Department of Civil, Construction and Environmental Engineering, North Dakota State University, Fargo, ND 58108, USA.
Department of Mechanical Engineering, North Dakota State University, Fargo, ND 58108, USA.
Sensors (Basel). 2023 Aug 7;23(15):6997. doi: 10.3390/s23156997.
As the use of construction robots continues to increase, ensuring safety and productivity while working alongside human workers becomes crucial. To prevent collisions, robots must recognize human behavior in close proximity. However, single, or RGB-depth cameras have limitations, such as detection failure, sensor malfunction, occlusions, unconstrained lighting, and motion blur. Therefore, this study proposes a multiple-camera approach for human activity recognition during human-robot collaborative activities in construction. The proposed approach employs a particle filter, to estimate the 3D human pose by fusing 2D joint locations extracted from multiple cameras and applies long short-term memory network (LSTM) to recognize ten activities associated with human and robot collaboration tasks in construction. The study compared the performance of human activity recognition models using one, two, three, and four cameras. Results showed that using multiple cameras enhances recognition performance, providing a more accurate and reliable means of identifying and differentiating between various activities. The results of this study are expected to contribute to the advancement of human activity recognition and utilization in human-robot collaboration in construction.
随着建筑机器人的使用不断增加,确保与人类工人一起工作时的安全和生产力变得至关重要。为了防止碰撞,机器人必须识别近距离的人类行为。然而,单一的或 RGB-depth 摄像机存在检测失败、传感器故障、遮挡、无约束照明和运动模糊等局限性。因此,本研究提出了一种在建筑中的人机协作活动中进行人体活动识别的多摄像机方法。该方法采用粒子滤波器,通过融合从多个摄像机提取的二维关节位置来估计 3D 人体姿态,并应用长短时记忆网络(LSTM)识别与建筑中的人机协作任务相关的十种活动。该研究比较了使用一个、两个、三个和四个摄像机的人体活动识别模型的性能。结果表明,使用多个摄像机可以提高识别性能,提供更准确、可靠的方法来识别和区分各种活动。本研究的结果有望促进人机协作中人体活动识别和利用的发展。