基于机器视觉的插苗最佳抓取角度算法研究

IF 3.3 2区 农林科学 Q1 AGRONOMY Agronomy-Basel Pub Date : 2023-08-27 DOI:10.3390/agronomy13092253
Junjie Liu, Zhang Xiao, Yu Tan, Erjie Sun, Bin He, Guoning Ma
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引用次数: 0

摘要

在苗盘的补种操作过程中,端部执行器需要反复抓取供应盘中合格的插塞苗,并将其释放到目标盘中进行补种,而在抓取过程中,末端执行器可能会对插塞苗造成一些机械损伤,从而影响插塞苗的质量。因此,为了能够根据插穗苗的形态特征调整爪抓取点的位置,选择最佳抓取点,本文提出了基于机器视觉的插穗苗最佳抓取角度算法研究。首先,设计了一种可旋转的三爪末端执行器,该末端执行器采用三爪结构来抓取穴苗。三个爪由伸缩缸驱动,以执行夹紧和放松动作。三个爪的旋转由步进电机控制,以调整最佳抓握位置。其次,基于孔盘苗图像的预处理、感兴趣区域中特征点的提取和定位计算,求解孔盘苗子叶叶片角平分线与水平正方向之间的角度。本文设计了两种计算特征点坐标的方法:一种是几何法,另一种是质心法。最后,通过分析子叶叶片角平分线与穴苗水平正方向的夹角,计算出最佳抓取角度。经测试,该算法的平均计算误差为3.12度,平均计算时间为0.512秒/张,满足再植作业的要求。
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A Study on the Optimal Grasping Angle Algorithm for Plug Seedlings Based on Machine Vision
During the replanting operation of a seedling tray, the end-effector needs to repeatedly grab the qualified plug seedlings in the supply tray and release them to the target tray for replanting, and in the process of grasping, the end-effector may cause some mechanical damage to the plug seedlings, thus affecting their quality. Therefore, in order to be able to adjust the position of the hand claw grasping point according to the morphological characteristics of the plug seedlings and select the optimal grasping point, this paper proposes research on the optimal grasping angle algorithm for plug seedlings based on machine vision. Firstly, a rotatable three-jaw end-effector is designed, which uses a three-jaw structure for grasping the burrowing seedlings. The three claws are driven with a telescopic cylinder to carry out clamping and relaxing actions. The rotation of the three claws is controlled with the stepper motor to adjust the optimal grasping position. Secondly, based on the pre-processing of an image of the hole tray seedling, the extraction of feature points in the region of interest, and the calculation of localization, the angle between the angular bisector of the cotyledon leaf blade of the hole tray seedling and the horizontal positive direction is solved. In this paper, two methods are designed to calculate the coordinates of feature points: one is the geometric method and the other is the center-of-mass method. Finally, the optimal grasping angle is calculated by analyzing the angle between the angular bisector of the cotyledon leaf blade and the horizontal positive direction of the cavity seedlings. According to the test, the average calculation error of the proposed algorithm is 3.12 degrees, and the average calculation time is 0.512 sec/sheet, which meet the requirements of the replanting operation.
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来源期刊
Agronomy-Basel
Agronomy-Basel Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
6.20
自引率
13.50%
发文量
2665
审稿时长
20.32 days
期刊介绍: Agronomy (ISSN 2073-4395) is an international and cross-disciplinary scholarly journal on agronomy and agroecology. It publishes reviews, regular research papers, communications and short notes, and there is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.
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