相机姿势问题:通过减轻姿势分布偏差来改善深度预测

Yunhan Zhao, Shu Kong, Charless C. Fowlkes
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引用次数: 20

摘要

单目深度预测器通常是在大规模的训练集上训练的,这些训练集自然地偏向于相机姿势的分布。因此,训练有素的预测器无法对在不常见相机姿势下捕获的测试示例做出可靠的深度预测。为了解决这个问题,我们提出了两种在训练和预测过程中利用相机姿势的新技术。首先,我们引入了一个简单的视角感知数据增强,通过以几何一致的方式干扰现有的训练样例,合成具有更多样化视图的新训练样例。其次,我们提出了一个条件模型,该模型通过将每个图像的相机姿势编码为输入的一部分来利用先验知识。我们表明,联合应用这两种方法可以提高在不常见甚至从未见过的相机姿势下捕获的图像的深度预测。我们表明,当应用于一系列不同的预测器架构时,我们的方法提高了性能。最后,我们证明了当在真实图像上评估时,显式编码相机姿态分布可以提高综合训练深度预测器的泛化性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Camera Pose Matters: Improving Depth Prediction by Mitigating Pose Distribution Bias
Monocular depth predictors are typically trained on large-scale training sets which are naturally biased w.r.t the distribution of camera poses. As a result, trained predictors fail to make reliable depth predictions for testing examples captured under uncommon camera poses. To address this issue, we propose two novel techniques that exploit the camera pose during training and prediction. First, we introduce a simple perspective-aware data augmentation that synthesizes new training examples with more diverse views by perturbing the existing ones in a geometrically consistent manner. Second, we propose a conditional model that exploits the per-image camera pose as prior knowledge by encoding it as a part of the input. We show that jointly applying the two methods improves depth prediction on images captured under uncommon and even never-before-seen camera poses. We show that our methods improve performance when applied to a range of different predictor architectures. Lastly, we show that explicitly encoding the camera pose distribution improves the generalization performance of a synthetically trained depth predictor when evaluated on real images.
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