Revisiting Gradient-Based Uncertainty for Monocular Depth Estimation

Julia Hornauer;Amir El-Ghoussani;Vasileios Belagiannis
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Abstract

Monocular depth estimation, similar to other image-based tasks, is prone to erroneous predictions due to ambiguities in the image, for example, caused by dynamic objects or shadows. For this reason, pixel-wise uncertainty assessment is required for safety-critical applications to highlight the areas where the prediction is unreliable. We address this in a post hoc manner and introduce gradient-based uncertainty estimation for already trained depth estimation models. To extract gradients without depending on the ground truth depth, we introduce an auxiliary loss function based on the consistency of the predicted depth and a reference depth. The reference depth, which acts as pseudo ground truth, is in fact generated using a simple image or feature augmentation, making our approach simple and effective. To obtain the final uncertainty score, the derivatives w.r.t. the feature maps from single or multiple layers are calculated using back-propagation. We demonstrate that our gradient-based approach is effective in determining the uncertainty without re-training using the two standard depth estimation benchmarks KITTI and NYU. In particular, for models trained with monocular sequences and therefore most prone to uncertainty, our method outperforms related approaches.
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单目深度估计中基于梯度的不确定性的再探讨
与其他基于图像的任务类似,单目深度估计容易由于图像中的模糊性(例如,由动态物体或阴影引起)而导致错误预测。出于这个原因,对于安全关键应用程序,需要逐像素的不确定性评估,以突出显示预测不可靠的区域。我们以事后的方式解决了这个问题,并为已经训练好的深度估计模型引入了基于梯度的不确定性估计。为了在不依赖地面真值深度的情况下提取梯度,我们引入了一个基于预测深度和参考深度一致性的辅助损失函数。作为伪地面真值的参考深度实际上是使用简单的图像或特征增强生成的,使我们的方法简单有效。为了得到最终的不确定性分数,利用反向传播方法计算单层或多层特征映射的导数w.r.t.。我们证明了基于梯度的方法在确定不确定性方面是有效的,而不需要使用两个标准深度估计基准KITTI和NYU进行重新训练。特别是,对于用单目序列训练的模型,因此最容易出现不确定性,我们的方法优于相关方法。
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