Transfer Learning for Convolutional Neural Networks in Tiny Deep Learning Environments

E. Fragkou, Vasileios Lygnos, Dimitrios Katsaros
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Abstract

Tiny Machine Learning (TinyML) and Transfer Learning (TL) are two widespread methods of successfully deploying ML models to resource-starving devices. Tiny ML provides compact models, that can run on resource-constrained environments, while TL contributes to the performance of the model by using pre-existing knowledge. So, in this work we propose a simple but efficient TL method, applied to three types of Convolutional Neural Networks (CNN), by retraining more than the last fully connected layer of a CNN in the target device, and specifically one or more of the last convolutional layers. Our results shown that our proposed method (FxC1) achieves about increase in accuracy and increase in convergence speed, while it incurs a bit larger energy consumption overhead, compared to two baseline techniques, namely one that retrains the last fully connected layer, and another that retrains the whole network.
微小深度学习环境下卷积神经网络的迁移学习
微型机器学习(TinyML)和迁移学习(TL)是成功将机器学习模型部署到资源匮乏设备的两种广泛方法。Tiny ML提供紧凑的模型,可以在资源受限的环境中运行,而TL通过使用预先存在的知识来提高模型的性能。因此,在这项工作中,我们提出了一种简单但有效的TL方法,应用于三种类型的卷积神经网络(CNN),通过在目标设备中重新训练CNN的最后一个完全连接层,特别是最后一个或多个卷积层。我们的结果表明,我们提出的方法(FxC1)实现了精度的提高和收敛速度的提高,但与两种基线技术相比,它会产生更大的能耗开销,即一种是重新训练最后一个完全连接层,另一种是重新训练整个网络。
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