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果蔬采摘机器人避障作业技术研究进展综述OA

Advances and Trends in Obstacle Avoidance Operation Technologies for Fruit and Vegetable Harvesting Robots

中文摘要英文摘要

采摘机器人是实现果蔬采收机械化作业的重要装备支撑.鉴于生命形态的植株果实与枝叶丛生交错、相互遮挡,避障作业能力是制约果蔬采摘机器人综合性能提升的关键技术瓶颈.本文总结归纳当前果蔬采摘机器人避障作业技术的发展,重点围绕目标感知、操作决策、伺服控制和执行结构等方面进行综述.在此基础上,分析和总结了在复杂农业场景下机器人避障采摘作业面临的技术挑战,并对相关技术的发展趋势进行展望.随着工厂化农艺管理、人工智能与机器人技术的发展,依托我国智能机器人产业支撑,特别支持多模态信息感知和环境交互学习的具身智能技术,将是未来提升采摘机器人复杂作业能力的重要技术途径.

Harvesting robots represent a critical enabling technology for advancing the mechanization and automation of fruit and vegetable harvesting and have become a prominent research focus within the global agricultural robotics community.Unlike structured industrial environments,agricultural harvesting tasks are performed in highly unstructured and dynamic settings,where fruits,branches,and leaves are densely intertwined and frequently occluded one another.As a result,obstacle-aware operation capability has emerged as a key technological bottleneck that fundamentally limits the overall performance,robustness,and practical applicability of fruit and vegetable harvesting robots.In this context,a comprehensive review of recent advances in obstacle-avoidance technologies for harvesting robots operating in complex agricultural environments was provided.The review was structured around four core aspects that were critical to obstacle-aware harvesting:target perception,manipulation decision-making,servo control,and end-effector and execution structures.Firstly,advances in visual and multimodal perception methods for detecting and segmenting fruits,branches,and foliage under occlusion were examined,with particular attention paid to deep learning-based approaches and three-dimensional sensing techniques.Secondly,manipulation decision-making strategies,including motion planning,behavior selection,and learning-based decision models,were reviewed with respect to their ability to cope with high-dimensional constraints and environmental uncertainty.Thirdly,servo control methods for harvesting robots were discussed,focusing on visual servoing,force-aware control,and adaptive strategies that enabled precise and safe manipulation in cluttered scenes.Finally,the design of execution mechanisms and end-effectors was analyzed,highlighting how mechanical structure,compliance,and functional integration influence obstacle avoidance performance during harvesting operations.Based on this review,it was further analyzed and summarized the major technical challenges faced by obstacle-aware harvesting robots in real-world agricultural scenarios.These challenges included limited perception reliability under severe occlusion,insufficient generalization of decision and control strategies across varying crop types and growth stages,difficulties in reproducing human harvesting skills,and the lack of coordination between robotic system design and agricultural production practices.Finally,future research trends were discussed,emphasizing the potential of embodied intelligence,end-to-end learning frameworks,and the integration of agronomic knowledge with robotic design.With advancements in factory-based agronomic management,artificial intelligence,and robotic technologies,the development of embodied intelligence-particularly supported by multimodal information perception and environmental interactive learning,and backed by China's intelligent robotics industry would serve as a crucial technical pathway for enhancing the capability of agricultural robots in handling complex operational tasks.

冯青春;陈立平;陈辰;洪志超;许宝成;赵春江

北京市农林科学院智能装备技术研究中心,北京 100097||国家农业智能装备工程技术研究中心,北京 100097北京市农林科学院智能装备技术研究中心,北京 100097||国家农业智能装备工程技术研究中心,北京 100097北京市农林科学院智能装备技术研究中心,北京 100097||国家农业智能装备工程技术研究中心,北京 100097北京市农林科学院智能装备技术研究中心,北京 100097||国家农业智能装备工程技术研究中心,北京 100097北京市农林科学院智能装备技术研究中心,北京 100097||国家农业智能装备工程技术研究中心,北京 100097国家农业智能装备工程技术研究中心,北京 100097

信息技术与安全科学

采摘机器人避障作业主动感知运动规划

harvesting robotobstacle-avoidance operationactive perceptionmotion planning

《农业机械学报》 2026 (5)

1-18,18

国家自然科学基金项目(32572207)和北京市农林科学院创新能力建设专项与预探索项目(TSXM202514)

10.6041/j.issn.1000-1298.2026.05.001

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