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首页> 外文期刊>Journal of Applied Remote Sensing >Variational contrast enhancement guided by global and local contrast measurements for single-image defogging
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Variational contrast enhancement guided by global and local contrast measurements for single-image defogging

机译:在全局和局部对比度测量的指导下进行变差对比度增强,以实现单图像除雾

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The visibility of images captured in foggy conditions is impaired severely by a decrease in the contrasts of objects and veiling with a characteristic gray hue, which may limit the performance of visual applications out of doors. Contrast enhancement together with color restoration is a challenging mission for conventional fog-removal methods, as the degrading effect of fog is largely dependent on scene depth information. Nowadays, people change their minds by establishing a variational framework for contrast enhancement based on a physically based analytical model, unexpectedly resulting in color distortion, dark-patch distortion, or fuzzy features of local regions. Unlike previous work, our method treats an atmospheric veil as a scattering disturbance and formulates a foggy image as an energy functional minimization to estimate direct attenuation, originating from the work of image denoising. In addition to a global contrast measurement based on a total variation norm, an additional local measurement is designed in that optimal problem for the purpose of digging out more local details as well as suppressing dark-patch distortion. Moreover, we estimate the airlight precisely by maximization with a geometric constraint and a natural image prior in order to protect the faithfulness of the scene color. With the estimated direct attenuation and airlight, the fog-free image can be restored. Finally, our method is tested on several benchmark and realistic images evaluated by two assessment approaches. The experimental results imply that our proposed method works well compared with the state-of-the-art defogging methods. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:在有雾的条件下捕获的图像的可视性会由于对象对比度的降低和带有特征性灰色调的面纱而严重受损,这可能会限制户外可视应用的性能。对于传统的除雾方法而言,对比度增强和色彩还原是一项艰巨的任务,因为雾的降级效果很大程度上取决于场景深度信息。如今,人们通过基于物理分析模型建立对比度增强的变体框架来改变主意,出乎意料地导致颜色失真,暗斑失真或局部区域的模糊特征。与以前的工作不同,我们的方法将大气面纱视为散射干扰,并将有雾的图像表示为能量函数最小化,以估计直接衰减,这是基于图像去噪的结果。除了基于总变化范数的全局对比度测量之外,在该最佳问题中还设计了一个附加的局部测量,目的是挖掘出更多局部细节并抑制暗斑失真。此外,为了保护场景色彩的真实性,我们事先通过几何约束和自然图像的最大化来精确估计空中照明。利用估计的直接衰减和光线,可以恢复无雾图像。最后,我们的方法在通过两种评估方法评估的几张基准图像和真实图像上进行了测试。实验结果表明,与最先进的除雾方法相比,我们提出的方法效果很好。 (C)2015年光电仪器工程师协会(SPIE)

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