A Comparison of YOLO Based Vehicle Detection Algorithms

Ayush Dodia, Sumit Kumar
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Abstract

The use of vehicle object detection in intelligent video surveillance and vehicle-assisted driving has expanded as science and technology have advanced. Traditional car object detection algorithms have some limitations in their generalization capacity and recognition rate. The primary goal of this survey is to detect the vehicle, which forms managing crucial traffic data, including vehicle detection, vehicle count, and vehicle movement. This research compares modern object detectors that incorporate traffic situation estimations To determine which version of the YOLO algorithm is the best for detecting the vehicle explained here. Process of the YOLO algorithm the dataset is the first clustered using the clustering analysis approach, and the network structure is improved to increase the vehicle prediction capacity and the final numbers of output grids. In the second process, it maximizes both input image and dataset collection. This research suggests a better vehicle identification technique based on YOLO (You Only Look Once) to address this issue. Three versions of the YOLO (You Only Look Once) algorithm are evaluated to detect the vehicle.
基于YOLO的车辆检测算法比较
随着科技的进步,车辆目标检测在智能视频监控和车辆辅助驾驶中的应用越来越广泛。传统的汽车目标检测算法在泛化能力和识别率方面存在一定的局限性。这项调查的主要目标是检测车辆,这形成了管理关键的交通数据,包括车辆检测、车辆数量和车辆运动。本研究比较了包含交通状况估计的现代目标检测器,以确定哪个版本的YOLO算法最适合检测这里解释的车辆。YOLO算法过程中首先对数据集采用聚类分析方法进行聚类,并对网络结构进行改进,提高了车辆预测能力和最终输出网格数。在第二个过程中,它最大化输入图像和数据集收集。这项研究提出了一种更好的基于YOLO(你只看一次)的车辆识别技术来解决这个问题。评估了三种版本的YOLO(你只看一次)算法来检测车辆。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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