Vehicle Model Classification Using Deep Learning

P. Ajitha, Jeyakumar. S, Yadhu Nandha Krishna K, A. Sivasangari
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引用次数: 8

Abstract

One of the most significant issues in modern road safety and intelligent transportation systems is the automation of vehicle detection and identification. Many challenges have been solved in the advancement of image processing, pattern recognition, and deep learning technology in order to accomplish this goal. Vehicle Type Classification is a difficult task since the dataset has a large class imbalance, and several viewpoints for different cars can be identical. The proposed framework employs a shallow Convolutional Neural Networks (CNN) architecture to prevent overfitting and ensure that the correct features are learned, and an augmentation technique is utilized to produce synthetic images by using the image data generation model in Keras due to class imbalance. The shallow CNN is used to extract features from the generated images, and then Softmax activation is used to classify them. Finally, the proposed system will achieve the classification of vehicle type i.e. classify the different car models with efficiently by novel methodology. The findings of the experiments demonstrate that shallow CNN can do well in real-world situations.
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基于深度学习的车辆模型分类
现代道路安全和智能交通系统中最重要的问题之一是车辆检测和识别的自动化。为了实现这一目标,图像处理、模式识别和深度学习技术的进步已经解决了许多挑战。由于数据集具有较大的类不平衡性,并且不同车辆的多个视点可能是相同的,因此车辆类型分类是一项困难的任务。该框架采用浅卷积神经网络(CNN)架构防止过拟合,确保学习到正确的特征,并利用Keras中由于类不平衡而产生的图像数据生成模型,利用增强技术生成合成图像。使用浅CNN从生成的图像中提取特征,然后使用Softmax激活对其进行分类。最后,该系统将实现车辆类型的分类,即采用新颖的方法对不同的车型进行有效的分类。实验结果表明,浅层CNN在现实世界中可以做得很好。
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