|国家预印本平台
首页|Federated Learning in Open- and Closed-Loop EMG Decoding: A Privacy and Performance Perspective

Federated Learning in Open- and Closed-Loop EMG Decoding: A Privacy and Performance Perspective

Federated Learning in Open- and Closed-Loop EMG Decoding: A Privacy and Performance Perspective

来源:Arxiv_logoArxiv
英文摘要

Invasive and non-invasive neural interfaces hold promise as high-bandwidth input devices for next-generation technologies. However, neural signals inherently encode sensitive information about an individual's identity and health, making data sharing for decoder training a critical privacy challenge. Federated learning (FL), a distributed, privacy-preserving learning framework, presents a promising solution, but it remains unexplored in closed-loop adaptive neural interfaces. Here, we introduce FL-based neural decoding and systematically evaluate its performance and privacy using high-dimensional electromyography signals in both open- and closed-loop scenarios. In open-loop simulations, FL significantly outperformed local learning baselines, demonstrating its potential for high-performance, privacy-conscious neural decoding. In contrast, closed-loop user studies required adapting FL methods to accommodate single-user, real-time interactions, a scenario not supported by standard FL. This modification resulted in local learning decoders surpassing the adapted FL approach in closed-loop performance, yet local learning still carried higher privacy risks. Our findings highlight a critical performance-privacy tradeoff in real-time adaptive applications and indicate the need for FL methods specifically designed for co-adaptive, single-user applications.

Kai Malcolm、César Uribe、Momona Yamagami

计算技术、计算机技术

Kai Malcolm,César Uribe,Momona Yamagami.Federated Learning in Open- and Closed-Loop EMG Decoding: A Privacy and Performance Perspective[EB/OL].(2025-07-16)[2025-08-10].https://arxiv.org/abs/2507.12652.点此复制

评论