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首页> 外文期刊>Asian Journal of Information Technology >Boosting with Kernel Base Classifiers for Human Object Detection
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Boosting with Kernel Base Classifiers for Human Object Detection

机译:使用内核基础分类器进行增强以进行人对象检测

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摘要

To improve the accuracy of Boosting for human object detection, Boosting with kernel base classifiers, called K-Boosting, is proposed. The proposed method uses kernel function rather than linear function, as in conventional Boosting, for base classifiers. The use of kernel function makes a better decision function therefore the accuracy is improved. Experiments on human object detection application show that the accuracy is 16% improved comparing to that of conventional Boosting. The accuracy of the proposed method is comparable to that of Support Vector Machine but the computational time is comparable to that of conventional Boosting. This proposed method is very useful for development of a real time human object detection.
机译:为了提高Boosting用于人体目标检测的准确性,提出了使用基于内核的分类器Boosting进行Boosting。对于基本分类器,所提出的方法使用内核函数而不是线性函数(如常规Boosting中那样)。核函数的使用可以提供更好的决策功能,因此可以提高准确性。在人体目标检测应用中的实验表明,与传统的Boosting相比,其准确性提高了16%。所提方法的精度与支持向量机的精度相当,但计算时间与常规Boosting的精度相当。该提议的方法对于实时人类物体检测的开发非常有用。

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