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Combining Weighted Contour Templates with HOGs for Human Detection Using Biased Boosting

机译:将加权轮廓模板与HOG结合以使用偏向增强进行人体检测

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摘要

This paper proposes a method to detect humans in the image that is an important issue for many applications, such as video surveillance in smart home and driving assistance systems. A kind of local feature called the histogram of oriented gradients (HOGs) has been widely used in describing the human appearance and its effectiveness has been proven in the literature. A learning framework called boosting is adopted to select a set of classifiers based on HOGs for human detection. However, in the case of a complex background or noise effect, the use of HOGs results in the problem of false detection. To alleviate this, the proposed method imposes a classifier based on weighted contour templates to the boosting framework. The way to combine the global contour templates with local HOGs is by adjusting the bias of a support vector machine (SVM) for the local classifier. The method proposed for feature combination is referred to as biased boosting. For covering the human appearance in various poses, an expectation maximization algorithm is used which is a kind of iterative algorithm is used to construct a set of representative weighted contour templates instead of manual annotation. The encoding of different weights to the contour points gives the templates more discriminative power in matching. The experiments provided exhibit the superiority of the proposed method in detection accuracy.
机译:本文提出了一种在图像中检测人的方法,这对于许多应用来说都是重要的问题,例如智能家居中的视频监视和驾驶辅助系统。一种称为定向梯度直方图(HOG)的局部特征已被广泛用于描述人的外观,其有效性已在文献中得到证明。采用称为boosting的学习框架来选择基于HOG的分类器集,以进行人类检测。然而,在复杂的背景或噪声影响的情况下,HOG的使用导致错误检测的问题。为了减轻这种情况,所提出的方法将基于加权轮廓模板的分类器强加给增强框架。将全局轮廓模板与局部HOG组合的方法是通过调整局部分类器的支持向量机(SVM)的偏差。提出的用于特征组合的方法称为偏置提升。为了覆盖各种姿势下的人的外观,使用了期望最大化算法,该算法是一种迭代算法,用于构造一组代表性的加权轮廓模板而不是人工标注。对轮廓点的不同权重的编码使模板在匹配中具有更大的判别能力。所提供的实验证明了该方法在检测精度上的优越性。

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