CVPR 2020 continual learning in computer vision competition: Approaches, results, current challenges and future directions

作者:

摘要

In the last few years, we have witnessed a renewed and fast-growing interest in continual learning with deep neural networks with the shared objective of making current AI systems more adaptive, efficient and autonomous. However, despite the significant and undoubted progress of the field in addressing the issue of catastrophic forgetting, benchmarking different continual learning approaches is a difficult task by itself. In fact, given the proliferation of different settings, training and evaluation protocols, metrics and nomenclature, it is often tricky to properly characterize a continual learning algorithm, relate it to other solutions and gauge its real-world applicability. The first Continual Learning in Computer Vision challenge held at CVPR in 2020 has been one of the first opportunities to evaluate different continual learning algorithms on a common hardware with a large set of shared evaluation metrics and 3 different settings based on the realistic CORe50 video benchmark. In this paper, we report the main results of the competition, which counted more than 79 teams registered and 11 finalists. We also summarize the winning approaches, current challenges and future research directions.

论文关键词:Continual learning,Lifelong learning,Incremental learning,Challenge,Computer vision

论文评审过程:Received 16 September 2020, Revised 10 May 2021, Accepted 21 November 2021, Available online 25 November 2021, Version of Record 29 November 2021.

论文官网地址:https://doi.org/10.1016/j.artint.2021.103635