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Image Dehazing Based on (CMT net ) Cascaded Multi-scale Convolutional Neural Networks and Efficient Light Estimation Algorithm

机译:基于(CMT网)级联多尺度卷积神经网络和高效光估计算法的图像去吸附

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Image dehazing plays a pivotal role in numerous computer vision applications such as object recognition, surveillance systems, and security systems, where it can be considered as an introductory stage. Recently, many proposed learning-based works address this significant task; however, most of them neglect the atmospheric light estimation and fail to produce accurate transmission maps. To address such a problem, in this paper, we propose a two-stage dehazing system. The first stage presents an accurate atmospheric light algorithm labeled “A-Est” that employs hazy image blurriness and quadtree decomposition. Te second stage represents a cascaded multi-scale CNN model called CMT n e t that consists of two subnetworks, one for calculating rough transmission maps (CMCNN t r ) and the other for its refinement (CMCNN t ). Each subnetwork is composed of three-layer D-units (D indicates dense). Experimental analysis and comparisons with state-of-the-art dehazing methods revealed that the proposed system can estimate AL and t efficiently and accurately by achieving high-quality dehazing results and outperforms state-of-the-art comparative methods according to SSIM and MSE values, where our proposed achieves the best scores of both (91% average SSIM and 0.068 average MSE).
机译:图像脱落在众多计算机视觉应用中起重要作用,例如对象识别,监控系统和安全系统,在那里它可以被视为介绍性阶段。最近,许多建议的基于学习的作品解决了这项重要任务;然而,其中大多数忽略了大气光估计,并且无法产生准确的传输映射。为了解决这样的问题,在本文中,我们提出了一种两级脱水系统。第一阶段提出了一种精确的大气光算法,标有“A-EST”,该算法采用朦胧的图像模糊和Quadtree分解。 TE第二阶段表示称为CMT N E T的级联的多尺度CNN模型,该模型由两个子网组成,一个用于计算粗略传输映射(CMCNN T R),另一个用于其改进(CMCNN T)。每个子网由三层D-Units(D表示密集)组成。具有最先进的去吸收方法的实验分析和比较,揭示了所提出的系统可以通过实现高质量的去吸收结果和优于SSIM和MSE的最先进的比较方法来估计AL和T.我们提出的价值观达到了两者的最佳成绩(91%平均SSIM和0.068平均MSE)。

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