Liu Shaohua, Xue Jinlin, Zhang Tianyu, Lv Pengfei, Qin Huanhuan, Zhao Tianxing
College of Engineering, Nanjing Agricultural University, Nanjing, Jiangsu, China.
College of Artificial Intelligence, Nanjing Agricultural University, Nanjing, Jiangsu, China.
Front Plant Sci. 2024 Dec 6;15:1423338. doi: 10.3389/fpls.2024.1423338. eCollection 2024.
It is crucial for robotic picking fruit to recognize fruit accurately in orchards, this paper reviews the applications and research results of target recognition in orchard fruit picking by using machine vision and emphasizes two methods of fruit recognition: the traditional digital image processing method and the target recognition method based on deep learning. Here, we outline the research achievements and progress of traditional digital image processing methods by the researchers aiming at different disturbance factors in orchards and summarize the shortcomings of traditional digital image processing methods. Then, we focus on the relevant contents of fruit target recognition methods based on deep learning, including the target recognition process, the preparation and classification of the dataset, and the research results of target recognition algorithms in classification, detection, segmentation, and compression acceleration of target recognition network models. Additionally, we summarize the shortcomings of current orchard fruit target recognition tasks from the perspectives of datasets, model applicability, universality of application scenarios, difficulty of recognition tasks, and stability of various algorithms, and look forward to the future development of orchard fruit target recognition.
对于机器人采摘水果来说,在果园中准确识别水果至关重要。本文综述了利用机器视觉进行果园水果采摘目标识别的应用和研究成果,并着重介绍了两种水果识别方法:传统数字图像处理方法和基于深度学习的目标识别方法。在此,我们概述了研究人员针对果园中不同干扰因素的传统数字图像处理方法的研究成果和进展,并总结了传统数字图像处理方法的缺点。然后,我们重点关注基于深度学习的水果目标识别方法的相关内容,包括目标识别过程、数据集的准备和分类,以及目标识别算法在目标识别网络模型的分类、检测、分割和压缩加速方面的研究成果。此外,我们从数据集、模型适用性、应用场景的普遍性、识别任务的难度以及各种算法的稳定性等角度总结了当前果园水果目标识别任务的缺点,并展望了果园水果目标识别的未来发展。