视频中未来深度预测的元辅助学习

Huan Liu, Zhixiang Chi, Yuanhao Yu, Yang Wang, Jun Chen, Jingshan Tang
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引用次数: 5

摘要

我们考虑了视频中未来深度预测的新问题。给定视频中观察到的一系列帧,目标是预测尚未观察到的未来帧的深度图。深度估计在智能系统的场景理解和决策中起着至关重要的作用。预测未来的深度地图对于自动驾驶汽车预测周围物体的行为很有价值。我们针对这个问题提出的模型具有两个分支的体系结构。一个分支是用于未来深度预测的主要任务。另一个分支是用于图像重建的辅助任务。辅助分支可以作为正则化。受最近一些测试时间自适应工作的启发,我们在测试期间使用辅助任务使模型适应特定的测试视频。我们还提出了一种新的元辅助学习,专门学习模型以有效适应测试时间。实验结果表明,我们提出的方法优于其他替代方法。
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Meta-Auxiliary Learning for Future Depth Prediction in Videos
We consider a new problem of future depth prediction in videos. Given a sequence of observed frames in a video, the goal is to predict the depth map of a future frame that has not been observed yet. Depth estimation plays a vital role for scene understanding and decision-making in intelligent systems. Predicting future depth maps can be valuable for autonomous vehicles to anticipate the behaviours of their surrounding objects. Our proposed model for this problem has a two-branch architecture. One branch is for the primary task of future depth prediction. The other branch is for an auxiliary task of image reconstruction. The auxiliary branch can act as a regularization. Inspired by some recent work on test-time adaption, we use the auxiliary task during testing to adapt the model to a specific test video. We also propose a novel meta-auxiliary learning that learns the model specifically for the purpose of effective test-time adaptation. Experimental results demonstrate that our proposed approach outperforms other alternative methods.
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