Laboratory of Automation and Robotic interaction (LAR.i), Department of Applied Sciences, Université du Québec à Chicoutimi (UQAC), 555 Boulevard de l'Université, Chicoutimi, QC G7H 2B1, Canada.
Technological Institute of Industrial Maintenance (ITMI), Sept-Iles College, 175 Rue de la Vérendrye, Sept-Iles, QC G4R 5B7, Canada.
Sensors (Basel). 2021 Aug 26;21(17):5743. doi: 10.3390/s21175743.
Advances in robotics are part of reducing the burden associated with manufacturing tasks in workers. For example, the cobot could be used as a "third-arm" during the assembling task. Thus, the necessity of designing new intuitive control modalities arises. This paper presents a foot gesture approach centered on robot control constraints to switch between four operating modalities. This control scheme is based on raw data acquired by an instrumented insole located at a human's foot. It is composed of an inertial measurement unit (IMU) and four force sensors. Firstly, a gesture dictionary was proposed and, from data acquired, a set of 78 features was computed with a statistical approach, and later reduced to 3 via variance analysis ANOVA. Then, the time series collected data were converted into a 2D image and provided as an input for a 2D convolutional neural network (CNN) for the recognition of foot gestures. Every gesture was assimilated to a predefined cobot operating mode. The offline recognition rate appears to be highly dependent on the features to be considered and their spatial representation in 2D image. We achieve a higher recognition rate for a specific representation of features by sets of triangular and rectangular forms. These results were encouraging in the use of CNN to recognize foot gestures, which then will be associated with a command to control an industrial robot.
机器人技术的进步是减轻工人制造任务负担的一部分。例如,协作机器人可以在装配任务中充当“第三臂”。因此,需要设计新的直观控制方式。本文提出了一种基于机器人控制约束的脚势方法,用于在四种操作模式之间切换。该控制方案基于位于人脚的仪器化鞋垫采集的原始数据。它由惯性测量单元(IMU)和四个力传感器组成。首先,提出了一个手势字典,并通过统计方法从采集的数据中计算出一组 78 个特征,然后通过方差分析(ANOVA)将其减少到 3 个。然后,将采集的数据时间序列转换为 2D 图像,并将其作为二维卷积神经网络(CNN)的输入,用于识别脚势。每个手势都被归为预定义的协作机器人操作模式。离线识别率似乎高度依赖于要考虑的特征及其在 2D 图像中的空间表示。我们通过使用三角形和矩形形式的特征集实现了特定表示的更高识别率。这些结果令人鼓舞,因为我们使用 CNN 来识别脚势,然后将其与控制工业机器人的命令相关联。