1. 南京信息工程大学计算机与软件学院,江苏,南京,210044
2. 南京信息工程大学高性能网格计算 与并行处理研究中心,江苏,南京,210044
3. 昆山中创软件工程有限责任公司,博士后工作站,江苏昆山,215311
4. 南京信息工程大学计算机与软件学院江苏南京,210044
5. 南京信息工程大学高性能网格计算 与并行处理研究中心江苏南京,210044
6. 昆山中创软件工程有限责任公司博士后工作站江苏昆山,215311
纸质出版:2011
移动端阅览
文学志, 方巍, 郑钰辉. 一种基于类Haar特征和改进AdaBoost分类器的车辆识别算法[J]. 电子学报, 2011,39(5):1121-1126.
WEN Xue-zhi, FANG Wei, ZHENG Yu-hui. An Algorithm Based on Haar-Like Features and Improved AdaBoost Classifier for Vehicle Recognition[J]. Acta Electronica Sinica, 2011, 39(5): 1121-1126.
提出一种基于类haar特征和改进AdaBoost分类器的车辆图像识别算法
以解决当前基于SVM分类器或级联分类器存在的分类识别性能不足以及传统基于AdaBoost算法的训练所需时间过长的问题.首先
基于积分图提取图像的扩展类haar特征
然后对所提取的海量类haar特征应用改进的AdaBoost分类器训练方法进行特征选择及分类器训练
最后利用所选择的特征信息及训练得到的分类器进行两类分类识别.实验结果表明
文中方法无论是在识别性能还是训练所需时间方面均明显优于传统方法
具有较好的应用前景.
An algorithm based on Haar-like features and AdaBoost classifier for vehicle recognition is proposed to solve the problem of poor recognition performance based on SVM (Support Vector Machines) classifier and cascaded AdaBoost classifier as well as the problem of much time consumed for training traditional AdaBoost.At first
the extended Haar-like features are extracted using integral image method
then a small number of critical features from a very large set of Haar-like features are selected while training AdaBoost
finally two classes classification is performed using the AdaBoost classifier and the selected features.Experimental results demonstrate that the proposed approaches has better performance both in recognition and time consuming than traditional methods
and shows promising perspective.
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