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A method for litchi picking points calculation in natural environment based on main fruit bearing branch detection.

Authors :
Zhong, Zhuo
Xiong, Juntao
Zheng, Zhenhui
Liu, Bolin
Liao, Shisheng
Huo, Zhaowei
Yang, Zhengang
Source :
Computers & Electronics in Agriculture. Oct2021, Vol. 189, pN.PAG-N.PAG. 1p.
Publication Year :
2021

Abstract

• An algorithm for detecting the main fruit bearing branch of litchi in the natural environment was proposed. • A method for calculating the picking point of litchi's main fruit bearing branch was proposed. • The Precision of picking points calculation was 89.7%. • The roll angle error of the main fruit bearing branch was 11.28° ± 23.70°. The accurate identification of picking points is the key to the intelligent operation of litchi picking robot. To pick fruit, the robot must detect the location of picking point at first. To locate the location of picking points more accurately, this paper proposes a method of locating picking points based on the detection of litchi's main fruit bearing branch (MFBB). In the natural environment, the MFBB of litchi are similar to non-MFBB, so it is easy to get incorrect MFBB visual detection result that leads to the failure of robot picking. To identify litchi's MFBB in the natural environment quickly and accurately, this paper proposed a litchi's MFBB detection method based on the YOLACT. Firstly, litchi fruit and MFBB were connected as a litchi cluster label, and the data set of litchi cluster and MFBB was established, so the YOLACT model could learn the connection relationship between fruit and MFBB from the data set. Then, based on the detection result of litchi cluster and MFBB segmentation mask by this model, the pixel width difference between fruit and MFBB was used to segment the part of litchi cluster mask belonging to the MFBB, to obtain a more complete MFBB and improve the recall rate of MFBB. Finally, the middle point of the MFBB mask was taken as the picking point, and the angle of the MFBB was determined by skeleton extraction and the least square fitting method to provide a reference for robot picking posture. The experimental results showed that the precision of picking points calculated by this method was 89.7%, the F1 score was 83.8%, and the average running time of a single image was 0.154 s. Indicating that the proposed method has a good detection performance for the litchi picking points, and it can provide technical support for the visual recognition of the litchi picking robot. [ABSTRACT FROM AUTHOR]

Subjects

Subjects :
*LITCHI
*FRUIT
*LEAST squares

Details

Language :
English
ISSN :
01681699
Volume :
189
Database :
Academic Search Index
Journal :
Computers & Electronics in Agriculture
Publication Type :
Academic Journal
Accession number :
152366723
Full Text :
https://doi.org/10.1016/j.compag.2021.106398