Moving Vehicle Detection in Traffic Video Using Modified SXCS-LBP Texture Descriptor

Arun Kumar H. D.
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Abstract

In this chapter, the authors proposed background modeling and subtraction-based methods for moving vehicle detection in traffic video using a novel texture descriptor called Modified Spatially eXtended Center Symmetric Local Binary Pattern (Modified SXCS-LBP) descriptor. The XCS-LBP texture descriptor is sensitive to noise because in order to generate binary code, the value of center pixel value is used as the threshold directly, and it does not consider temporal motion information. In order to solve this problem, this chapter proposed a novel texture descriptor called Modified SXCS-LBP descriptor for moving vehicle detection based on background modeling and subtraction. The proposed descriptor is robust against noise, illumination variation, and able to detect slow moving vehicles because it considers both spatial and temporal moving information. The evaluation is carried out using precision and recall metric, which is obtained using experiments conducted on popular dataset such as BMC dataset. The experimental result shows that the method outperforms existing methods.
基于改进SXCS-LBP纹理描述符的交通视频运动车辆检测
在本章中,作者提出了基于背景建模和减法的交通视频中移动车辆检测方法,该方法使用了一种新的纹理描述符,称为改进的空间扩展中心对称局部二进制模式(Modified SXCS-LBP)描述符。由于XCS-LBP纹理描述符在生成二进制代码时直接使用中心像素值作为阈值,而不考虑时间运动信息,因此对噪声敏感。为了解决这一问题,本章提出了一种新的基于背景建模和减法的运动车辆检测纹理描述子——改进的SXCS-LBP描述子。所提出的描述符对噪声、光照变化具有鲁棒性,并且能够检测到缓慢移动的车辆,因为它同时考虑了空间和时间的移动信息。通过在BMC数据集等常用数据集上进行实验得到的精度和召回率指标进行评价。实验结果表明,该方法优于现有方法。
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