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Improved Local Texture Features for Pedestrian Detection

机译:改进了行人检测的局部纹理特征

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Pedestrian detection is a hot issue in the field of computer vision and image processing in recent years. It has important application value in the domain of unmanned cars and driver assistance systems and so on, but there are existed many problems that need to be solved. In this paper, we present an improved texture feature MLBP (Mean of Local Binary Pattern) and the CMLBP (Color based on Mean of Local Binary Pattern) feature based on various color spaces. When the uniform LBP feature does not consider the influence of noise, the mutation of central pixel and neighborhood pixel is not taken into account and therefore the extraction processes of MLBP feature improve the calculation method of the uniform LBP, which makes the extracted feature more stable. The MLBP feature is extracted from gray images, yet color images transformed into gray images generally loss a great amount of information. In view of this point, we also propose the CMLBP feature based on multiple color spaces that is a more comprehensive description of the texture feature of images. In the INRIA pedestrian dataset, many experiments have been conducted with SVM and HIKSVM classifier, and the results manifest that the detection rates of MLBP and CMLBP are much better than the uniform LBP and the basic LBP. The combination of MLBP, CMLBP and other features has been applied to pedestrian detection, which also achieves good results.
机译:行人检测是近年来计算机视觉和图像处理领域的一个热门问题。它在无人驾驶汽车和驾驶员辅助系统领域具有重要的应用价值等,但存在许多需要解决的问题。在本文中,我们介绍了一种改进的纹理特征MLBP(局部二进制图案的平均值)和基于各种颜色空间的CMLBP(基于本地二进制图案的平均值的颜色)特征。当均匀的LBP特征不考虑噪声的影响时,没有考虑中央像素和邻域像素的突变,因此MLBP特征的提取过程改善了均匀LBP的计算方法,这使得提取的特性更稳定。从灰色图像中提取MLBP特征,但彩色图像变换成灰色图像通常丢失大量信息。鉴于这一点,我们还基于多种颜色空间提出了CMLBP功能,该功能是图像纹理特征的更全面的描述。在INRIA步行数据集中,许多实验已经使用SVM和HIKSVM分类器进行,结果表明MLBP和CMLBP的检测率远远优于均匀的LBP和基本LBP。 MLBP,CMLBP和其他特征的组合已应用于行人检测,这也实现了良好的效果。

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