论文标题
多减量与变化系数
Multi-Loss Weighting with Coefficient of Variations
论文作者
论文摘要
通过优化定义为多个损失的加权线性组合的目标函数来学习机器学习和计算机视觉中的许多有趣的任务。最终性能对为这些损失选择正确的(相对)权重敏感。通常通过将其采用大量参数搜索来完成一组良好的权重来完成。这在计算上很昂贵。在本文中,我们提出了一个基于变化系数的加权方案,并根据训练模型时观察到的特性设置权重。提出的方法结合了平衡损失的不确定性的度量,因此,在训练过程中损失权重演变而无需其他(基于学习)的优化。与文献中的许多减肥方法相反,我们专注于单一任务多签问题,例如单眼深度估计和语义分割,并表明多任务减肥方法无法在这些单个任务上使用。该方法的有效性在经验上显示了多个数据集的深度估计和语义分割。
Many interesting tasks in machine learning and computer vision are learned by optimising an objective function defined as a weighted linear combination of multiple losses. The final performance is sensitive to choosing the correct (relative) weights for these losses. Finding a good set of weights is often done by adopting them into the set of hyper-parameters, which are set using an extensive grid search. This is computationally expensive. In this paper, we propose a weighting scheme based on the coefficient of variations and set the weights based on properties observed while training the model. The proposed method incorporates a measure of uncertainty to balance the losses, and as a result the loss weights evolve during training without requiring another (learning based) optimisation. In contrast to many loss weighting methods in literature, we focus on single-task multi-loss problems, such as monocular depth estimation and semantic segmentation, and show that multi-task approaches for loss weighting do not work on those single-tasks. The validity of the approach is shown empirically for depth estimation and semantic segmentation on multiple datasets.