Android(操作系统)
计算机科学
Android应用程序
汽车工程
操作系统
工程类
作者
Mojtaba Nasehi,Mohsen Ashourian,Hossein Emami
出处
期刊:Traitement Du Signal
[International Information and Engineering Technology Association]
日期:2024-06-26
卷期号:41 (3): 1377-1386
摘要
Vehicle-type detection tool has many applications in transportation, traffic control, guiding and controlling unmanned vehicles, tolls and road taxes, traffic violations, smuggling detection, etc.In the proposed version, the MobileNet neural network and the YOLO V5 algorithm are integrated.In this integration, the YOLO V5 algorithm replaces the convolutional layers of the neural network and the neural network be used for the classification of vehicles.The Kivy library is employed to transform the developed algorithm into an Android application.The data used in this study consists of two datasets: The ImageNet database and a constructed database.The proposed method results show improvement in increasing the accuracy of vehicle detection, reducing the computational load, detection accuracy in different weather conditions, separating overlapping cars.Various methods are presented for better neural network training and reducing neural network size.The reason for these capabilities is the use of developed algorithms and the use of techniques such as data augmentation, spatial filtering, and distillation.
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