基于m克尔支持向量机的机器人自主导航人类检测

Yunfei Zhang, Rajen B. Bhatt, C. D. de Silva
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引用次数: 1

摘要

本文提出了一种基于多核学习支持向量机(m克尔- svm)训练的分类器,用于识别视频流序列图像中的人。所开发的方法包括两个方面:适合运动目标的HOG特征和HOF特征组成的多特征,以及结合非线性核的SVM。为了在自主导航中的实时应用,将SimpleMKL算法实现到所提出的MKL-SVM分类器中。它能够通过一个加权的2范数正则化公式以相当的效率快速收敛。该分类器与最先进的线性支持向量机进行比较,使用名为TUD-Brussels的数据集,该数据集可在线获得。结果表明,该分类器在准确率方面优于线性支持向量机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MKL-SVM-based human detection for autonomous navigation of a robot
This paper presents a classifier trained by a multiple kernel-learning support vector machine (MKL-SVM) to detect a human in sequential images from a video stream. The developed method consists of two aspects: multiple features consisting of HOG features and HOF features suitable for moving objects, and combined nonlinear kernels for SVM. For the purpose of real time application in autonomous navigation, the SimpleMKL algorithm is implemented into the proposed MKL-SVM classifier. It is able to converge rapidly with comparable efficiency through a weighted 2-norm regularization formulation with an additional constraint on the weights. The classifier is compared with the state-of-the-art linear SVM using a dataset called TUD-Brussels, which is available on line. The results show that the proposed classifier outperforms the Linear SVM with respect to accuracy.
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