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Hybrid cascade boosting machine using variant scale blocks based HOG features for pedestrian detection

机译:混合级联升压机,使用基于可变比例块的HOG功能进行行人检测

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摘要

This paper contributes two issues for enhancing the accuracy and speed of a pedestrian detection system. First, it introduces a feature description using variant-scale block based Histograms of Oriented Gradients (HOC) features. By non-restricted block sizes, an extensive feature space that allows high-discriminated features to be selected for classification can be obtained. Second, a classification method based on a hybrid cascade boosting technique and a Support vector machine (SVM) is described. The SVM is known as one of the most efficient learning models for classification. On the other hand, one advantage of cascade boosting structure is to quickly reject most negative examples in the early layers, while retains almost all positive examples for speed up of the system. Because the performance of boosting depends on the kernel of weak classifier, the hybrid algorithms using the proposed feature descriptor is helpful for constructing an efficient classification with low computational time. In addition, an "integral image" method is utilized to support fast computation of the feature. The experimental results showed that performance of the proposed method is higher than the SVM using standard HOG features about 5% and the AdaBoost using variant-scale based HOG features about 4% detection rates, at 1% false alarm rates. The speed of classification using a cascade boosting approach is doubled comparing to that of the non-cascade one.
机译:本文为提高行人检测系统的准确性和速度提出了两个问题。首先,它介绍了使用基于梯度梯度直方图直方图(HOC)特征的特征描述。通过不受限制的块大小,可以获得允许选择高区分特征进行分类的扩展特征空间。其次,描述了基于混合级联提升技术和支持向量机(SVM)的分类方法。 SVM被称为最有效的分类学习模型之一。另一方面,级联增强结构的一个优点是可以在早期阶段快速拒绝大多数负面示例,同时保留几乎所有正面示例以加快系统运行速度。由于提升的性能取决于弱分类器的内核,因此使用提出的特征描述符的混合算法有助于构建计算时间短的有效分类。另外,利用“积分图像”方法来支持特征的快速计算。实验结果表明,与使用标准HOG功能约5%的SVM相比,所提出方法的性能要高,而使用基于变体量级HOG功能的AdaBoost则具有约4%的检测率,虚警率仅为1%。与非级联方法相比,使用级联增强方法的分类速度提高了一倍。

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