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基于相似度网络融合的极化SAR图像地物分类 被引量:4
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作者 张月 邹焕新 +3 位作者 邵宁远 秦先祥 周石琳 计科峰 《系统工程与电子技术》 EI CSCD 北大核心 2018年第2期295-302,共8页
从极化合成孔径雷达(synthetic aperture radar,SAR)图像中提取多种特征向量堆叠成一个高维特征向量用于地物分类,将导致部分特征向量的分类能力减弱或丧失。针对此问题,将每种特征向量看作为不同视角数据,提出了一种基于一致相似度网... 从极化合成孔径雷达(synthetic aperture radar,SAR)图像中提取多种特征向量堆叠成一个高维特征向量用于地物分类,将导致部分特征向量的分类能力减弱或丧失。针对此问题,将每种特征向量看作为不同视角数据,提出了一种基于一致相似度网络融合的极化SAR图像非监督地物分类方法。首先,将极化SAR图像进行过分割,基于超像素提取5种特征向量以构建5个相似度矩阵;其次,采用一致相似度网络融合多视学习算法生成融合的相似度矩阵;然后,基于该矩阵进行谱聚类;最后,提出一种分类后处理策略修正错分像素。仿真和实测极化SAR图像地物分类结果表明,该方法性能优于其他5种经典方法。 展开更多
关键词 极化SAR图像 非监督分类 多视学习 一致相似度网络融合 谱聚类
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View-invariant human action recognition via robust locally adaptive multi-view learning
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作者 Jia-geng FENG Jun XIAO 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2015年第11期917-929,共13页
Human action recognition is currently one of the most active research areas in computer vision. It has been widely used in many applications, such as intelligent surveillance, perceptual interface, and content-based v... Human action recognition is currently one of the most active research areas in computer vision. It has been widely used in many applications, such as intelligent surveillance, perceptual interface, and content-based video retrieval. However, some extrinsic factors are barriers for the development of action recognition; e.g., human actions may be observed from arbitrary camera viewpoints in realistic scene. Thus, view-invariant analysis becomes important for action recognition algorithms, and a number of researchers have paid much attention to this issue. In this paper, we present a multi-view learning approach to recognize human actions from different views. As most existing multi-view learning algorithms often suffer from the problem of lacking data adaptiveness in the nearest neighborhood graph construction procedure, a robust locally adaptive multi-view learning algorithm based on learning multiple local L 1-graphs is proposed. Moreover, an efficient iterative optimization method is proposed to solve the proposed objective function. Experiments on three public view-invariant action recognition datasets, i.e., ViHASi, IXMAS, and WVU, demonstrate data adaptiveness, effectiveness, and efficiency of our algorithm. More importantly, when the feature dimension is correctly selected (i.e., 〉60), the proposed algorithm stably outperforms state-of-the-art counterparts and obtains about 6% improvement in recognition accuracy on the three datasets. 展开更多
关键词 View-invariant Action recognition Multi-view learning Ll-norm Local learning
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