中国激光, 2019, 46 (7): 0704011, 网络出版: 2019-07-11   

基于改进Grassberger熵随机森林分类器的目标检测 下载: 999次

Object Detection Based on Improved Grassberger Entropy Random Forest Classifier
作者单位
西北工业大学自动化学院信息融合技术教育部重点实验室, 陕西 西安 710129
引用该论文

马娟娟, 潘泉, 梁彦, 胡劲文, 赵春晖, 郭亚宁. 基于改进Grassberger熵随机森林分类器的目标检测[J]. 中国激光, 2019, 46(7): 0704011.

Juanjuan Ma, Quan Pan, Yan Liang, Jinwen Hu, Chunhui Zhao, Yaning Guo. Object Detection Based on Improved Grassberger Entropy Random Forest Classifier[J]. Chinese Journal of Lasers, 2019, 46(7): 0704011.

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马娟娟, 潘泉, 梁彦, 胡劲文, 赵春晖, 郭亚宁. 基于改进Grassberger熵随机森林分类器的目标检测[J]. 中国激光, 2019, 46(7): 0704011. Juanjuan Ma, Quan Pan, Yan Liang, Jinwen Hu, Chunhui Zhao, Yaning Guo. Object Detection Based on Improved Grassberger Entropy Random Forest Classifier[J]. Chinese Journal of Lasers, 2019, 46(7): 0704011.

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