We present Curve Distillation, CuDi, for efficient and controllable exposure adjustment without the requirement of paired or unpaired data during training. Our method inherits the zero-reference learning and curve-based framework from an effective low-light image enhancement method, Zero-DCE, with further speed up in its inference speed, reduction in its model size, and extension to controllable exposure adjustment. The improved inference speed and lightweight model are achieved through novel curve distillation that approximates the time-consuming iterative operation in the conventional curve-based framework by high-order curve's tangent line. The controllable exposure adjustment is made possible with a new self-supervised spatial exposure control loss that constrains the exposure levels of different spatial regions of the output to be close to the brightness distribution of an exposure map serving as an input condition. Different from most existing methods that can only correct either underexposed or overexposed photos, our approach corrects both underexposed and overexposed photos with a single model. Notably, our approach can additionally adjust the exposure levels of a photo globally or locally with the guidance of an input condition exposure map, which can be pre-defined or manually set in the inference stage. Through extensive experiments, we show that our method is appealing for its fast, robust, and flexible performance, outperforming state-of-the-art methods in real scenes. Project page: https://li-chongyi.github.io/CuDi_files/.
翻译:我们提出曲线蒸馏(Cudi),用于在培训期间无需配对或无偏差数据的情况下高效和可控的暴露调整。我们的方法从有效的低光图像增强方法(Zero-DCE)中继承零参考学习和曲线框架,从控制低光图像增强方法(Zero-DCE)中继承零参考学习和曲线框架,进一步加快其感应速度,缩小其模型大小,推广到控制暴露调整。改进的推断速度和轻量模型是通过新颖的曲线蒸馏实现的,通过高阶曲线曲线曲线的正切线,接近传统曲线框架中耗时的迭代操作。我们的方法可以通过新的高曲线曲线曲线曲线曲线的正切线,使控制暴露调整成为可能,而新的自上型空间暴露控制损失则由新的自上上型空间暴露控制框架(Zero-DCE) 取代了不同空间区域作为输入条件的亮度分布分布分布。不同于大多数现有方法,这些方法只能纠正过深或过热的图片,我们的方法可以纠正过低的页和超度照片。 。值得注意的是,我们的方法可以进一步调整真实的图像/透视距的图像,在快速的图像中,在快速的图像中,我们设定的实验中可以展示中进行。