Dense strawberry maturity recognition neural network based on multichannel attention mechanism

Authors

  • Zhaorui Cao 1. College of Equipment Engineering, Shenyang Ligong University, Shenyang 110159, Liaoning, China
  • Chuwen Wang 1. College of Equipment Engineering, Shenyang Ligong University, Shenyang 110159, Liaoning, China
  • Xiaojie Xin 1. College of Equipment Engineering, Shenyang Ligong University, Shenyang 110159, Liaoning, China
  • Xinyao Chen 1. College of Equipment Engineering, Shenyang Ligong University, Shenyang 110159, Liaoning, China
  • Jiahui Cai 2. College of Food Science and Engineering, Bohai University, Jinzhou 121013, Liaoning, China

Keywords:

Object detection, Feature fusion, Maturity testing, Deep learning

Abstract

Color is an important indicator of strawberry maturity; therefore, identifying color changes during harvesting and delivery is important. The soft skin of strawberries can easily cause mechanical damage during harvesting and manual selection. While scholars have made significant progress in using machine vision technology for crop detection, detecting strawberries that are densely placed, differently sized, and in different growth states remains challenging. This study proposes a YOLOv8s-based dense strawberry maturity recognition convolutional neural network that integrates multiscale feature attention. The proposed model addresses several issues, including the overlapping of adjacent fruit features, fuzzy maturity criteria, and difficulty distinguishing individual fruits when they are densely placed. It utilizes a multichannel attention mechanism to fuse semantic features of strawberries at different scales, enhancing the independent summarization ability of image information of individual strawberries in dense and randomly placed environments. It also introduces wavelet down sampling convolution as the backbone of network layers to enhance the ability to capture detailed features of small strawberries. Furthermore, with the integration of the weighted intersection over union loss function, it optimizes the convergence effect and inference accuracy of network training. On a custom strawberry dataset, model accuracy, recall rate, mAP@0.5, and mAP@0.5:0.95 increased by 1.1%, 1.8%, 1.2%, and 0.8%, respectively, compared to the original YOLOv8s model, showing good recognition accuracy and stability when facing dense strawberry arrays with multiple sizes and arbitrary placement. The proposed model can quickly detect the maturity of individual strawberry fruits in random environments, improve sorting efficiency, and reduce post-harvest losses. This study provides new ideas and technical references for the application of machine vision technology in the field of dense crop maturity recognition.      

Keywords: object detection, feature fusion, maturity testing, deep learning

DOI: 10.25165/j.ijabe.20261901.9931

Citation: Cao Z R, Wang C W, Xin X J, Chen X Y, Cai J H. Dense strawberry maturity recognition neural network based on multichannel attention mechanism. Int J Agric & Biol Eng, 2026; 19(1): 295–301.

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Published

2026-03-16

How to Cite

(1)
Cao, Z.; Wang, C.; Xin, X.; Chen, X.; Cai, J. Dense Strawberry Maturity Recognition Neural Network Based on Multichannel Attention Mechanism. Int J Agric & Biol Eng 2026, 19.

Issue

Section

Agro-product and Food Processing Systems