面向目标实时检测的Yolo目标检测器的系统进展

Ejiyi Chukwuebuka Joseph, O. Bamisile, Nneji Ugochi, Qin Zhen, Ndalahwa Ilakoze, Chikwendu A. Ijeoma
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引用次数: 1

摘要

本文阐述了从YOLO(你只看一次)目标探测器开始到最近的版本4所观察到的系统进步。自2015年底推出以来,YOLO取得了巨大的实施、改进和应用。在这项工作中,考虑到对继承前一个版本的每个版本的介绍以及模型如何执行检测的进展,对YOLO网络进行了简要的调查。我们使用最新版本的网络(YOLOv4)来训练50类对象,我们认为这些对象是实时检测的常用对象。训练后的模型mAP为64.80% @IoU为0.5,用于实时检测时,检测速度达到43FPS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systematic Advancement of Yolo Object Detector For Real-Time Detection of Objects
This paper explicates the systematic advancements that were observed from the inception of the YOLO (You Only Look Once) object detector to the most recent version 4. Since its introduction in late 2015, YOLO has recorded tremendous implementation as well as improvements and applications. In this work, a brief survey of the YOLO network is presented considering the introduction that was made to each version that succeeded each preceding version and the advancement on how the model performed with detection. We used the latest version of the network (YOLOv4) to train 50 classes of objects that we considered popular objects for real-time detection. The model trained obtained an mAP of 64.80% @IoU of 0.5 and when deployed for real-time detection, it achieved a 43FPS speed of detection.
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