various metrics. Compared with existing methods, CDDNet achieved a 50% improvement in terms of peak signal-to-noise ratio on the validation dataset, and a nearly 5% improvement on a dataset that has never seen before. Besides, our model generalizes so well that processing a video from an operating continuous casting factory with CDDNet resulted in high visual quality.
Funder
Key Research and Development Project in Shaanxi Province
Subject
General Materials Science,Metals and Alloys
Cited by
1 articles.
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1. Remote Sensing Image Recovery and Enhancement by Joint Blind Denoising and Dehazing;IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing;2023