Institute of Advanced Manufacturing and Intelligent Technology, Beijing University of Technology, Beijing 100022, China.
Beijing Key Laboratory of Advanced Manufacturing Technology, Beijing University of Technology, Beijing 100022, China.
Sensors (Basel). 2020 Feb 20;20(4):1158. doi: 10.3390/s20041158.
During human-robot collaborations (HRC), robot systems must accurately perceive the actions and intentions of humans. The present study proposes the classification of standing postures from standing-pressure images, by which a robot system can predict the intended actions of human workers in an HRC environment. To this end, it explores deep learning based on standing-posture recognition and a multi-recognition algorithm fusion method for HRC. To acquire the pressure-distribution data, ten experimental participants stood on a pressure-sensing floor embedded with thin-film pressure sensors. The pressure data of nine standing postures were obtained from each participant. The human standing postures were discriminated by seven classification algorithms. The results of the best three algorithms were fused using the Dempster-Shafer evidence theory to improve the accuracy and robustness. In a cross-validation test, the best method achieved an average accuracy of 99.96%. The convolutional neural network classifier and data-fusion algorithm can feasibly classify the standing postures of human workers.
在人机协作 (HRC) 中,机器人系统必须准确感知人类的动作和意图。本研究提出了一种基于站立压力图像的站立姿势分类方法,通过该方法,机器人系统可以预测 HRC 环境中人类工人的预期动作。为此,它探索了基于站立姿势识别的深度学习和 HRC 的多识别算法融合方法。为了获取压力分布数据,十个实验参与者站在嵌入薄膜压力传感器的压力感应地板上。每个参与者获得九个站立姿势的压力数据。通过七种分类算法对人体站立姿势进行区分。使用证据理论的 Dempster-Shafer 融合了最佳三种算法的结果,以提高准确性和稳健性。在交叉验证测试中,最佳方法的平均准确率达到 99.96%。卷积神经网络分类器和数据融合算法可以合理地对人类工人的站立姿势进行分类。