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基于激光雷达和相机融合的玉米叶和茎识别与测距技术研究。

Research on Corn Leaf and Stalk Recognition and Ranging Technology Based on LiDAR and Camera Fusion.

机构信息

Mechanical Engineering Training Centre, College of Engineering, China Agricultural University, Beijing 100083, China.

出版信息

Sensors (Basel). 2024 Aug 22;24(16):5422. doi: 10.3390/s24165422.

Abstract

Corn, as one of the three major grain crops in China, plays a crucial role in ensuring national food security through its yield and quality. With the advancement of agricultural intelligence, agricultural robot technology has gained significant attention. High-precision navigation is the basis for realizing various operations of agricultural robots in corn fields and is closely related to the quality of operations. Corn leaf and stalk recognition and ranging are the prerequisites for achieving high-precision navigation and have attracted much attention. This paper proposes a corn leaf and stalk recognition and ranging algorithm based on multi-sensor fusion. First, YOLOv8 is used to identify corn leaves and stalks. Considering the large differences in leaf morphology and the large changes in field illumination that lead to discontinuous identification, an equidistant expansion polygon algorithm is proposed to post-process the leaves, thereby increasing the average recognition completeness of the leaves to 86.4%. Secondly, after eliminating redundant point clouds, the IMU data are used to calculate the confidence of the LiDAR and depth camera ranging point clouds, and point cloud fusion is performed based on this to achieve high-precision ranging of corn leaves. The average ranging error is 2.9 cm, which is lower than the measurement error of a single sensor. Finally, the stalk point cloud is processed and clustered using the FILL-DBSCAN algorithm to identify and measure the distance of the same corn stalk. The algorithm combines recognition accuracy and ranging accuracy to meet the needs of robot navigation or phenotypic measurement in corn fields, ensuring the stable and efficient operation of the robot in the corn field.

摘要

玉米是中国三大粮食作物之一,其产量和品质对保障国家粮食安全起着至关重要的作用。随着农业智能化的发展,农业机器人技术得到了广泛关注。高精度导航是农业机器人在玉米田中实现各种作业的基础,与作业质量密切相关。玉米叶片和茎秆的识别与测距是实现高精度导航的前提,受到了广泛关注。本文提出了一种基于多传感器融合的玉米叶片和茎秆识别与测距算法。首先,利用 YOLOv8 对玉米叶片和茎秆进行识别。针对叶片形态差异大、田间光照变化导致识别不连续的问题,提出等距扩展多边形算法对叶片进行后处理,从而提高叶片的平均识别完整度至 86.4%。其次,剔除冗余点云后,利用 IMU 数据计算 LiDAR 和深度相机测距点云的置信度,并基于此进行点云融合,实现玉米叶片的高精度测距。平均测距误差为 2.9cm,低于单一传感器的测量误差。最后,利用 FILL-DBSCAN 算法对茎秆点云进行处理和聚类,识别和测量同一玉米茎秆的距离。该算法结合了识别精度和测距精度,满足了玉米田机器人导航或表型测量的需求,保证了机器人在玉米田中的稳定高效作业。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/efe0/11359429/94010444e312/sensors-24-05422-g001.jpg

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