1. A visual identification method for the apple growth forms in the orchard.
- Author
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Lv, Jidong, Xu, Hao, Han, Ying, Lu, Wenbin, Xu, Liming, Rong, Hailong, Yang, Biao, Zou, Ling, and Ma, Zhenghua
- Subjects
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ORCHARDS , *DEEP learning , *MACHINE learning , *APPLE orchards , *FEATURE extraction , *NETWORK performance - Abstract
• A visual recognition method of apple growth morphology is proposed. • An improved YOLOv5 deep learning network (called YOLOv5-B) was proposed. • On the basis of YOLOv5, BiFPN-S and ACON-C are introduced as improvements. The work aimed at the visual identification of the growth forms of fruits to facilitate the subsequent use of different harvesting mechanisms for different growth forms of fruits by robots. The improved YOLOv5 deep learning algorithm was used to propose a visual identification method for the growth forms of apples in the orchard. Specifically, the feature extraction module of the YOLOv5 algorithm imitated the BiFPN model to propose the BiFPN-S structure. The spread of features and feature reuse were enhanced to better fit features. The improved algorithm was called YOLOv5-B. The network SiLU activation function was replaced with the ACON-C activation function to improve its network performance. The COCO data set was used to pre-train the network, and then the data set of the work was trained by the transfer learning method. After the training, the generated optimal model was applied for the visual-identification test of the growth of apple fruits. The results showed that the improved algorithm model considered high accuracy and real-time performance, with the map reaching 98.4% and the F1 value of 0.928. The average accuracy of identifying the growth forms of apples for the test set was 98.45%, and the processing speed was 71 FPS. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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