有序修补:针对多 DNN 视觉应用的高效设备上模型微调

IF 7.7 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Zhiqiang Cao;Yun Cheng;Zimu Zhou;Anqi Lu;Youbing Hu;Jie Liu;Min Zhang;Zhijun Li
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引用次数: 0

摘要

在边缘设备上越来越多地部署多个深度神经网络(DNN),正在彻底改变移动视觉应用,包括自动驾驶汽车、增强现实和视频监控。这些应用需要适应上下文和环境变化,通常是通过在没有云访问的边缘设备上进行微调来实现,这是因为数据隐私问题日益突出,而且迫切需要及时响应。然而,由于计算工作量巨大,在边缘设备上对多个 DNN 进行微调面临着巨大挑战。在本文中,我们介绍了 PatchLine,这是一个为多 DNN 视觉应用微调形式的高效设备上训练量身定制的新型框架。PatchLine 的核心是一种创新的轻量级适配器设计(称为 "补丁"),以及一种跨模型的战略性补丁更新方法。具体来说,PatchLine 采用了漂移自适应增量补丁、相关性感知热补丁和基于熵的样本选择,从整体上减少了可训练参数、训练历时和训练样本的数量。在四个数据集、三个视觉任务、四个骨干网和两个平台上进行的实验表明,与最先进的技术相比,PatchLine 平均降低了 55% 的总计算成本,而且不会影响准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Patching in Order: Efficient On-Device Model Fine-Tuning for Multi-DNN Vision Applications
The increasing deployment of multiple deep neural networks (DNNs) on edge devices is revolutionizing mobile vision applications, spanning autonomous vehicles, augmented reality, and video surveillance. These applications demand adaptation to contextual and environmental drifts, typically through fine-tuning on edge devices without cloud access, due to increasing data privacy concerns and the urgency for timely responses. However, fine-tuning multiple DNNs on edge devices faces significant challenges due to the substantial computational workload. In this paper, we present PatchLine, a novel framework tailored for efficient on-device training in the form of fine-tuning for multi-DNN vision applications. At the core of PatchLine is an innovative lightweight adapter design called patches coupled with a strategic patch updating approach across models. Specifically, PatchLine adopts drift-adaptive incremental patching, correlation-aware warm patching, and entropy-based sample selection, to holistically reduce the number of trainable parameters, training epochs, and training samples. Experiments on four datasets, three vision tasks, four backbones, and two platforms demonstrate that PatchLine reduces the total computational cost by an average of 55% without sacrificing accuracy compared to the state-of-the-art.
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来源期刊
IEEE Transactions on Mobile Computing
IEEE Transactions on Mobile Computing 工程技术-电信学
CiteScore
12.90
自引率
2.50%
发文量
403
审稿时长
6.6 months
期刊介绍: IEEE Transactions on Mobile Computing addresses key technical issues related to various aspects of mobile computing. This includes (a) architectures, (b) support services, (c) algorithm/protocol design and analysis, (d) mobile environments, (e) mobile communication systems, (f) applications, and (g) emerging technologies. Topics of interest span a wide range, covering aspects like mobile networks and hosts, mobility management, multimedia, operating system support, power management, online and mobile environments, security, scalability, reliability, and emerging technologies such as wearable computers, body area networks, and wireless sensor networks. The journal serves as a comprehensive platform for advancements in mobile computing research.
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