Saliency detection methods are central to several real-world applications such as robot navigation and satellite imagery. However, the performance of existing methods deteriorate under low-light conditions because training datasets mostly comprise of well-lit images. One possible solution is to collect a new dataset for low-light conditions. This involves pixel-level annotations, which is not only tedious and time-consuming but also infeasible if a huge training corpus is required. We propose a technique that performs classical band-pass filtering in the Fourier space to transform well-lit images to low-light images and use them as a proxy for real low-light images. Unlike popular deep learning approaches which require learning thousands of parameters and enormous amounts of training data, the proposed transformation is fast and simple and easy to extend to other tasks such as low-light depth estimation. Our experiments show that the state-of-the-art saliency detection and depth estimation networks trained on our proxy low-light images perform significantly better on real low-light images than networks trained using existing strategies.
翻译:翻译后的标题:
基于光谱的低光图像转换用于显着性检测
翻译后的摘要:
显着性检测方法对于机器人导航和卫星图像等多种现实世界应用至关重要。然而,由于现有方法的训练数据集主要由亮度较高的图像组成,因此其在低光条件下的性能会下降。其中一种可能的解决方案是收集适用于低光条件的新数据集。但是,这需要进行像素级别的注释,因此费时费力。我们提出了一种技术,该技术在傅里叶空间中执行传统的带通滤波,将亮度较高的图像转换为低光图像,并将其用作真实低光图像的代理。与流行的深度学习方法不同,我们提出的变换方法速度快、简单、易于推广到其他任务,例如低光深度估计。我们的实验表明,使用我们的代理低光图像训练的最先进的显着性检测和深度估计网络在真实低光图像上的性能显着优于使用现有策略训练的网络。