IRVD: A Large-Scale Dataset for Classification of Iranian Vehicles in Urban Streets

Hossein Gholamalinezhad, H. Khosravi
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引用次数: 7

Abstract

In recent years, vehicle classification has been one of the most important research topics. However, due to the lack of a proper dataset, this field has not been well developed as other fields of intelligent traffic management. Therefore, the preparation of large-scale datasets of vehicles for each country is of great interest. In this paper, we introduce a new standard dataset of popular Iranian vehicles. This dataset, which consists of images from moving vehicles in urban streets and highways, can be used for vehicle classification and license plate recognition. It contains a large collection of vehicle images in different dimensions, viewing angles, weather, and lighting conditions. It took more than a year to construct this dataset. Images are taken from various types of mounted cameras, with different resolutions and at different altitudes. To estimate the complexity of the dataset, some classic methods alongside popular Deep Neural Networks are trained and evaluated on the dataset. Furthermore, two light-weight CNN structures are also proposed. One with 3-Conv layers and another with 5-Conv layers. The 5-Conv model with 152K parameters reached the recognition rate of 99.09% and can process 48 frames per second on CPU which is suitable for real-time applications.
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IRVD:伊朗城市街道车辆分类的大规模数据集
近年来,车辆分类一直是最重要的研究课题之一。然而,由于缺乏合适的数据集,该领域并没有像智能交通管理的其他领域一样得到很好的发展。因此,为每个国家准备大规模的车辆数据集是非常有趣的。在本文中,我们介绍了一个新的伊朗流行汽车标准数据集。该数据集由城市街道和高速公路上行驶车辆的图像组成,可用于车辆分类和车牌识别。它包含大量不同尺寸、视角、天气和照明条件的车辆图像。构建这个数据集花了一年多的时间。图像是从各种类型的安装相机上拍摄的,具有不同的分辨率和不同的海拔高度。为了估计数据集的复杂性,在数据集上训练和评估了一些经典方法以及流行的深度神经网络。此外,还提出了两种轻型CNN结构。一个具有3-Conv层,另一个具有5-Conv层。具有152K参数的5-Conv模型识别率达到99.09%,在CPU上每秒可处理48帧,适合实时应用。
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