Although Convolution Neural Networks (CNNs) has made substantial progress in the low-light image enhancement task, one critical problem of CNNs is the paradox of model complexity and performance. This paper presents a novel SurroundNet which only involves less than 150$K$ parameters (about 80-98 percent size reduction compared to SOTAs) and achieves very competitive performance. The proposed network comprises several Adaptive Retinex Blocks (ARBlock), which can be viewed as a novel extension of Single Scale Retinex in feature space. The core of our ARBlock is an efficient illumination estimation function called Adaptive Surround Function (ASF). It can be regarded as a general form of surround functions and be implemented by convolution layers. In addition, we also introduce a Low-Exposure Denoiser (LED) to smooth the low-light image before the enhancement. We evaluate the proposed method on the real-world low-light dataset. Experimental results demonstrate that the superiority of our submitted SurroundNet in both performance and network parameters against State-of-the-Art low-light image enhancement methods. Code is available at https: github.com/ouc-ocean-group/SurroundNet.
翻译:虽然在低光图像增强任务(CNNs)中,进动神经网络(CNNs)取得了显著进展,但CNN的关键问题之一是模型复杂度和性能的悖论。本文展示了一个全新的环绕网络,仅涉及不到150K美元的参数(与SOTAs相比,规模减少约80-98%),并取得了非常有竞争力的性能。拟议网络包括若干个适应性视网膜屏障(ARBlock),可被视为地貌空间中单一比例视距雷丁字节的新扩展。我们的ARBlock的核心是一个高效的照明估计功能,称为适应性表面功能(ASF)。它可以被视为环绕功能的一种一般形式,并且由演化层来实施。此外,我们还引入了一种低曝光度Denoiser(LED)来在增强之前平滑动低光图像。我们评估了真实世界低光度数据集的拟议方法。实验结果表明,我们提交的SurourNet在性能和网络参数上优于国家低光度图像增强方法。代码可在 httpsours:OsourSUB/Surth-crout-ch。