Self-supervised Test-time Adaptation on Video Data

Fatemeh Azimi, Sebastián M. Palacio, Federico Raue, Jörn Hees, Luca Bertinetto, A. Dengel
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引用次数: 14

Abstract

In typical computer vision problems revolving around video data, pre-trained models are simply evaluated at test time, without adaptation. This general approach clearly cannot capture the shifts that will likely arise between the distributions from which training and test data have been sampled. Adapting a pre-trained model to a new video en-countered at test time could be essential to avoid the potentially catastrophic effects of such shifts. However, given the inherent impossibility of labeling data only available at test-time, traditional "fine-tuning" techniques cannot be lever-aged in this highly practical scenario. This paper explores whether the recent progress in test-time adaptation in the image domain and self-supervised learning can be lever-aged to adapt a model to previously unseen and unlabelled videos presenting both mild (but arbitrary) and severe covariate shifts. In our experiments, we show that test-time adaptation approaches applied to self-supervised methods are always beneficial, but also that the extent of their effectiveness largely depends on the specific combination of the algorithms used for adaptation and self-supervision, and also on the type of covariate shift taking place.
视频数据的自监督测试时间适应
在典型的围绕视频数据的计算机视觉问题中,预先训练的模型只是在测试时进行评估,而不进行调整。这种一般的方法显然不能捕捉到在训练和测试数据被采样的分布之间可能出现的变化。将预先训练好的模型适应测试时遇到的新视频,对于避免这种转变可能带来的灾难性影响至关重要。然而,考虑到标记仅在测试时可用的数据的固有不可能性,传统的“微调”技术无法在这种高度实用的场景中发挥作用。本文探讨了图像域和自监督学习中测试时间适应的最新进展是否可以被利用来使模型适应以前未见过的和未标记的视频,这些视频呈现轻微(但任意)和严重的协变量移位。在我们的实验中,我们表明,将测试时间适应方法应用于自监督方法总是有益的,但其有效性的程度在很大程度上取决于用于自适应和自监督的算法的具体组合,以及发生协变量移位的类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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