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Main Authors: Yang, Tianjian, Zhou, Hao, Liu, Shuo, Guo, Kaiwen, Hou, Yiwen, Du, Haohua, Liu, Zhi, Li, Xiang-Yang
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.16933
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author Yang, Tianjian
Zhou, Hao
Liu, Shuo
Guo, Kaiwen
Hou, Yiwen
Du, Haohua
Liu, Zhi
Li, Xiang-Yang
author_facet Yang, Tianjian
Zhou, Hao
Liu, Shuo
Guo, Kaiwen
Hou, Yiwen
Du, Haohua
Liu, Zhi
Li, Xiang-Yang
contents The significance of intelligent sensing systems is growing in the realm of smart services. These systems extract relevant signal features and generate informative representations for particular tasks. However, building the feature extraction component for such systems requires extensive domain-specific expertise or data. The exceptionally rapid development of foundation models is likely to usher in newfound abilities in such intelligent sensing. We propose a new scheme for sensing model, which we refer to as semi-generalist sensing model (SGSM). SGSM is able to semiautomatically solve various tasks using relatively less task-specific labeled data compared to traditional systems. Built through the analysis of the common theoretical model, SGSM can depict different modalities, such as the acoustic and Wi-Fi signal. Experimental results on such two heterogeneous sensors illustrate that SGSM functions across a wide range of scenarios, thereby establishing its broad applicability. In some cases, SGSM even achieves better performance than sensor-specific specialized solutions. Wi-Fi evaluations indicate a 20\% accuracy improvement when applying SGSM to an existing sensing model.
format Preprint
id arxiv_https___arxiv_org_abs_2406_16933
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SGSM: A Foundation-model-like Semi-generalist Sensing Model
Yang, Tianjian
Zhou, Hao
Liu, Shuo
Guo, Kaiwen
Hou, Yiwen
Du, Haohua
Liu, Zhi
Li, Xiang-Yang
Signal Processing
Artificial Intelligence
The significance of intelligent sensing systems is growing in the realm of smart services. These systems extract relevant signal features and generate informative representations for particular tasks. However, building the feature extraction component for such systems requires extensive domain-specific expertise or data. The exceptionally rapid development of foundation models is likely to usher in newfound abilities in such intelligent sensing. We propose a new scheme for sensing model, which we refer to as semi-generalist sensing model (SGSM). SGSM is able to semiautomatically solve various tasks using relatively less task-specific labeled data compared to traditional systems. Built through the analysis of the common theoretical model, SGSM can depict different modalities, such as the acoustic and Wi-Fi signal. Experimental results on such two heterogeneous sensors illustrate that SGSM functions across a wide range of scenarios, thereby establishing its broad applicability. In some cases, SGSM even achieves better performance than sensor-specific specialized solutions. Wi-Fi evaluations indicate a 20\% accuracy improvement when applying SGSM to an existing sensing model.
title SGSM: A Foundation-model-like Semi-generalist Sensing Model
topic Signal Processing
Artificial Intelligence
url https://arxiv.org/abs/2406.16933