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国家自然科学基金(61379074)

作品数:5 被引量:11H指数:3
相关作者:金诚闵勇彭艳斌常杰潘志刚更多>>
相关机构:浙江大学浙江工业大学腾讯科技(深圳)有限公司更多>>
发文基金:国家自然科学基金浙江省自然科学基金更多>>
相关领域:自动化与计算机技术理学更多>>

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Two-level hierarchical feature learning for image classification被引量:3
2016年
In some image classification tasks, similarities among different categories are different and the samples are usually misclassified as highly similar categories. To distinguish highly similar categories, more specific features are required so that the classifier can improve the classification performance. In this paper, we propose a novel two-level hierarchical feature learning framework based on the deep convolutional neural network(CNN), which is simple and effective. First, the deep feature extractors of different levels are trained using the transfer learning method that fine-tunes the pre-trained deep CNN model toward the new target dataset. Second, the general feature extracted from all the categories and the specific feature extracted from highly similar categories are fused into a feature vector. Then the final feature representation is fed into a linear classifier. Finally, experiments using the Caltech-256, Oxford Flower-102, and Tasmania Coral Point Count(CPC) datasets demonstrate that the expression ability of the deep features resulting from two-level hierarchical feature learning is powerful. Our proposed method effectively increases the classification accuracy in comparison with flat multiple classification methods.
Guang-hui SONGXiao-gang JINGen-lang CHENYan NIE
关键词:图像分类卷积神经网络电视新闻线性分类器
基于流形波段选择的高光谱图像分类被引量:4
2016年
为解决高光谱图像中高维数据和有标记训练样本不足的矛盾导致"维度灾难"问题,提出一种无监督的基于流形学习的波段选择(MLBS)方法。首先通过流形学习方法,得到原始数据的流形嵌入映射;然后通过LASSO优化过程,运用顺向坐标下降算法,得到原始波段对每个流形结构维度的贡献度;最后统计每个波段的贡献度,选取贡献度大的波段形成波段子集。用真实的AVIRIS高光谱图像对算法进行仿真实验的结果表明,本文方法在小样本下的高光谱地物分类识别问题上具有良好的效果。
彭艳斌郑志军潘志刚李晓勇金诚
关键词:高光谱图像波段选择流形学习
Continuous Multiplicative Attribute Graph Model
2017年
Network modeling is an important approach in many fields in analyzing complex systems. Recently new series of methods have emerged, by using Kronecker product and similar tools to model real systems. One of such approaches is the multiplicative attribute graph(MAG) model, which generates networks based on category attributes of nodes. In this paper we try to extend this model into a continuous one, give an overview of its properties, and discuss some special cases related to real-world networks, as well as the influence of attribute distribution and affinity function respectively.
黄嘉烜金小刚
关键词:社会网络
Modeling dual-scale epidemic dynamics on complex networks with reaction diffusion processes
2014年
The frequent outbreak of severe foodborne diseases(e.g., haemolytic uraemic syndrome and Listeriosis) in 2011 warns of a potential threat that world trade could spread fatal pathogens(e.g., enterohemorrhagic Escherichia coli). The epidemic potential from trade involves both intra-proliferation and inter-diffusion. Here, we present a worldwide vegetable trade network and a stochastic computational model to simulate global trade-mediated epidemics by considering the weighted nodes and edges of the network and the dual-scale dynamics of epidemics. We address two basic issues of network structural impact in global epidemic patterns:(1) in contrast to the prediction of heterogeneous network models, the broad variability of node degree and edge weights of the vegetable trade network do not determine the threshold of global epidemics;(2) a ‘penetration effect', by which community structures do not restrict propagation at the global scale, quickly facilitates bridging the edges between communities, and leads to synchronized diffusion throughout the entire network. We have also defined an appropriate metric that combines dual-scale behavior and enables quantification of the critical role of bridging edges in disease diffusion from widespread trading. The unusual structure mechanisms of the trade network model may be useful in producing strategies for adaptive immunity and reducing international trade frictions.
Xiao-gang JINYong MIN
关键词:WORLDWIDENETWORKSFOODBORNESCALE-FREENETWORKSMEAN-FIELD
在线社交网络控制实验的现状与展望被引量:4
2020年
在线社交网络已发展成为一个独特的电子生态系统,其应用深刻影响着人们生活的方方面面。由于在线社交网络特性复杂,分析在线社交网络形成和变化中的规律成为当前计算机科学、社会学和物理学的一项挑战。传统上,在线社交网络实证研究主要采用计算机辅助的被动数据获取和分析方式。近年来,在真实大规模在线社交网络上直接进行控制实验从而主动获取数据并开展分析研究的方式广受关注。评述了这一领域的研究进展,包括:社交网络控制实验的主要研究模式;控制实验方法在社交网络结构、信息传播、行为和心理学等领域取得的主要成果以及主要实验工具的适用条件和局限性。最后,展望了人工智能技术在社交网络控制实验中的应用潜力,分析了智能算法对降低实验成本和提高实验效率的作用。
金诚金诚闵勇闵勇金小刚葛滢
关键词:人工智能
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