Xie Xiaolin, Qin Yibo, Zhang Zhihong, Yan Zixiang, Jin Hang, Xu Man, Zhang Cheng
Longmen Laboratory, Luoyang 471003, China.
College of Agricultural Equipment Engineering, Henan University of Science and Technology, Luoyang 471003, China.
Sensors (Basel). 2024 Feb 20;24(5):1374. doi: 10.3390/s24051374.
Simultaneous Localization and Mapping (SLAM), as one of the core technologies in intelligent robotics, has gained substantial attention in recent years. Addressing the limitations of SLAM systems in dynamic environments, this research proposes a system specifically designed for plant factory transportation environments, named GY-SLAM. GY-SLAM incorporates a lightweight target detection network, GY, based on YOLOv5, which utilizes GhostNet as the backbone network. This integration is further enhanced with CoordConv coordinate convolution, CARAFE up-sampling operators, and the SE attention mechanism, leading to simultaneous improvements in detection accuracy and model complexity reduction. While mAP@0.5 increased by 0.514% to 95.364, the model simultaneously reduced the number of parameters by 43.976%, computational cost by 46.488%, and model size by 41.752%. Additionally, the system constructs pure static octree maps and grid maps. Tests conducted on the TUM dataset and a proprietary dataset demonstrate that GY-SLAM significantly outperforms ORB-SLAM3 in dynamic scenarios in terms of system localization accuracy and robustness. It shows a remarkable 92.59% improvement in RMSE for Absolute Trajectory Error (ATE), along with a 93.11% improvement in RMSE for the translational drift of Relative Pose Error (RPE) and a 92.89% improvement in RMSE for the rotational drift of RPE. Compared to YOLOv5s, the GY model brings a 41.5944% improvement in detection speed and a 17.7975% increase in SLAM operation speed to the system, indicating strong competitiveness and real-time capabilities. These results validate the effectiveness of GY-SLAM in dynamic environments and provide substantial support for the automation of logistics tasks by robots in specific contexts.
同时定位与地图构建(SLAM)作为智能机器人领域的核心技术之一,近年来受到了广泛关注。针对SLAM系统在动态环境中的局限性,本研究提出了一种专门为植物工厂运输环境设计的系统,名为GY-SLAM。GY-SLAM集成了基于YOLOv5的轻量级目标检测网络GY,该网络采用GhostNet作为骨干网络。通过CoordConv坐标卷积、CARAFE上采样算子和SE注意力机制进一步增强了这种集成,从而在提高检测精度的同时降低了模型复杂度。当mAP@0.5提高0.514%至95.364时,该模型同时将参数数量减少了43.976%,计算成本降低了46.488%,模型大小减小了41.752%。此外,该系统构建了纯静态八叉树地图和网格地图。在TUM数据集和专有数据集上进行的测试表明,GY-SLAM在动态场景中的系统定位精度和鲁棒性方面显著优于ORB-SLAM3。绝对轨迹误差(ATE)的均方根误差(RMSE)显著提高了92.59%,相对位姿误差(RPE)的平移漂移的RMSE提高了93.11%,RPE的旋转漂移的RMSE提高了92.89%。与YOLOv5s相比,GY模型使系统的检测速度提高了41.5944%,SLAM操作速度提高了17.7975%,显示出强大的竞争力和实时能力。这些结果验证了GY-SLAM在动态环境中的有效性,并为特定场景下机器人物流任务的自动化提供了有力支持。