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vCLIMB: A Novel Video Class Incremental Learning Benchmark

About

Continual learning (CL) is under-explored in the video domain. The few existing works contain splits with imbalanced class distributions over the tasks, or study the problem in unsuitable datasets. We introduce vCLIMB, a novel video continual learning benchmark. vCLIMB is a standardized test-bed to analyze catastrophic forgetting of deep models in video continual learning. In contrast to previous work, we focus on class incremental continual learning with models trained on a sequence of disjoint tasks, and distribute the number of classes uniformly across the tasks. We perform in-depth evaluations of existing CL methods in vCLIMB, and observe two unique challenges in video data. The selection of instances to store in episodic memory is performed at the frame level. Second, untrimmed training data influences the effectiveness of frame sampling strategies. We address these two challenges by proposing a temporal consistency regularization that can be applied on top of memory-based continual learning methods. Our approach significantly improves the baseline, by up to 24% on the untrimmed continual learning task.

Andr\'es Villa, Kumail Alhamoud, Juan Le\'on Alc\'azar, Fabian Caba Heilbron, Victor Escorcia, Bernard Ghanem• 2022

Related benchmarks

TaskDatasetResultRank
Unsupervised Video Class-Incremental LearningUCF101 (average of three splits)
Avg Class Accuracy67.9
9
Unsupervised Video Class-Incremental LearningHMDB51 (average of three splits)
Avg Accuracy32.16
9
Unsupervised Video Class-Incremental LearningSomething-to-Something V2 (SSv2)
Avg Accuracy9.87
9
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