CVAIOct 27, 2021

International Workshop on Continual Semi-Supervised Learning: Introduction, Benchmarks and Baselines

arXiv:2110.14613v14 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of continual learning with limited labeled data for computer vision researchers, but is incremental as it builds on existing semi-supervised and continual learning concepts.

The paper formalizes continual semi-supervised learning (CSSL) and introduces two new benchmarks for activity recognition and crowd counting, showing that learning from unlabeled data streams is extremely challenging.

The aim of this paper is to formalize a new continual semi-supervised learning (CSSL) paradigm, proposed to the attention of the machine learning community via the IJCAI 2021 International Workshop on Continual Semi-Supervised Learning (CSSL-IJCAI), with the aim of raising field awareness about this problem and mobilizing its effort in this direction. After a formal definition of continual semi-supervised learning and the appropriate training and testing protocols, the paper introduces two new benchmarks specifically designed to assess CSSL on two important computer vision tasks: activity recognition and crowd counting. We describe the Continual Activity Recognition (CAR) and Continual Crowd Counting (CCC) challenges built upon those benchmarks, the baseline models proposed for the challenges, and describe a simple CSSL baseline which consists in applying batch self-training in temporal sessions, for a limited number of rounds. The results show that learning from unlabelled data streams is extremely challenging, and stimulate the search for methods that can encode the dynamics of the data stream.

Foundations

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