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招生学科专业:
信息与通信工程 -- 【招收博士、硕士研究生】 -- 电子信息工程学院
电子信息 -- 【招收博士、硕士研究生】 -- 电子信息工程学院
学历:南京航空航天大学
学位:工学博士学位
所在单位:电子信息工程学院
联系方式:nuaaimage@163.com
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Scene classification from remote sensing images using mid-level deep feature learning
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所属单位:电子信息工程学院
发表刊物:INTERNATIONAL JOURNAL OF REMOTE SENSING
关键字:BAG-OF-FEATURES LAND-USE OBJECT DETECTION WORDS
摘要:Traditional remote sensing scene classification methods based on low-level local or global features easily lead to information loss, additionally, the influence of spatial correlation on scene images and the redundancy of feature representation are neglected. For overcoming these drawbacks, learnable multilayer energized locality constrained affine subspace coding (MELASC) - Convolutional Neural Network (CNN) framework (MELASC-CNN) which could generate orderless feature representation is proposed, and it considers both the diversity of local - global deep features and the redundancies of local geometric structure around visual words. Firstly, the energy of the basis is introduced to limit the number of neighbouring subspaces, moreover learnable locality-constrained affine subspace coding is presented for keeping the locality and sparsity of the corresponding coding vector, and otherwise, we utilize Gaussian Mixed Model (GMM) to improve the robustness of dictionary. Specifically, second-order coding based on information geometry is performed to further improve MELASC-CNN's performance; additionally, three kinds of proximity measures are proposed for describing closeness between features and affine subspaces. Finally, MELASC-CNN is built on the combination of the convolutional and fully connected layers for considering the global and local features. Simultaneously, MELASC-CNN extracts the feature vector at different resolutions through Spatial Pyramid Matching (SPM), and it integrates the spatial information into the final representation vector. For validation and comparison purposes, we conduct extensive experiments on two challenging high-resolution remote sensing datasets and show better performance than other related works.
ISSN号:0143-1161
是否译文:否
发表时间:2020-02-16
合写作者:倪康
通讯作者:吴一全