Self-Train: Self-Supervised On-Device Training for Post-Deployment Adaptation

Jinhao Liu, Xiaofan Yu, T. Simunic
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Abstract

Recent years have witnessed a significant increase in deploying lightweight machine learning (ML) on embedded systems. The list of applications range from self-driving vehicles to smart environmental monitoring. However, the performance of ML models after the deployment degrades because of potential drifting of the device or the environment. In this paper, we propose Self-Train, a self-supervised on-device training method for ML models to adapt to post-deployment drifting without labels. Self-Train employs offline contrastive feature learning and online drift detection with self-supervised adaptation. Experiments on images and real-world sensor datasets demonstrate consistent accuracy improvements over state-of-the-art online unsupervised methods with 2.45× at maximum, while maintaining lower execution time with a maximum of 32.7× speedup.
自我训练:自我监督的设备上培训部署后适应
近年来,在嵌入式系统上部署轻量级机器学习(ML)的情况显著增加。应用范围从自动驾驶汽车到智能环境监测。然而,由于设备或环境的潜在漂移,部署后ML模型的性能会下降。在本文中,我们提出了Self-Train,一种机器学习模型的自监督设备上训练方法,以适应没有标签的部署后漂移。自训练采用了离线对比特征学习和在线漂移检测和自监督自适应。在图像和真实传感器数据集上的实验表明,与最先进的在线无监督方法相比,该方法的精度提高了2.45倍,同时保持了较低的执行时间,最大加速速度为32.7倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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