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Autori principali: Li, Yuan-Ming, Zeng, Ling-An, Meng, Jing-Ke, Zheng, Wei-Shi
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2309.17105
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author Li, Yuan-Ming
Zeng, Ling-An
Meng, Jing-Ke
Zheng, Wei-Shi
author_facet Li, Yuan-Ming
Zeng, Ling-An
Meng, Jing-Ke
Zheng, Wei-Shi
contents Action Quality Assessment (AQA) is a task that tries to answer how well an action is carried out. While remarkable progress has been achieved, existing works on AQA assume that all the training data are visible for training at one time, but do not enable continual learning on assessing new technical actions. In this work, we address such a Continual Learning problem in AQA (Continual-AQA), which urges a unified model to learn AQA tasks sequentially without forgetting. Our idea for modeling Continual-AQA is to sequentially learn a task-consistent score-discriminative feature distribution, in which the latent features express a strong correlation with the score labels regardless of the task or action types.From this perspective, we aim to mitigate the forgetting in Continual-AQA from two aspects. Firstly, to fuse the features of new and previous data into a score-discriminative distribution, a novel Feature-Score Correlation-Aware Rehearsal is proposed to store and reuse data from previous tasks with limited memory size. Secondly, an Action General-Specific Graph is developed to learn and decouple the action-general and action-specific knowledge so that the task-consistent score-discriminative features can be better extracted across various tasks. Extensive experiments are conducted to evaluate the contributions of proposed components. The comparisons with the existing continual learning methods additionally verify the effectiveness and versatility of our approach. Data and code are available at https://github.com/iSEE-Laboratory/Continual-AQA.
format Preprint
id arxiv_https___arxiv_org_abs_2309_17105
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Continual Action Assessment via Task-Consistent Score-Discriminative Feature Distribution Modeling
Li, Yuan-Ming
Zeng, Ling-An
Meng, Jing-Ke
Zheng, Wei-Shi
Computer Vision and Pattern Recognition
Action Quality Assessment (AQA) is a task that tries to answer how well an action is carried out. While remarkable progress has been achieved, existing works on AQA assume that all the training data are visible for training at one time, but do not enable continual learning on assessing new technical actions. In this work, we address such a Continual Learning problem in AQA (Continual-AQA), which urges a unified model to learn AQA tasks sequentially without forgetting. Our idea for modeling Continual-AQA is to sequentially learn a task-consistent score-discriminative feature distribution, in which the latent features express a strong correlation with the score labels regardless of the task or action types.From this perspective, we aim to mitigate the forgetting in Continual-AQA from two aspects. Firstly, to fuse the features of new and previous data into a score-discriminative distribution, a novel Feature-Score Correlation-Aware Rehearsal is proposed to store and reuse data from previous tasks with limited memory size. Secondly, an Action General-Specific Graph is developed to learn and decouple the action-general and action-specific knowledge so that the task-consistent score-discriminative features can be better extracted across various tasks. Extensive experiments are conducted to evaluate the contributions of proposed components. The comparisons with the existing continual learning methods additionally verify the effectiveness and versatility of our approach. Data and code are available at https://github.com/iSEE-Laboratory/Continual-AQA.
title Continual Action Assessment via Task-Consistent Score-Discriminative Feature Distribution Modeling
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2309.17105