论文标题

使用多重CNN体系结构的商用车辆的盲点碰撞检测系统

Blind-Spot Collision Detection System for Commercial Vehicles Using Multi Deep CNN Architecture

论文作者

Muzammel, Muhammad, Yusoff, Mohd Zuki, Saad, Mohamad Naufal Mohamad, Sheikh, Faryal, Awais, Muhammad Ahsan

论文摘要

与汽车和其他公路车辆相比,公共汽车和重型车辆由于尺寸较大而具有更多的盲点。因此,这些重型车辆造成的事故更具致命性,并给其他道路使用者造成严重伤害。这些可能的盲点碰撞可以使用基于视觉的对象检测方法提早识别。但是,现有的基于最新的基于视觉的对象检测模型在很大程度上依赖于单个功能描述符来做出决策。在这项研究中,提出了两个基于高级功能描述符的卷积神经网络(CNN)的设计,并提出了与更快的R-CNN集成,以检测重型车辆的盲点碰撞。此外,提出了一种融合方法,以整合两个预训练的网络(即Resnet 50和Resnet 101),用于提取高水平的特征以进行盲点车辆检测。功能的融合显着提高了更快的R-CNN的性能,并优于现有的最新方法。两种方法均在公共汽车的自我录制的盲点车辆检测数据集和用于车辆检测的在线LISA数据集上进行了验证。对于两种建议的方法,对于自记录的数据集,可获得3.05%和3.49%的虚假检测率(FDR),使这些方法适用于实时应用。

Buses and heavy vehicles have more blind spots compared to cars and other road vehicles due to their large sizes. Therefore, accidents caused by these heavy vehicles are more fatal and result in severe injuries to other road users. These possible blind-spot collisions can be identified early using vision-based object detection approaches. Yet, the existing state-of-the-art vision-based object detection models rely heavily on a single feature descriptor for making decisions. In this research, the design of two convolutional neural networks (CNNs) based on high-level feature descriptors and their integration with faster R-CNN is proposed to detect blind-spot collisions for heavy vehicles. Moreover, a fusion approach is proposed to integrate two pre-trained networks (i.e., Resnet 50 and Resnet 101) for extracting high level features for blind-spot vehicle detection. The fusion of features significantly improves the performance of faster R-CNN and outperformed the existing state-of-the-art methods. Both approaches are validated on a self-recorded blind-spot vehicle detection dataset for buses and an online LISA dataset for vehicle detection. For both proposed approaches, a false detection rate (FDR) of 3.05% and 3.49% are obtained for the self recorded dataset, making these approaches suitable for real time applications.

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