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XTransfer: Modality-Agnostic Few-Shot Model Transfer for Human Sensing at the Edge

About

Deep learning for human sensing on edge systems presents significant potential for smart applications. However, its training and development are hindered by the limited availability of sensor data and resource constraints of edge systems. While transferring pre-trained models to different sensing applications is promising, existing methods often require extensive sensor data and computational resources, resulting in high costs and limited transferability. In this paper, we propose XTransfer, a first-of-its-kind method enabling modality-agnostic, few-shot model transfer with resource-efficient design. XTransfer flexibly uses pre-trained models and transfers knowledge across different modalities by (i) model repairing that safely mitigates modality shift by adapting pre-trained layers with only few sensor data, and (ii) layer recombining that efficiently searches and recombines layers of interest from source models in a layer-wise manner to restructure models. We benchmark various baselines across diverse human sensing datasets spanning different modalities. The results show that XTransfer achieves state-of-the-art performance while significantly reducing the costs of sensor data collection, model training, and edge deployment.

Yu Zhang, Xi Zhang, Hualin Zhou, Xinyuan Chen, Shang Gao, Hong Jia, Jianfei Yang, Yuankai Qi, Tao Gu• 2025

Related benchmarks

TaskDatasetResultRank
Human SensingHHAR
ATR Ratio2.09
27
Human SensingGesture
ATR Ratio1.9
27
Human SensingEmotion
ATR Ratio1.73
24
Human SensingChestX
ATR Ratio0.68
24
ClassificationHHAR 5-shot
Accuracy74.3
10
ClassificationHHAR 10-shot
Accuracy80.7
10
ClassificationWESAD 3-shot
Accuracy77.9
10
ClassificationWESAD 5-shot
Accuracy78.4
10
ClassificationWESAD 10-shot
Accuracy81.8
10
ClassificationWriting 5-shot
Accuracy87
10
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