利用对比学习从运动和声音传感器中识别人类活动

Rui Zhou, Running Zhao, Edith C. H. Ngai
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引用次数: 0

摘要

本文将人类活动识别作为预训练的多模态对比学习(MCL)模型的下游任务,并通过允许模型具有多个源模态来打破一模态对一模态对比范式的惯例。与MCL中普遍存在的一个源模态和一个目标模态相互对应的假设不同,本研究考虑了需要多个具有互补信息的源模态来匹配目标模态的可能性。特别是,我们利用大规模预训练的音频-语言对比模型,并将其扩展到接受IMU和音频输入。实验结果表明,使用互补源模态优于单独使用任何源模态,性能提高10.3%至35.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition From Motion and Acoustic Sensors Using Contrastive Learning
In this paper, we formulate human activity recognition as a downstream task of pretrained multimodal contrastive learning (MCL) models and break the convention of the one-modality-to-one-modality contrastive paradigm by allowing the models to have more than one source modality. Different from the prevailing assumption in MCL that one source modality and one target modality are the counterparts of each other, this work considers the possibility where it takes multiple source modalities with complementary information to match up to a target modality. In particular, we leverage a large-scale pretrained audio-language contrastive model and extend it to accepting IMU and audio input. The experiment results indicate the superiority of using complementary source modalities over using any source modality alone with 10.3% to 35.0% performance gain.
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