摘要
传统的基于HOG与LBP的特征融合行人检测方法光谱信息损失多、对噪声较为敏感,原始的LBP算法对不均匀的光照变化鲁棒性差,对纹理特征的旋转不变性差。为了克服以上缺点,本文提出了一种基于CLBC和HOG特征融合的行人检测算法。首先,计算原始图像的CLBC特征,并计算基于CLBC纹理特征谱的HOG特征。接着计算原始图像的HOG特征以提取图像的边缘特征。然后将图像的三种特征融合来描述图像,并使用PCA方法降低特征维度,最后使用HIKSVM分类器实现最终对行人的检测。本文分别在Caltech行人数据库和INRIA行人数据库进行实验以验证所提出算法的有效性。实验结果表明,本文所提出的算法有效地提高了行人检测的精度。
The traditional feature fusion method based on HOG and LBP loses much spectral information,and it is more sensitive to noise.The original LBP algorithm has poor robustness to uneven illumination changes and poor rotation invariance to texture features.In order to overcome these shortcomings of the method,this paper proposes a pedestrian detection algorithm based on the feature fusion of CLBC and HOG.First,the CLBC feature of the original image is calculated,and the HOG feature based on the CLBC texture feature spectrum is calculated.The HOG feature of the original image is then calculated to extract the edge feature of the image.Then three features of the image are fused to describe the image,and after that we use principal component analysis to reduce the feature dimension.Finally,the detection of the pedestrian is realized by using the HIKSVM classifier.In this paper,experiments are carried out in Caltech pedestrian database and INRIA pedestrian database to verify the effectiveness of the proposed algorithm.The final experimental results show that the proposed algorithm improves the accuracy of pedestrian detection.
作者
程德强
唐世轩
冯晨晨
游大磊
张丽颖
Cheng Deqiang;Tang Shixuan;Feng Chenchen;You Dalei;Zhang Liying(School of Information and Control Engineering,China University of Mining and Technology,Xuzhou,Jiangsu 221116,China;School of Information Engineering,Henan Vocational College of Applied Technology,Kaifeng,Henan 475000,China)
出处
《光电工程》
CAS
CSCD
北大核心
2018年第8期72-80,共9页
Opto-Electronic Engineering
基金
国家自然科学基金资助项目(51774281)
江苏省"六大人才高峰"高层次人才培养项目(2015-ZBZZ-009)~~