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面向AGV环境感知的图像点云融合研究综述OA

Review of Image-Point Cloud Fusion Research for AGV Environment Perception

中文摘要英文摘要

随着自动化工业生产线和智能物流仓储系统的快速发展,自动导引车(AGV)作为工业自动化与智能制造的核心载体,其环境感知能力是实现高精度自主导航与智能化作业的先决条件.通过人工智能与多模态传感技术的深度融合,AGV能够突破传统感知模式的局限性,实现对复杂工业场景的动态理解与自主响应.其中,基于图像与点云的融合感知技术,凭借其在三维空间解析与语义信息互补方面的优势,成为提升AGV环境感知鲁棒性与适应性的关键突破方向.因此,对图像点云融合技术在AGV环境感知中的演进脉络进行梳理,对比典型融合策略的性能边界与应用场景,并且重点对基于深度学习的图像点云融合技术方法进行分析和总结,针对多传感器标定与长期稳定性、算法实时性、边缘计算资源与算法复杂度的矛盾及极端工况适应性等瓶颈问题,从无监督在线标定、动态感知-决策闭环优化、算法-任务协同设计以及极端场景自适应感知等维度探讨技术发展方向,为构建更安全、高效、普适的AGV环境感知体系提供理论支撑与技术路径参考.

With the rapid development of automated industrial production lines and intelligent logistics and warehousing systems,automated guided vehicle(AGV)serves as core component in industrial automation and smart manufacturing.The environmental perception capability constitutes a prerequisite for achieving high-precision autonomous navigation and intelligent operations.The deep integration of artificial intelligence and multimodal sensing technologies enables AGV to overcome the limitations of traditional perception modes,realizing dynamic understanding and autonomous re-sponses in complex industrial scenarios.Image-point cloud fusion perception technology has emerged as a critical break-through direction for enhancing AGV perception robustness and adaptability,leveraging its advantages in 3D spatial reso-lution and semantic information complementarity.The evolutionary trajectory of image-point cloud fusion technology in AGV environmental perception is systematically reviewed,while performance boundaries and application scenarios of typical fusion strategies are compared,along with deep learning-based fusion methodologies being analyzed.In response to bottleneck challenges including multi-sensor calibration and long-term stability,algorithm real-time performance,con-flicts between edge computing resources and algorithm complexity,and extreme condition adaptability,this paper explores technical development directions from four dimensions:unsupervised online calibration,dynamic perception-decision closed-loop optimization,algorithm-task co-design,and adaptive perception in extreme scenarios.Theoretical foundations and technical references are provided for the construction of safer,more efficient,and universally applicable AGV environmental perception systems through these proposed approaches.

王荣儿;伍济钢

湖南科技大学机电工程学院,湖南湘潭 411100||湖南科技大学机械设备健康维护湖南省重点实验室,湖南湘潭 411100湖南科技大学机电工程学院,湖南湘潭 411100||湖南科技大学机械设备健康维护湖南省重点实验室,湖南湘潭 411100

信息技术与安全科学

自动导引车(AGV)图像点云融合深度学习环境感知工业场景

automated guided vehicle(AGV)image-point cloud fusiondeep learningenvironmental perceptionindus-trial scenarios

《计算机科学与探索》 2026 (4)

965-976,12

湖南省科技创新计划项目重点项目(HST2313)湖南省自然科学省市联合基金项目(2022JJ50129).This work was supported by the Key Project of Hunan Science and Technology Innovation Plan(HST2313),and the Hunan Provincial Natural Science Joint Fund Project(2022JJ50129).

10.3778/j.issn.1673-9418.2504068

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