newsence
來源篩選

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

arXiv.org

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.

newsence

開放式與閉迴路肌電訊號解碼中的聯邦學習:隱私與效能的視角

arXiv.org
15 天前

AI 生成摘要

本研究探討在開放式與閉迴路肌電訊號(EMG)解碼中應用聯邦學習(FL),並評估其隱私與效能。在開放式模擬中,FL展現了高效能、注重隱私的解碼潛力;然而,在即時閉迴路使用者研究中,調整後的FL方法在效能上不如局部學習,凸顯了效能與隱私的權衡,並指出需要專為協同適應式單一使用者應用而設計的FL方法。

開放與封閉迴路肌電訊號解碼中的聯邦學習:隱私與效能觀點

電腦科學 > 機器學習

標題:開放與封閉迴路肌電訊號解碼中的聯邦學習:隱私與效能觀點

提交歷史

存取論文:

license icon

參考文獻與引用

BibTeX 格式的引用

書籤

BibSonomy logo Reddit logo

文獻目錄與引用工具

與本文相關的程式碼、資料與媒體

演示

推薦系統與搜尋工具

arXivLabs:與社群合作者的實驗性專案

arXivLabs 是一個框架,允許合作者直接在我們的網站上開發和分享新的 arXiv 功能。

與 arXivLabs 合作的個人和組織都擁抱並接受了我們開放、社群、卓越和使用者資料隱私的價值觀。 arXiv 致力於這些價值觀,並且只與遵守這些價值觀的合作夥伴合作。

對於一個能為 arXiv 社群增加價值的專案有想法嗎? 了解更多關於 arXivLabs 的資訊。