Shuchang Zhou , Hanxin Wang , Qingbo Wu , Fanman Meng , Linfeng Xu , Wei Zhang , Hongliang Li
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引用次数: 0
Abstract
Continual egocentric activity recognition aims to understand first-person activity from the multimodal data captured from wearable devices in streaming environments. Existing continual learning (CL) methods hardly acquire discriminative multimodal representations of activity classes from different isolated stages. To address this issue, this paper proposes an Adversarially Regularized Tri-Transformer Fusion (ARTF) model composed of three frozen transformer backbones with dynamic expansion architecture, which enables flexible and progressive multimodal representation fusion in the CL setting. To mitigate the confusion across different stages, we adopt an adversary-based confusion feature generation strategy to augment unknown classes, explicitly simulating out-stage features that closely resemble those within the stage. Then, the discriminative multimodal fusion representations could be learned by joint training on the current and augmented data at different stages. Experiments show that our model significantly outperforms state-of-the-art CL methods for multimodal continual egocentric activity recognition.
期刊介绍:
Displays is the international journal covering the research and development of display technology, its effective presentation and perception of information, and applications and systems including display-human interface.
Technical papers on practical developments in Displays technology provide an effective channel to promote greater understanding and cross-fertilization across the diverse disciplines of the Displays community. Original research papers solving ergonomics issues at the display-human interface advance effective presentation of information. Tutorial papers covering fundamentals intended for display technologies and human factor engineers new to the field will also occasionally featured.