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Vehicle-Type Detection Based on Compressed Sensing and Deep Learning in Vehicular Networks

机译:车辆网络中基于压缩感知和深度学习的车辆类型检测

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Throughout the past decade, vehicular networks have attracted a great deal of interest in various fields. The increasing number of vehicles has led to challenges in traffic regulation. Vehicle-type detection is an important research topic that has found various applications in numerous fields. Its main purpose is to extract the different features of vehicles from videos or pictures captured by traffic surveillance so as to identify the types of vehicles, and then provide reference information for traffic monitoring and control. In this paper, we propose a step-forward vehicle-detection and -classification method using a saliency map and the convolutional neural-network (CNN) technique. Specifically, compressed-sensing (CS) theory is applied to generate the saliency map to label the vehicles in an image, and the CNN scheme is then used to classify them. We applied the concept of the saliency map to search the image for target vehicles: this step is based on the use of the saliency map to minimize redundant areas. CS was used to measure the image of interest and obtain its saliency in the measurement domain. Because the data in the measurement domain are much smaller than those in the pixel domain, saliency maps can be generated at a low computation cost and faster speed. Then, based on the saliency map, we identified the target vehicles and classified them into different types using the CNN. The experimental results show that our method is able to speed up the window-calibrating stages of CNN-based image classification. Moreover, our proposed method has better overall performance in vehicle-type detection compared with other methods. It has very broad prospects for practical applications in vehicular networks.
机译:在过去的十年中,车载网络在各个领域引起了极大的兴趣。越来越多的车辆导致交通管制方面的挑战。车辆类型检测是重要的研究课题,已在许多领域中找到了各种应用。它的主要目的是从交通监控捕获的视频或图片中提取车辆的不同特征,以识别车辆的类型,然后为交通监控提供参考信息。在本文中,我们提出了一种使用显着图和卷积神经网络(CNN)技术的前向车辆检测和分类方法。具体来说,将压缩感知(CS)理论应用于生成显着图以标记图像中的车辆,然后使用CNN方案对它们进行分类。我们将显着性图的概念应用于搜索目标车辆的图像:此步骤基于显着性图的使用,以最大程度地减少冗余区域。 CS用于测量感兴趣的图像并获得其在测量域中的显着性。由于测量域中的数据远小于像素域中的数据,因此可以以较低的计算成本和更快的速度生成显着图。然后,基于显着性地图,我们确定了目标车辆,并使用CNN将其分类为不同类型。实验结果表明,我们的方法能够加快基于CNN的图像分类的窗口校准阶段。此外,与其他方法相比,我们提出的方法在车辆类型检测中具有更好的整体性能。在车载网络中的实际应用具有广阔的前景。

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