文件名称:HOG
- 所属分类:
- 图形图像处理(光照,映射..)
- 资源属性:
- [PDF]
- 上传时间:
- 2012-11-26
- 文件大小:
- 266kb
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- 0次
- 提 供 者:
- 高*
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为了准确地对监控场景中的运动目标进行语义上的分类, 提出了一种基于聚类的核主成分分析梯度方向直方图和二叉决策树支持向量机的运动目标分类算法.利用背景减法提取运动目标前景区域, 并识别出潜在候选运动目标.利
用提出的基于聚类的核主成分分析的梯度直方图描述子提取候选运动目标的特征, 以较低维数的数据有效地描述运动目标的有效特征. 将提取的运动目标特征输入二叉决策树支持向量机, 实现多类目标的准确分类. 通过在不同视频序列上的实验验证, 提出的算法对运动目标进行较好地分类, 而且在运算速度方面较传统目标分类方法有了明显的提高. 实验结果证明了算法对运动目标分类具有较好的准确性 可靠性和鲁棒性.-For the purpose of semantically classifying moving objects accurately in a surveillance scene,a moving objects classification method based on the clustered kernel principal component analysis ( CKPCA) of the histogram
of oriented gradients ( HOG) and support vector machine ( SVM) was proposed. Firstly,the moving areas in the
foreground were extracted by means of the background subtraction method,and some of them were identified as potential candidates of moving objects. Secondly,the characteristics of the moving objects were obtained by the CKPCA- HOG descr iptor,which could describe the moving objects' effective features at a lower data dimension. Finally,the data characteristics were fed into a binary SVM decision tree,and the final multi- class classification results were obtained accurately. After verifying different video sequences,the algorithm was able to classify moving targets very well. Compared with traditional classification methods,the proposed method makes obvious improv
用提出的基于聚类的核主成分分析的梯度直方图描述子提取候选运动目标的特征, 以较低维数的数据有效地描述运动目标的有效特征. 将提取的运动目标特征输入二叉决策树支持向量机, 实现多类目标的准确分类. 通过在不同视频序列上的实验验证, 提出的算法对运动目标进行较好地分类, 而且在运算速度方面较传统目标分类方法有了明显的提高. 实验结果证明了算法对运动目标分类具有较好的准确性 可靠性和鲁棒性.-For the purpose of semantically classifying moving objects accurately in a surveillance scene,a moving objects classification method based on the clustered kernel principal component analysis ( CKPCA) of the histogram
of oriented gradients ( HOG) and support vector machine ( SVM) was proposed. Firstly,the moving areas in the
foreground were extracted by means of the background subtraction method,and some of them were identified as potential candidates of moving objects. Secondly,the characteristics of the moving objects were obtained by the CKPCA- HOG descr iptor,which could describe the moving objects' effective features at a lower data dimension. Finally,the data characteristics were fed into a binary SVM decision tree,and the final multi- class classification results were obtained accurately. After verifying different video sequences,the algorithm was able to classify moving targets very well. Compared with traditional classification methods,the proposed method makes obvious improv
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基于CKPCA_HOG和支持向量机的运动目标分类算法.pdf