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Main Authors: Zhang, Yanyi, Qiu, Binglin, Jia, Qi, Liu, Yu, He, Ran
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.01739
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author Zhang, Yanyi
Qiu, Binglin
Jia, Qi
Liu, Yu
He, Ran
author_facet Zhang, Yanyi
Qiu, Binglin
Jia, Qi
Liu, Yu
He, Ran
contents Most incremental learners excessively prioritize coarse classes of objects while neglecting various kinds of states (e.g. color and material) attached to the objects. As a result, they are limited in the ability to reason fine-grained compositionality of state-object pairs. To remedy this limitation, we propose a novel task called Compositional Incremental Learning (composition-IL), enabling the model to recognize state-object compositions as a whole in an incremental learning fashion. Since the lack of suitable benchmarks, we re-organize two existing datasets and make them tailored for composition-IL. Then, we propose a prompt-based Composition Incremental Learner (CompILer), to overcome the ambiguous composition boundary problem which challenges composition-IL largely. Specifically, we exploit multi-pool prompt learning, which is regularized by inter-pool prompt discrepancy and intra-pool prompt diversity. Besides, we devise object-injected state prompting by using object prompts to guide the selection of state prompts. Furthermore, we fuse the selected prompts by a generalized-mean strategy, to eliminate irrelevant information learned in the prompts. Extensive experiments on two datasets exhibit state-of-the-art performance achieved by CompILer.
format Preprint
id arxiv_https___arxiv_org_abs_2411_01739
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Not Just Object, But State: Compositional Incremental Learning without Forgetting
Zhang, Yanyi
Qiu, Binglin
Jia, Qi
Liu, Yu
He, Ran
Computer Vision and Pattern Recognition
Most incremental learners excessively prioritize coarse classes of objects while neglecting various kinds of states (e.g. color and material) attached to the objects. As a result, they are limited in the ability to reason fine-grained compositionality of state-object pairs. To remedy this limitation, we propose a novel task called Compositional Incremental Learning (composition-IL), enabling the model to recognize state-object compositions as a whole in an incremental learning fashion. Since the lack of suitable benchmarks, we re-organize two existing datasets and make them tailored for composition-IL. Then, we propose a prompt-based Composition Incremental Learner (CompILer), to overcome the ambiguous composition boundary problem which challenges composition-IL largely. Specifically, we exploit multi-pool prompt learning, which is regularized by inter-pool prompt discrepancy and intra-pool prompt diversity. Besides, we devise object-injected state prompting by using object prompts to guide the selection of state prompts. Furthermore, we fuse the selected prompts by a generalized-mean strategy, to eliminate irrelevant information learned in the prompts. Extensive experiments on two datasets exhibit state-of-the-art performance achieved by CompILer.
title Not Just Object, But State: Compositional Incremental Learning without Forgetting
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.01739