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Total Generalized Variation-Regularized Variational Model for Single Image Dehazing

机译:单图像去雾的总广义变分-正规化变分模型

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Imaging quality is often significantly degraded under hazy weather condition. The purpose of this paper is to recover the latent sharp image from its hazy version. It is well known that the accurate estimation of depth information could assist in improving dehazing performance. In this paper, a detail-preserving variational model was proposed to simultaneously estimate haze-free image and depth map. In particular, the total variation (TV) and total generalized variation (TGV) regularizers were introduced to restrain haze-free image and depth map, respectively. The resulting non-smooth optimization problem was efficiently solved using the alternating direction method of multipliers (ADMM). Comprehensive experiments have been conducted on realistic datasets to compare our proposed method with several state-of-the-art dehazing methods. Results have illustrated the superior performance of the proposed method in terms of visual quality evaluation.
机译:在朦胧的天气条件下,成像质量通常会大大降低。本文的目的是从朦胧的版本中恢复潜在的清晰图像。众所周知,深度信息的准确估计可以帮助改善除雾性能。本文提出了一个保留细节的变分模型来同时估计无雾图像和深度图。特别是,引入了总变化量(TV)和总广义变化量(TGV)正则化器来分别抑制无雾图像和深度图。使用乘法器的交替方向方法(ADMM)可以有效地解决由此产生的非平滑优化问题。已经对现实的数据集进行了全面的实验,以将我们提出的方法与几种最新的除雾方法进行比较。结果说明了该方法在视觉质量评估方面的优越性能。

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