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Deep image enhancement for ill light imaging

机译:生病浅色成像的深层图像增强

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摘要

Imaging in the natural scene under ill lighting conditions (e.g., low light, back-lit, over-exposed front-lit, and any combinations of them) suffers from both over- and under-exposure at the same time, whereas processing of such images often results in over- and under-enhancement. A single small image sensor can hardly provide satisfactory quality for ill lighting conditions with ordinary optical lenses in capturing devices. Challenges arise in the maintenance of a visual smoothness between those regions, while color and contrast should be well preserved. The problem has been approached by various methods, including multiple sensors and handcrafted parameters, but extant model capacity is limited to only some specific scenes (i.e., lighting conditions). Motivated by these challenges, in this paper, we propose a deep image enhancement method for color images captured under ill lighting conditions. In this method, input images are first decomposed into reflection and illumination maps with the proposed layer distribution loss net, where the illumination blindness and structure degradation problem can be subsequently solved via these two components, respectively. The hidden degradation in reflection and illumination is tuned with a knowledge-based adaptive enhancement constraint designed for ill illuminated images. The model can maintain a balance of smoothness and contribute to solving the problem of noise besides overand under-enhancement. The local consistency in illumination is achieved via a repairing operation performed in the proposed Repair-Net. The total variation operator is optimized to acquire local consistency, and the image gradient is guided with the proposed enhancement constraint. Finally, a product of updated reflection and illumination maps reconstructs an enhanced image. Experiments are organized under both very low exposure and ill illumination conditions, where a new dataset is also proposed. Results on both experiments show that our method has superior performance in preserving structural and textural details compared to other states of the art, which suggests that our method is more practical in future visual applications. (C) 2021 Optical Society of America
机译:在光线不好的情况下(例如,弱光、背光、过度曝光的前照,以及它们的任何组合),自然场景中的成像会同时受到过度曝光和不足曝光的影响,而处理此类图像通常会导致过度和不足增强。在拍摄设备中,使用普通光学镜头,单个小型图像传感器很难为恶劣的照明条件提供令人满意的质量。在保持这些区域之间的视觉平滑度方面存在挑战,而颜色和对比度应该得到很好的保护。这个问题已经通过多种方法解决,包括多个传感器和手工制作的参数,但现有的模型容量仅限于某些特定场景(即照明条件)。基于这些挑战,在本文中,我们提出了一种在恶劣光照条件下捕获的彩色图像的深度图像增强方法。该方法首先将输入图像分解为反射图和光照图,然后利用所提出的层分布损失网分别解决光照盲和结构退化问题。反射和照明中隐藏的退化通过基于知识的自适应增强约束进行调整,该约束针对照明不良的图像而设计。该模型能保持平滑度的平衡,有助于解决增强前后的噪声问题。照明的局部一致性是通过在建议的修复网络中执行的修复操作来实现的。对全变分算子进行优化以获得局部一致性,并用所提出的增强约束引导图像梯度。最后,更新反射和照明贴图的产品将重建增强图像。实验在非常低的曝光和不好的照明条件下进行,其中还提出了一个新的数据集。两个实验的结果都表明,与其他技术相比,我们的方法在保留结构和纹理细节方面具有优越的性能,这表明我们的方法在未来的视觉应用中更具实用性。(2021)美国光学学会

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