Tsai Fa-Ta, Nguyen Van-Tung, Duong The-Phong, Phan Quoc-Hung, Lien Chi-Hsiang
Department of Mechanical Engineering, National United University, Miaoli 36002 Taiwan.
Department of Mechanical Engineering, HCMC University of Technology and Education, Ho Chi Minh City 700000, Vietnam.
Plants (Basel). 2023 Aug 26;12(17):3067. doi: 10.3390/plants12173067.
The farming industry is facing the major challenge of intensive and inefficient harvesting labors. Thus, an efficient and automated fruit harvesting system is required. In this study, three object classification models based on Yolov5m integrated with BoTNet, ShuffleNet, and GhostNet convolutional neural networks (CNNs), respectively, are proposed for the automatic detection of tomato fruit. The various models were trained using 1508 normalized images containing three classes of cherry tomatoes, namely ripe, immature, and damaged. The detection accuracy for the three classes was found to be 94%, 95%, and 96%, respectively, for the modified Yolov5m + BoTNet model. The model thus appeared to provide a promising basis for the further development of automated harvesting systems for tomato fruit.
农业产业正面临着密集且低效的收获劳动力这一重大挑战。因此,需要一个高效的自动化水果收获系统。在本研究中,分别提出了三种基于Yolov5m并与BoTNet、ShuffleNet和GhostNet卷积神经网络(CNN)集成的目标分类模型,用于番茄果实的自动检测。使用包含三类樱桃番茄(即成熟、未成熟和受损)的1508张归一化图像对各种模型进行了训练。对于改进后的Yolov5m + BoTNet模型,三类的检测准确率分别为94%、95%和96%。因此,该模型似乎为番茄果实自动化收获系统的进一步发展提供了一个有前景的基础。