Chen Rongjun, Wang Peixian, Lin Binfan, Wang Leijun, Zeng Xianxian, Hu Xianglei, Yuan Jun, Li Jiawen, Ren Jinchang, Zhao Huimin
School of Computer Science, Guangdong Polytechnic Normal University, Guangzhou, 510665, China.
Guangdong Provincial Key Laboratory of Intellectual Property and Big Data, Guangdong Polytechnic Normal University, Guangzhou, 510665, China.
Sci Rep. 2025 Jan 30;15(1):3839. doi: 10.1038/s41598-025-88439-w.
With the rapid development of Internet of Things (IoT) technology, embedded devices in various computer vision scenarios can realize real-time target detection and recognition tasks, such as intelligent manufacturing, automatic driving, smart home, and so on. YOLOv8, as an advanced deep learning model in the field of target detection, has attracted much attention for its excellent detection speed, high precision, and multi-task processing capability. However, since IoT embedded devices typically own limited computing resources, direct deployment of YOLOv8 is a big challenge, especially for real-time detection tasks. To address this vital issue, this work proposes and deploys an optimized lightweight real-time detection network model that well-suits for IoT embedded devices, denoted as FRYOLO. To evaluate its performance, a case study based on real-time fresh and defective fruit detection in the production line is performed. Characterized by low training cost and high detection performance, this model accurately detects various types of fruits and their states, as the experimental results show that FRYOLO achieves 84.7% in recall and 89.0% in mean Average Precision (mAP), along with a precision of 92.5%. In addition, it provides a detection frame rate of up to 33 Frames Per Second (FPS), satisfying the real-time requirement. Finally, an intelligent production line system based on FRYOLO is implemented, which not only provides robust technical support for the efficient operation of fruit production processes but also demonstrates the availability of the proposed network model in practical IoT applications.
随着物联网(IoT)技术的快速发展,各种计算机视觉场景中的嵌入式设备能够实现实时目标检测和识别任务,如智能制造、自动驾驶、智能家居等。YOLOv8作为目标检测领域的一种先进深度学习模型,因其出色的检测速度、高精度和多任务处理能力而备受关注。然而,由于物联网嵌入式设备通常拥有有限的计算资源,直接部署YOLOv8是一项巨大挑战,尤其是对于实时检测任务。为解决这一关键问题,本文提出并部署了一种适用于物联网嵌入式设备的优化轻量级实时检测网络模型,称为FRYOLO。为评估其性能,进行了一个基于生产线新鲜和有缺陷水果实时检测的案例研究。该模型具有低训练成本和高检测性能的特点,能够准确检测各种类型的水果及其状态,实验结果表明,FRYOLO的召回率达到84.7%,平均精度均值(mAP)达到89.0%,精度为92.5%。此外,它提供高达33帧每秒(FPS)的检测帧率,满足实时要求。最后,实现了一个基于FRYOLO的智能生产线系统,该系统不仅为水果生产过程的高效运行提供了强大的技术支持,还证明了所提出的网络模型在实际物联网应用中的可用性。