计算机科学
微控制器
自编码
灵活性(工程)
人工神经网络
人工智能
机器学习
深度学习
物联网
推论
无监督学习
嵌入式系统
数学
统计
作者
Haoyu Ren,Darko Anicic,Thomas A. Runkler
标识
DOI:10.1109/ijcnn52387.2021.9533927
摘要
Tiny machine learning (TinyML) is a fast-growing research area committed to democratizing deep learning for all-pervasive microcontrollers (MCUs). Challenged by the constraints on power, memory, and computation, TinyML has achieved significant advancement in the last few years. However, the current TinyML solutions are based on batch/offline setting and support only the neural network's inference on MCUs. The neural network is first trained using a large amount of pre-collected data on a powerful machine and then flashed to MCUs. This results in a static model, hard to adapt to new data, and impossible to adjust for different scenarios, which impedes the flexibility of the Internet of Things (IoT). To address these problems, we propose a novel system called TinyOL (TinyML with Online-Learning), which enables incremental on-device training on streaming data. TinyOL is based on the concept of online learning and is suitable for constrained IoT devices. We experiment TinyOL under supervised and unsupervised setups using an autoencoder neural network. Finally, we report the performance of the proposed solution and show its effectiveness and feasibility.
科研通智能强力驱动
Strongly Powered by AbleSci AI