Document detail
ID

oai:arXiv.org:2408.01988

Topic
Computer Science - Machine Learnin... Computer Science - Artificial Inte... Computer Science - Hardware Archit...
Author
Amirshahi, Alireza Toosi, Maedeh H. Mohammadi, Siamak Albini, Stefano Schiavone, Pasquale Davide Ansaloni, Giovanni Aminifar, Amir Atienza, David
Category

Computer Science

Year

2024

listing date

8/7/2024

Keywords
systems updating epileptic auc wearable
Metrics

Abstract

Wearable systems provide continuous health monitoring and can lead to early detection of potential health issues.

However, the lifecycle of wearable systems faces several challenges.

First, effective model training for new wearable devices requires substantial labeled data from various subjects collected directly by the wearable.

Second, subsequent model updates require further extensive labeled data for retraining.

Finally, frequent model updating on the wearable device can decrease the battery life in long-term data monitoring.

Addressing these challenges, in this paper, we propose MetaWearS, a meta-learning method to reduce the amount of initial data collection required.

Moreover, our approach incorporates a prototypical updating mechanism, simplifying the update process by modifying the class prototype rather than retraining the entire model.

We explore the performance of MetaWearS in two case studies, namely, the detection of epileptic seizures and the detection of atrial fibrillation.

We show that by fine-tuning with just a few samples, we achieve 70% and 82% AUC for the detection of epileptic seizures and the detection of atrial fibrillation, respectively.

Compared to a conventional approach, our proposed method performs better with up to 45% AUC.

Furthermore, updating the model with only 16 minutes of additional labeled data increases the AUC by up to 5.3%.

Finally, MetaWearS reduces the energy consumption for model updates by 456x and 418x for epileptic seizure and AF detection, respectively.

Amirshahi, Alireza,Toosi, Maedeh H.,Mohammadi, Siamak,Albini, Stefano,Schiavone, Pasquale Davide,Ansaloni, Giovanni,Aminifar, Amir,Atienza, David, 2024, MetaWearS: A Shortcut in Wearable Systems Lifecycle with Only a Few Shots

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