无人机摄像机车辆检测与计数系统的发展:深度学习和暗网算法

Q3 Computer Science
A. H. Rangkuti, Varyl Hasbi Athala, Farrel Haridhi Indallah
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引用次数: 0

摘要

本研究的重点是识别和检测几种类型的车辆,每种车辆的位置由无人机技术或无人驾驶飞行器(UAV)相机描述。车辆的位置从离地面350到400米的高度捕捉。本研究旨在确定在高速公路上行驶的车辆类别。实验采用YOLOv4、YOLOv3、YOLOv7、DenseNet201-YOLOv3、CSResNext50-Panet-SPP等多个卷积神经网络模型对该类车辆进行识别。同时,Darknet算法通过使其更容易识别MP4电影中描述的车辆类型来帮助训练过程。本研究还进行了其他几个卷积神经网络(CNN)模型实验,但由于硬件的限制,只有这5个CNN模型能够产生高达70%的最佳准确率。经过几次实验,CSResNext50-Panet-SPP模型在使用无人机技术检测100%视频数据时产生了最高的准确性,包括在过马路时检测到的车辆数量。其他CNN模型也产生了很高的精度值,如DenseNet201- YOLOv3和YOLOv4模型,可以检测到高达98%到99%的时间。本研究可以通过检测无人机技术负担得起但需要硬件和外围技术来支持训练过程的其他类来提高其能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Vehicle Detection and Counting Systems with UAV Cameras: Deep Learning and Darknet Algorithms
This study focuses on identifying and detecting several types of vehicles, with each vehicle’s position depicted by drone technology or an Unmanned Aerial Vehicle (UAV) camera. The vehicle’s position is captured from a height of 350 to 400 meters above the ground. This study aims to identify the class of vehicles that travel on the highway. The experiment employs several convolutional neural network models, including YOLOv4, YOLOv3, YOLOv7, DenseNet201-YOLOv3, and CSResNext50-Panet-SPP, to identify this type of vehicle. Meanwhile, the Darknet algorithm aids the training process by making it easier to identify the type of vehicle depicted in MP4 movies. Several other Convolution Neural Network (CNN) model experiments were conducted in this study, but due to hardware limitations, only these 5 CNN models could produce an optimal accuracy of up to 70%. Following several experiments, the CSResNext50-Panet-SPP model produced the highest accuracy while detecting 100% of video data using UAV technology, including the volume of vehicles detected while crossing the road. Other CNN models produced high accuracy values, such as DenseNet201- YOLOv3 and YOLOv4 models, which can detect up to 98% to 99% of the time. This research can improve its capabilities by detecting other classes that are affordable by UAV technology but require hardware and peripheral technology to support the training process.
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来源期刊
中国图象图形学报
中国图象图形学报 Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.20
自引率
0.00%
发文量
6776
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