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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Pedestrian detection in images via cascaded L1-norm minimization learning method
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Pedestrian detection in images via cascaded L1-norm minimization learning method

机译:基于级联L1范数最小化学习方法的图像行人检测

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摘要

A new cascaded L1-norm minimization learning (CLML) method for pedestrian detection in images is proposed in this paper. The proposed CLML method, which is designed from the perspective of Vapnics theory in the statistical learning, integrates feature selection with classifier construction via solving meaningful optimization models. The method incorporates three stages: weak classifier learning, strong classifier learning and the cascaded classifier construction. In the weak classifier learning, the L1-norm minimization learning (LML) and minmax penalty function model are presented. In the strong classifier learning, an integer programming optimization model is built, equaling the reformulation of LML in the integer space. Finally, a cascade of LML classifiers is constructed to promote detection speed. During the classifier learning and pedestrian detection, Histograms of Oriented Gradients of variable-sized blocks (v-HOG) are used as feature descriptors. Experimental results on the INRIA and SDL human datasets show that the proposed method achieves a higher performance and speed than the state-of-the-art methods.
机译:提出了一种新的级联L1-范数最小化学习(CLML)方法,用于图像中的行人检测。提出的CLML方法是从Vapnics理论的统计学习角度设计的,它通过解决有意义的优化模型将特征选择与分类器构造集成在一起。该方法包括三个阶段:弱分类器学习,强分类器学习和级联分类器构造。在弱分类器学习中,提出了L1-范数最小化学习(LML)和最小最大惩罚函数模型。在强分类器学习中,建立了整数编程优化模型,该模型等于整数空间中LML的重新制定。最终,构建了一系列LML分类器以提高检测速度。在分类器学习和行人检测期间,可变大小块的定向梯度直方图(v-HOG)被用作特征描述符。在INRIA和SDL人体数据集上的实验结果表明,所提出的方法比最新方法具有更高的性能和速度。

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