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Improved YOLO v3 network-based object detection for blind zones of heavy trucks

机译:改进了重型卡车盲区的基于YOLO V3网络的物体检测

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摘要

Object detection for blind zones is critical to ensuring the driving safety of heavy trucks. We propose a scheme to realize object detection in the blind zones of heavy trucks based on the improved you-only-look-once (YOLO) v3 network. First, according to the actual detection requirements, the targets are determined to establish a new data set of persons, cars, and fallen pedestrians, with a focus on small and medium objects. Subsequently, the network structure is optimized, and the features are enhanced by combining the shallow and deep convolution information of the Darknet platform. In this way, the feature propagation can be effectively enhanced, feature reuse can be promoted, and the network performance for small object detection can be improved. Furthermore, new anchors are obtained by clustering the data set using the K-means technique to improve the accuracy of the detection frame positioning. In the test stage, detection is performed using the trained model. The test results demonstrate that the proposed improved YOLO v3 network is superior to the original YOLO v3 model in terms of the blind zone detection and can satisfy the accuracy and real-time requirements with an accuracy of 94% and runtime of 13.792 ms /frame. Moreover, the mean average precision value for the improved model is 87.82%, which is 2.79% higher than that of the original YOLO v3 network. (C) 2020 SPIE and IS&T
机译:盲区对象检测对于确保重型卡车的驾驶安全性至关重要。我们提出了一种基于改进的无You-Look-One-Orn-Ondion-Only(Yolo)V3网络来实现重型卡车盲区对象检测的方案。首先,根据实际检测要求,确定目标是建立一个新的数据集,汽车和堕落的行人,专注于中小对象。随后,通过组合DiskNet平台的浅和深度卷积信息来优化网络结构,并且通过组合暗网络平台的浅和深度卷积信息来提高特征。以这种方式,可以有效地增强特征传播,可以提高特征重用,并且可以提高用于小对象检测的网络性能。此外,通过使用K-Means技术聚类数据集来获得新的锚点来提高检测帧定位的准确性。在测试阶段,使用训练模型进行检测。测试结果表明,在盲区检测方面,所提出的改进的YOLO V3网络优于原始的YOLO V3模型,并可满足精度和实时要求,精度为94%和13.792毫秒/帧的运行时间。此外,改进模型的平均平均精度值为87.82%,比原始YOLO V3网络高2.79%。 (c)2020个SPIE和IS&T

著录项

  • 来源
    《Journal of electronic imaging》 |2020年第5期|053002.1-053002.14|共14页
  • 作者单位

    Zhejiang Wanli Univ Ningbo Key Lab Digital Signal Proc Ningbo Peoples R China;

    Zhejiang Wanli Univ Ningbo Key Lab Digital Signal Proc Ningbo Peoples R China;

    Zhejiang Wanli Univ Ningbo Key Lab Digital Signal Proc Ningbo Peoples R China;

    Ningbo Univ Inst Technol Ningbo Peoples R China;

    Zhejiang Wanli Univ Ningbo Key Lab Digital Signal Proc Ningbo Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    object detection; deep learning; heavy trucks; blind zones;

    机译:物体检测;深度学习;重型卡车;盲区;

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