| Literature DB >> 33643351 |
Yaohui Chen1,2,3, Xiaosong An1, Shumin Gao1, Shanjun Li1,2,3,4,5, Hanwen Kang6.
Abstract
Defective citrus fruits are manually sorted at the moment, which is a time-consuming and cost-expensive process with unsatisfactory accuracy. In this paper, we introduce a deep learning-based vision system implemented on a citrus processing line for fast on-line sorting. For the citrus fruits rotating randomly on the conveyor, a convolutional neural network-based detector was developed to detect and temporarily classify the defective ones, and a SORT algorithm-based tracker was adopted to record the classification information along their paths. The true categories of the citrus fruits were identified through the tracked historical information, resulting in high detection precision of 93.6%. Moreover, the linear Kalman filter model was applied to predict the future path of the fruits, which can be used to guide the robot arms to pick out the defective ones. Ultimately, this research presents a practical solution to realize on-line citrus sorting featuring low costs, high efficiency, and accuracy.Entities:
Keywords: CNN-based detector; SORT-based tracker; deep learning; defective citrus sorting; vision system
Year: 2021 PMID: 33643351 PMCID: PMC7905312 DOI: 10.3389/fpls.2021.622062
Source DB: PubMed Journal: Front Plant Sci ISSN: 1664-462X Impact factor: 5.753