How to design an optimal wearable device for human movement recognition is vital to reliable and accurate human-machine collaboration. Previous works mainly fabricate wearable devices heuristically. Instead, this paper raises an academic question: can we design an optimization algorithm to optimize the fabrication of wearable devices such as figuring out the best sensor arrangement automatically? Specifically, this work focuses on optimizing the placement of Forcemyography (FMG) sensors for FMG armbands in the application of arm movement recognition. Firstly, based on graph theory, the armband is modeled considering sensors' signals and connectivity. Then, a Graph-based Armband Modeling Network (GAM-Net) is introduced for arm movement recognition. Afterward, the sensor placement optimization for FMG armbands is formulated and an optimization algorithm with greedy local search is proposed. To study the effectiveness of our optimization algorithm, a dataset for mechanical maintenance tasks using FMG armbands with 16 sensors is collected. Our experiments show that using only 4 sensors optimized with our algorithm can help maintain a comparable recognition accuracy to using all sensors. Finally, the optimized sensor placement result is verified from a physiological view. This work would like to shed light on the automatic fabrication of wearable devices considering downstream tasks, such as human biological signal collection and movement recognition. Our code and dataset are available at https://github.com/JerryX1110/IROS22-FMG-Sensor-Optimization
翻译:如何设计一个最佳的磨损装置, 用于人类运动的识别, 这对于可靠和准确的人类机器合作至关重要 。 先前的作品主要在结构上, 粗略地设计了可磨损的装置。 相反, 本文提出了一个学术问题 : 我们能否设计一个优化算法, 优化磨损装置的制造, 如自动找到最佳传感器安排? 具体地说, 这项工作的重点是在应用手臂运动识别时优化FMG 臂带的强制感应器(FMG)传感器(FMG)传感器(FM)传感器(FM)传感器(FM)传感器(FM)传感器(FM)传感器(FMG)传感器(FM)传感器(FM)传感器(FM)传感器(FM)(FM)(FM ) 传感器(FM) 传感器(FM) 传感器(FMA) 。 首先, 根据图形理论, 将AG-J-J网络(G- Net) 的优化传感器(GMAN) 模型(G- Net) 模拟网络(G) 用于确认武器运动(GMDR) 的移动。