View a PDF of the paper titled A Tiny Supervised ODL Core with Auto Data Pruning for Human Activity Recognition, by Hiroki Matsutani and 1 other authors
Abstract:In this paper, we introduce a low-cost and low-power tiny supervised on-device learning (ODL) core that can address the distributional shift of input data for human activity recognition. Although ODL for resource-limited edge devices has been studied recently, how exactly to provide the training labels to these devices at runtime remains an open-issue. To address this problem, we propose to combine an automatic data pruning with supervised ODL to reduce the number queries needed to acquire predicted labels from a nearby teacher device and thus save power consumption during model retraining. The data pruning threshold is automatically tuned, eliminating a manual threshold tuning. As a tinyML solution at a few mW for the human activity recognition, we design a supervised ODL core that supports our automatic data pruning using a 45nm CMOS process technology. We show that the required memory size for the core is smaller than the same-shaped multilayer perceptron (MLP) and the power consumption is only 3.39mW. Experiments using a human activity recognition dataset show that the proposed automatic data pruning reduces the communication volume by 55.7% and power consumption accordingly with only 0.9% accuracy loss.
Submission history
From: Hiroki Matsutani [view email]
[v1]
Fri, 2 Aug 2024 14:09:39 UTC (5,052 KB)
[v2]
Fri, 27 Sep 2024 00:44:04 UTC (5,052 KB)
Source link
lol