论文标题
密集TNT:使用卫星图像有效的车辆类型分类神经网络
Dense-TNT: Efficient Vehicle Type Classification Neural Network Using Satellite Imagery
论文作者
论文摘要
准确的车辆类型分类在智能运输系统中起着重要作用。对于统治者而言,重要的是要了解道路状况,并且通常为交通灯控制系统的贡献,以相应地响应以减轻交通拥堵。新技术和全面数据源,例如航空照片和遥感数据,提供了更丰富,高维的信息。同样,由于深度神经网络技术的快速发展,基于图像的车辆分类方法可以在处理数据时更好地提取基本的目标特征。最近,已经提出了几种深度学习模型来解决该问题。但是,传统的基于纯卷积的方法对全球信息提取有限制,而复杂的环境(例如恶劣的天气)严重限制了识别能力。为了提高复杂环境下的车辆类型分类能力,本研究提出了一种新型连接的卷积变压器在变压器神经网络(密度TNT)框架中,通过堆叠密集连接的卷积网络(Densenet)和变压器(TNT)层中的变压器,用于车辆类型分类。部署了三个区域的数据和四个不同的天气条件以评估识别能力。实验发现验证了我们提议的车辆分类模型的识别能力,即使在雾气繁重的天气状况下,也很少腐烂。
Accurate vehicle type classification serves a significant role in the intelligent transportation system. It is critical for ruler to understand the road conditions and usually contributive for the traffic light control system to response correspondingly to alleviate traffic congestion. New technologies and comprehensive data sources, such as aerial photos and remote sensing data, provide richer and high-dimensional information. Also, due to the rapid development of deep neural network technology, image based vehicle classification methods can better extract underlying objective features when processing data. Recently, several deep learning models have been proposed to solve the problem. However, traditional pure convolutional based approaches have constraints on global information extraction, and the complex environment, such as bad weather, seriously limits the recognition capability. To improve the vehicle type classification capability under complex environment, this study proposes a novel Densely Connected Convolutional Transformer in Transformer Neural Network (Dense-TNT) framework for the vehicle type classification by stacking Densely Connected Convolutional Network (DenseNet) and Transformer in Transformer (TNT) layers. Three-region vehicle data and four different weather conditions are deployed for recognition capability evaluation. Experimental findings validate the recognition ability of our proposed vehicle classification model with little decay, even under the heavy foggy weather condition.