单目视频中的在线深度学习对抗遗忘

Zhenyu Zhang, Stéphane Lathuilière, E. Ricci, N. Sebe, Yan Yan, Jian Yang
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引用次数: 34

摘要

在线深度学习是一个不断调整深度估计模型来处理不断变化的环境的问题。这个问题很有挑战性,因为网络很容易对当前环境过拟合而忘记过去的经验。为了解决这一问题,本文提出了一种新的学习防止遗忘(LPF)方法,用于以无监督方式在线单深度适应新的目标域。LPF不需要更新通用参数,而是通过学习适配模块来有效地调整特征表示和分布,而不会丢失在线状态下预先学习的知识。具体来说,为了适应视频中的时间连续深度模式,我们引入了一种新的元学习方法,通过将在线适应过程结合到学习目标中来学习适配器模块。为了进一步避免过拟合,我们提出了一种新的时间一致正则化来协调每个在线学习步骤的梯度下降过程。对真实数据集的广泛评估表明,该方法在参数非常有限的情况下显著提高了估计质量。
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Online Depth Learning Against Forgetting in Monocular Videos
Online depth learning is the problem of consistently adapting a depth estimation model to handle a continuously changing environment. This problem is challenging due to the network easily overfits on the current environment and forgets its past experiences. To address such problem, this paper presents a novel Learning to Prevent Forgetting (LPF) method for online mono-depth adaptation to new target domains in unsupervised manner. Instead of updating the universal parameters, LPF learns adapter modules to efficiently adjust the feature representation and distribution without losing the pre-learned knowledge in online condition. Specifically, to adapt temporal-continuous depth patterns in videos, we introduce a novel meta-learning approach to learn adapter modules by combining online adaptation process into the learning objective. To further avoid overfitting, we propose a novel temporal-consistent regularization to harmonize the gradient descent procedure at each online learning step. Extensive evaluations on real-world datasets demonstrate that the proposed method, with very limited parameters, significantly improves the estimation quality.
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