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基于带人工照明的电荷耦合器件(CCD)视觉传感器的夜间自然环境下青葡萄检测与采摘点计算

Green Grape Detection and Picking-Point Calculation in a Night-Time Natural Environment Using a Charge-Coupled Device (CCD) Vision Sensor with Artificial Illumination.

作者信息

Xiong Juntao, Liu Zhen, Lin Rui, Bu Rongbin, He Zhiliang, Yang Zhengang, Liang Cuixiao

机构信息

College of Mathematics and Informatics, South China Agricultural University, Guangzhou 510642, China.

出版信息

Sensors (Basel). 2018 Mar 25;18(4):969. doi: 10.3390/s18040969.

Abstract

Night-time fruit-picking technology is important to picking robots. This paper proposes a method of night-time detection and picking-point positioning for green grape-picking robots to solve the difficult problem of green grape detection and picking in night-time conditions with artificial lighting systems. Taking a representative green grape named as the research object, daytime and night-time grape images were captured by a custom-designed visual system. Detection was conducted employing the following steps: (1) The RGB (red, green and blue). Color model was determined for night-time green grape detection through analysis of color features of grape images under daytime natural light and night-time artificial lighting. The R component of the RGB color model was rotated and the image resolution was compressed; (2) The improved Chan-Vese (C-V) level set model and morphological processing method were used to remove the background of the image, leaving out the grape fruit; (3) Based on the character of grape vertical suspension, combining the principle of the minimum circumscribed rectangle of fruit and the Hough straight line detection method, straight-line fitting for the fruit stem was conducted and the picking point was calculated using the stem with an angle of fitting line and vertical line less than 15°. The visual detection experiment results showed that the accuracy of grape fruit detection was 91.67% and the average running time of the proposed algorithm was 0.46 s. The picking-point calculation experiment results showed that the highest accuracy for the picking-point calculation was 92.5%, while the lowest was 80%. The results demonstrate that the proposed method of night-time green grape detection and picking-point calculation can provide technical support to the grape-picking robots.

摘要

夜间水果采摘技术对采摘机器人很重要。本文提出了一种用于绿色葡萄采摘机器人的夜间检测和采摘点定位方法,以解决在人工照明系统下夜间条件下绿色葡萄检测和采摘的难题。以一种名为的代表性绿色葡萄为研究对象,通过定制设计的视觉系统采集白天和夜间的葡萄图像。检测过程如下:(1) 通过分析白天自然光和夜间人工照明下葡萄图像的颜色特征,确定用于夜间绿色葡萄检测的RGB(红、绿、蓝)颜色模型。对RGB颜色模型的R分量进行旋转并压缩图像分辨率;(2) 使用改进的Chan-Vese(C-V)水平集模型和形态学处理方法去除图像背景,分离出葡萄果实;(3) 根据葡萄垂直悬挂的特点,结合果实最小外接矩形原理和霍夫直线检测方法,对果梗进行直线拟合,并使用拟合线与垂直线夹角小于15°的果梗计算采摘点。视觉检测实验结果表明,葡萄果实检测准确率为91.67%,所提算法的平均运行时间为0.46 s。采摘点计算实验结果表明,采摘点计算的最高准确率为92.5%,最低为80%。结果表明,所提出的夜间绿色葡萄检测和采摘点计算方法可为葡萄采摘机器人提供技术支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/231b/5948586/ec555800bd0a/sensors-18-00969-g001.jpg

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