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首页> 外文期刊>Journal of advanced transportation >Deep Learning-Enabled Variational Optimization Method for Image Dehazing in Maritime Intelligent Transportation Systems
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Deep Learning-Enabled Variational Optimization Method for Image Dehazing in Maritime Intelligent Transportation Systems

机译:海洋智能运输系统中图像脱水的支持变分优化方法

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Image dehazing has become a fundamental problem of common concern in computer vision-driven maritime intelligent transportation systems (ITS). The purpose of image dehazing is to reconstruct the latent haze-free image from its observed hazy version. It is well known that the accurate estimation of transmission map plays a vital role in image dehazing. In this work, the coarse transmission map is firstly estimated using a robust fusion-based strategy. A unified optimization framework is then proposed to estimate the refined transmission map and latent sharp image simultaneously. The resulting constrained minimization model is solved using a two-step optimization algorithm. To further enhance dehazing performance, the solutions of subproblems obtained in this optimization algorithm are equivalent to deep learning-based image denoising. Due to the powerful representation ability, the proposed method can accurately and robustly estimate the transmission map and latent sharp image. Numerous experiments on both synthetic and realistic datasets have been performed to compare our method with several state-of-the-art dehazing methods. Dehazing results have demonstrated the proposed method’s superior imaging performance in terms of both quantitative and qualitative evaluations. The enhanced imaging quality is beneficial for practical applications in maritime ITS, for example, vessel detection, recognition, and tracking.
机译:图像脱落已成为计算机视觉驱动的海事智能交通系统(其)中共同关心的根本问题。图像脱皮的目的是从其观察到的朦胧版本重建潜在的阴霾图像。众所周知,准确估计传输地图在图像脱水中起着至关重要的作用。在这项工作中,首先使用坚固的基于融合策略估计粗略传输图。然后提出了一个统一的优化框架来估计同时估计精细的传输映射和潜在的锐利图像。使用两步优化算法解决了产生的约束最小化模型。为了进一步提高脱血性能,在该优化算法中获得的子问题的解是相当于基于深度学习的图像去噪。由于具有强大的表示能力,所提出的方法可以准确且鲁棒地估计传输地图和潜在锐利图像。已经进行了众多关于合成和现实数据集的实验,以比较我们具有多种最先进的去吸附方法的方法。除虫结果已经证明了所提出的方法在定量和定性评估方面的卓越影像性能。增强的成像质量对船舶中的实际应用有益,例如船舶检测,识别和跟踪。

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