论文标题
蒙特卡洛辍学合奏,用于强大的照明估计
Monte Carlo Dropout Ensembles for Robust Illumination Estimation
论文作者
论文摘要
计算颜色稳定性是许多相机系统中使用的预处理步骤。主要目的是打折照明对场景颜色的影响,并恢复对象的原始颜色。最近,已经提出了几种基于学习的方法来解决这个问题,并且通常导致在平均错误方面提高最先进的表现。但是,对于极端样本,这些方法失败并导致高误差。在本文中,我们通过根据其输出不确定性来汇总不同的深度学习方法来解决此限制。我们使用Monte Carlo辍学来估算每种方法的相对不确定性,并获得最终的照明估计值,作为不同模型的总和,由它们相应的不确定性的对数截至对数进行加权。所提出的框架可在Intel-Tau数据集上进行最新性能。
Computational color constancy is a preprocessing step used in many camera systems. The main aim is to discount the effect of the illumination on the colors in the scene and restore the original colors of the objects. Recently, several deep learning-based approaches have been proposed to solve this problem and they often led to state-of-the-art performance in terms of average errors. However, for extreme samples, these methods fail and lead to high errors. In this paper, we address this limitation by proposing to aggregate different deep learning methods according to their output uncertainty. We estimate the relative uncertainty of each approach using Monte Carlo dropout and the final illumination estimate is obtained as the sum of the different model estimates weighted by the log-inverse of their corresponding uncertainties. The proposed framework leads to state-of-the-art performance on INTEL-TAU dataset.