基于混合特征和深度神经网络的车型分类

IF 0.6 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
None Sathyanarayana N., Anand M. Narasimhamurthy
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引用次数: 0

摘要

在本研究中,提出了一种结合混合特征的框架来提高车型分类的性能。该模型包括一个相机响应模型来增强收集到的图像,一个高斯混合模型来定位感兴趣的目标。利用Gabor特征、定向梯度直方图和局部最优定向模式从预处理图像中提取特征向量。混合特征集能更好地区分类别;此外,使用蚁群优化器对提取的特征向量进行降维。最后,利用深度神经网络对图像中的车辆进行分类。在MIO视觉交通摄像头数据集和收费广场多车道视频组成的真实数据集上对该模型进行了测试。与AlexNet、Inception V3、ResNet 50、VGG 19、Xception和DenseNet等知名神经网络架构相比,该模型在MIO TCD数据集中的准确率提高了0.28%至8.68%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle Type Classification Using Hybrid Features and a Deep Neural Network
In this research, a framework incorporating hybrid features is proposed to improve the performance of vehicle type classification. The proposed model includes a camera response model to enhance the collected images and a Gaussian mixture model to localize the object of interest. The feature vectors are extracted from the pre-processed images using Gabor features, histogram of oriented gradients, and local optimal-oriented pattern. The hybrid set of features discriminate the classes better; further, an ant colony optimizer is used to reduce the dimension of the extracted feature vectors. Finally, deep neural network is used to classify the types of vehicles in the images. The proposed model was tested on the MIO vision traffic camera dataset and a real-world dataset consisting of videos of multiple lanes of a toll plaza. The proposed model showed an improvement in accuracy ranging from 0.28% to 8.68% in the MIO TCD dataset when compared to well-known neural network architectures like AlexNet, Inception V3, ResNet 50, VGG 19, Xception, and DenseNet.
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来源期刊
International Journal of Software Innovation
International Journal of Software Innovation COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
1.40
自引率
0.00%
发文量
118
期刊介绍: The International Journal of Software Innovation (IJSI) covers state-of-the-art research and development in all aspects of evolutionary and revolutionary ideas pertaining to software systems and their development. The journal publishes original papers on both theory and practice that reflect and accommodate the fast-changing nature of daily life. Topics of interest include not only application-independent software systems, but also application-specific software systems like healthcare, education, energy, and entertainment software systems, as well as techniques and methodologies for modeling, developing, validating, maintaining, and reengineering software systems and their environments.
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