基于深度学习的印度车辆分类系统

Sarthak Kapaliya, Debabrata Swain, Hargeet Kaur, S. Satapathy
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引用次数: 1

摘要

图像分类在许多技术中都有广泛的应用。人脸识别、视频监控等应用都是图像分类的一些实践。车辆分类是图像分类的关键领域之一。这项研究旨在找到有效的车辆分类方法,帮助解决现实世界的问题,如安全、监控和交通堵塞。数据集来自Kaggle网站,用于训练模型。我们对数据进行了扩充,以提高模型的准确性。在这项研究中,我们专注于提供更高准确性的深度神经网络。我们将使用简单的4层卷积神经网络和预构建模型,如AlexNet, VGGNet和DenseNet。在处理我们的增强数据后,我们将其输入到CNN模型中,并比较不同模型的结果。结果发现,DenseNet在车辆数据集上的准确率最高(87%)。此外,该方法可用于任何类型的图像分类任务。可以针对不同的天气条件(如冬季、季风等)训练模型。这些模型在许多领域都有帮助,例如在医疗保健领域的MRI报告中的肿瘤检测或在民用领域识别建筑物的不同裂缝和损坏。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Deep Learning Based Vehicle Classification System for Indian Vehicle
Image classification is heavily used in many technologies. Applications like Face identification, Video surveillance are some practices of image classification. Vehicle Classification is one of the critical domains of Image Classification. This research aims to find efficient methods for Vehicle classification that help solve real-world problems like security, surveillance, and traffic jams. The dataset was used from Kaggle Website for training the models. We have augmented the data to achieve better accuracy of models. In this research, we have focused on Deep Neural Networks which provide more accuracy. We will be using a Simple 4-layer Convolutional Neural Network and Pre-built Models like AlexNet, VGGNet, and DenseNet. After processing our augmented data, we fed it to the CNN model and compared the different models’ results. It was found that DenseNet is having highest accuracy (87%) on the vehicle dataset. Furthermore, this method can be useful for any type of image classification task. Training the model for different weather conditions such as winter, monsoon, etc. is possible. The models can be helpful in many sectors for example in Tumor detection in MRI reports in healthcare or for identifying different cracks and damages of building in the civil sector.
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