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基于稀疏表达和机器学习的行人检测技术研究
引用本文:王坚,兰天. 基于稀疏表达和机器学习的行人检测技术研究[J]. 计算机科学, 2016, 43(Z6): 207-209
作者姓名:王坚  兰天
作者单位:中央财经大学信息学院 北京100081,中央财经大学信息学院 北京100081
基金项目:本文受中央财经大学重点学科建设项目资助
摘    要:针对行人检测技术在智能交通系统中的应用,为了提高行人检测方法的有效性、实时性和准确性,将稀疏表达应用到图像的特征压缩中,提出一种基于HOG和LTP特征训练SVM分类器进行行人检测的方法。基于HOG和LTP特征训练SVM分类器进行行人检测的方法有效地结合了图像的梯度特征和纹理特征,利用稀疏表达进行特征数据的压缩可以有效地加速算法。实验结果表明,提出的算法具有精度高、速度快等优点。

关 键 词:稀疏表达  行人检测  LTP  HOG  SVM  图像处理

Study on Pedestrian Detection Based on Sparse Representation and Machine Learning
WANG Jian and LAN Tian. Study on Pedestrian Detection Based on Sparse Representation and Machine Learning[J]. Computer Science, 2016, 43(Z6): 207-209
Authors:WANG Jian and LAN Tian
Affiliation:School of Information,Central University of Finance and Economics,Beijing 100081,China and School of Information,Central University of Finance and Economics,Beijing 100081,China
Abstract:According to the application of pedestrian detection technology in the intelligent transportation system,in order to improve the efficiency,real-time and accuracy of pedestrian detection method,in this paper,the sparse representation was applied to the feature compression of the image,and a new method of pedestrian detection based on HOG and LTP feature training SVM classifier was proposed.Training SVM classifier for pedestrian detection based on the cha-racteristics of HOG and LTP effectively combines the image gradient feature and texture features and takes advantage of the sparse expression on data compression which can effectively speed up the algorithm.Experimental results show that the proposed algorithm has the advantages of high precision and speed.
Keywords:Sparse representation  Pedestrian detection  LTP  HOG  SVM   Image processing
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