Optimization of Vehicle Object Detection Based on UAV Dataset: CNN Model and Darknet Algorithm

Q3 Decision Sciences
A. H. Rangkuti, Varyl Hasbi Athala
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引用次数: 0

Abstract

This study was conducted to identify several types of vehicles taken using drone technology or Unmanned Aerial Vehicles (UAV). The introduction of vehicles from above an altitude of more than 300-400 meters that pass the highway above ground level becomes a problem that needs optimum investigation so that there are no errors in determining the type of vehicle. This study was conducted at mining sites to identify the class of vehicles that pass through the highway and how many types of vehicles pass through the road for vehicle recognition using a deep learning algorithm using several CNN models such as Yolo V4, Yolo V3, Densenet 201, CsResNext –Panet 50 and supported by the Darknet algorithm to support the training process. In this study, several experiments were carried out with other CNN models, but with peripherals and hardware devices, only 4 CNN models resulted in optimal accuracy. Based on the experimental results, the CSResNext-Panet 50 model has the highest accuracy and can detect 100% of the captured UAV video data, including the number of detected vehicle volumes, then Densenet and Yolo V4, which can detect up to 98% - 99%. This research needs to continue to be developed by knowing all classes affordable by UAV technology but must be supported by hardware and peripheral technology to support the training process.
基于无人机数据集的车辆目标检测优化:CNN模型和Darknet算法
这项研究是为了确定几种类型的车辆采用无人机技术或无人驾驶飞行器(UAV)。从300 ~ 400米以上的高空引进车辆通过地面以上的高速公路,是一个需要进行最佳调查的问题,以便在确定车辆类型时不会出现错误。本研究在采矿现场进行,使用深度学习算法识别通过高速公路的车辆类别以及通过道路的车辆类型,该算法使用多个CNN模型(如Yolo V4, Yolo V3, Densenet 201, CsResNext -Panet 50),并由Darknet算法支持,以支持训练过程。在本研究中,使用其他CNN模型进行了多次实验,但在外设和硬件设备的情况下,只有4个CNN模型达到了最佳精度。从实验结果来看,CSResNext-Panet 50模型的准确率最高,可以检测到捕获的无人机视频数据的100%,包括检测到的车辆数量,其次是Densenet和Yolo V4,可以检测到98% - 99%。这项研究需要通过了解无人机技术负担得起的所有类别来继续发展,但必须得到硬件和外围技术的支持,以支持培训过程。
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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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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