AI Agents 相关度: 6/10

The Spatial and Temporal Resolution of Motor Intention in Multi-Target Prediction

Marie Dominique Schmidt, Ioannis Iossifidis
arXiv: 2603.05418v1 发布: 2026-03-05 更新: 2026-03-05

AI 摘要

该研究利用EMG信号预测多目标运动意图,提高康复辅助设备的主动适应性。

主要贡献

  • 提出基于EMG信号的多目标运动意图预测框架
  • 评估了随机森林和卷积神经网络在运动意图解码中的性能
  • 分析了EMG通道、特征集和时间窗口对意图解码的影响

方法论

结合数据驱动的时间分割和经典/深度学习分类器,分析延迟到达任务中EMG数据,预测运动方向和目标位置。

原文摘要

Reaching for grasping, and manipulating objects are essential motor functions in everyday life. Decoding human motor intentions is a central challenge for rehabilitation and assistive technologies. This study focuses on predicting intentions by inferring movement direction and target location from multichannel electromyography (EMG) signals, and investigating how spatially and temporally accurate such information can be detected relative to movement onset. We present a computational pipeline that combines data-driven temporal segmentation with classical and deep learning classifiers in order to analyse EMG data recorded during the planning, early execution, and target contact phases of a delayed reaching task. Early intention prediction enables devices to anticipate user actions, improving responsiveness and supporting active motor recovery in adaptive rehabilitation systems. Random Forest achieves $80\%$ accuracy and Convolutional Neural Network $75\%$ accuracy across $25$ spatial targets, each separated by $14^\circ$ azimuth/altitude. Furthermore, a systematic evaluation of EMG channels, feature sets, and temporal windows demonstrates that motor intention can be efficiently decoded even with drastically reduced data. This work sheds light on the temporal and spatial evolution of motor intention, paving the way for anticipatory control in adaptive rehabilitation systems and driving advancements in computational approaches to motor neuroscience.

标签

EMG 运动意图 深度学习 康复机器人 分类

arXiv 分类

q-bio.NC cs.AI