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A robust pedestrian detector based on heterogeneous feature fusion

机译:基于异构特征融合的鲁棒行人检测仪

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Pedestrian detection exhibits important application value in driver assistance systems, The detection performance often suffers from the various appearances of pedestrians, the illumination changes and complex background. Aiming at solving these challenges, in this paper, first, a new color moments feature is presented to describe the local similarity structure of pedestrians, which reduces the influence of complicated background. A combination coefficient method is introduced to effectively fuse three heterogeneous features, COLOR, HOG, and LBP, which makes better use of each feature. Then, pedestrians of various poses and views are divided into subclasses with S-Isomap and K-means algorithm. A classifier is trained for each subclass. Finally, with respect to the output values of different subclass classifiers, an equally weighted sum based multi-pose-view ensemble detector is proposed. Experiment results on public datasets demonstrate that the proposed feature combination method significantly improves the description capabilities of pedestrian features. Compared with the existing methods, the proposed detector combining the feature and multi-pose-view ensemble detector boosts the detection accuracy effectively.
机译:行人检测在驾驶员辅助系统中具有重要的应用价值,行人的外貌,照明变化和复杂的背景通常会影响检测性能。为了解决这些挑战,本文首先提出了一种新的颜色矩特征来描述行人的局部相似性结构,从而减少了复杂背景的影响。引入了一种组合系数方法来有效地融合三个异类特征(COLOR,HOG和LBP),从而更好地利用每个特征。然后,使用S-Isomap和K-means算法将各种姿势和视图的行人划分为子类。为每个子类训练分类器。最后,针对不同子类分类器的输出值,提出了一种基于等权和的多姿态多视角集合检测器。在公共数据集上的实验结果表明,所提出的特征组合方法显着提高了行人特征的描述能力。与现有方法相比,该特征检测器与多姿态整体检测器相结合,有效地提高了检测精度。

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