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A Robust Vehicle Detection Approach based on Faster R-CNN Algorithm

机译:基于快速R-CNN算法的鲁棒车辆检测方法

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Video-based Intelligent Transportation Systems (V-ITS) can play an important role in developing a wide range of applications in transportation field. These systems use the outputs of video cameras to extract desired information by the means of various Artificial Intelligence techniques. Considering impressive advantages of applying Deep Neural Networks (DNNs) in different fields of object detection and classification, these methods have attracted a huge attention among researchers in recent years. In this regard, Convolutional Neural Networks (CNNs) as an important class of DNNs have been used for visual imagery goals in a wide variety of applications such as image recognition and video analysis, and even made their way through ITS applications. One of the most important steps of V-ITS applications is the process of vehicle detection in video frames and the high accuracy rate in this step can provide applicable data for other complementary modules such as vehicle tracking and classification. In this paper, a robust method to detect vehicles in video frames based on CNNs is proposed which provides an almost real-time performance and impressive accuracy. To overcome the challenges of building a precise vehicle detection model from still images, we have transformed the main architecture of a pre-trained ResNet-50 residual network to Faster Region-based Convolutional Neural Network (Faster R-CNN). Experimental results show that the system's sensitivity factor is 0.985 and it needs an average of 74 milliseconds to detect vehicles in real condition data. Consequently, our method can provide acceptable results in vehicle detection in terms of accuracy and execution time.
机译:基于视频的智能交通系统(V-ITS)在开发交通领域的广泛应用中可以发挥重要作用。这些系统使用摄像机的输出,通过各种人工智能技术来提取所需的信息。考虑到在对象检测和分类的不同领域中应用深度神经网络(DNN)的显着优势,这些方法近年来引起了研究人员的极大关注。在这方面,作为重要的DNN类,卷积神经网络(CNN)已在诸如图像识别和视频分析之类的多种应用中用于视觉图像目标,甚至通过ITS应用也已成为现实。 V-ITS应用程序中最重要的步骤之一是视频帧中的车辆检测过程,该步骤中的高准确率可以为其他补充模块(例如,车辆跟踪和分类)提供适用的数据。本文提出了一种基于CNN的视频帧中车辆检测的鲁棒方法,该方法提供了几乎实时的性能和令人印象深刻的准确性。为了克服从静止图像建立精确的车辆检测模型的挑战,我们将预先训练的ResNet-50残差网络的主要架构转换为基于更快区域的卷积神经网络(Faster R-CNN)。实验结果表明,该系统的灵敏度因子为0.985,平均需要74毫秒才能检测到实时数据中的车辆。因此,我们的方法可以在准确性和执行时间方面为车辆检测提供可接受的结果。

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