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首页> 外文期刊>IEICE transactions on information and systems >Single Image Dehazing Based on Weighted Variational Regularized Model
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Single Image Dehazing Based on Weighted Variational Regularized Model

机译:基于加权变分正规模型的单幅图像去吸附

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Image dehazing is of great significance in computer vision and other fields. The performance of dehazing mainly relies on the precise computation of transmission map. However, the computation of the existing transmission map still does not work well in the sky area and is easily influenced by noise. Hence, the dark channel prior (DCP) and luminance model are used to estimate the coarse transmission in this work, which can deal with the problem of transmission estimation in the sky area. Then a novel weighted variational regularization model is proposed to refine the transmission. Specifically, the proposed model can simultaneously refine the transmittance and restore clear images, yielding a haze-free image. More importantly, the proposed model can preserve the important image details and suppress image noise in the dehazing process. In addition, a new Gaussian Adaptive Weighted function is defined to smooth the contextual areas while preserving the depth discontinuity edges. Experiments on real-world and synthetic images illustrate that our method has a rival advantage with the state-of-art algorithms in different hazy environments.
机译:在计算机视觉和其他领域,图像脱色具有重要意义。除虫的性能主要依赖于传输地图的精确计算。然而,现有传输地图的计算仍然在天空区域中仍然不适用于噪声容易影响。因此,暗信道(DCP)和亮度模型用于估计该工作中的粗略传输,这可以处理天空区域中的传输估计问题。然后提出了一种新的加权变分正规化模型来优化传输。具体地,所提出的模型可以同时细化透射率和恢复清晰的图像,产生无雾图像。更重要的是,所提出的模型可以保留重要的图像细节并抑制脱水过程中的图像噪声。此外,新的高斯自适应加权函数被定义为平滑上下文区域,同时保留深度不连续边缘。现实世界和合成图像的实验说明了我们的方法在不同朦胧环境中的最先进的算法具有竞争力优势。

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