Automatic Multi-Label Classification of South China Sea Maps Based on AlexNet Model
Qi Xiaoying1,2(),Li Hanyu1,Yang Haiping1,2
1School of Information Management, Nanjing University, Nanjing 210023, China 2Collaborative Innovation Center of South China Sea Studies, Nanjing University, Nanjing 210023, China
[Objective] This paper aims to achieve multi-semantic classification of maps and meet the needs for precise map retrieval and intelligence analysis. [Methods] We designed a map category system and proposed a multi-label map classification strategy. It realized the automatic classification of South China Sea maps based on the AlexNet convolution neural network classification model. [Results] The F1 value of the proposed model is 0.979. This model can effectively realize the multi-label automatic classification of the South China Sea maps. [Limitations] The deep categories of multi-label annotated datasets need to be supplemented. [Conclusions] This paper provides a reference for the semantic-based scientific classification of maps, precise retrieval, and cross-category association.
齐小英, 李晗语, 杨海平. 基于AlexNet模型的南海地图多标签自动分类研究*[J]. 数据分析与知识发现, 2024, 8(4): 76-87.
Qi Xiaoying, Li Hanyu, Yang Haiping. Automatic Multi-Label Classification of South China Sea Maps Based on AlexNet Model. Data Analysis and Knowledge Discovery, 2024, 8(4): 76-87.
da Graça Simões M, de Freitas M C V, Rodríguez-Bravo B. Theory of Classification and Classification in Libraries and Archives:Convergences and Divergences[J]. Knowledge Organization, 2016, 43(7): 530-538.
(Gao Yunmei. Quick Retrieval of Image Resources Based on MGTL-SAE Fine Feature Learning[J]. Information and Documentation Services, 2020, 41(5): 79-87.)
(Ju Fei, Wang qiang. Design and Application of Knowledge Graph for Textile-Themed Images in Ancient Engraving Books[J]. Library Tribune, 2023(10): 126-138.)
(Cheng Jiejing, Wang Xinyu. Construction of Knowledge Organization Model of Dunhuang Documents Images Based on Linked Data[J]. Archives Science Study, 2021(5):52-59.)
(Zhang Yongjuan, Liu Wei, Yu Jianrong, et al. Seal Image Resource Integration and Knowledge Discovery Based on IIIF and Semantic Knowledge Graph[J]. Library and Information Service, 2020, 64(7): 127-135.)
doi: 10.13266/j.issn.0252-3116.2020.07.015
(Lu Lina, Yu Xiao. Recognition and Classification of Deep Learning in Soybean Leaf Image Data Management[J]. Journal of Library and Information Science in Agriculture, 2023, 35(2): 87-94.)
doi: 10.13998/j.cnki.issn1002-1248.21-0188
[7]
成一农. 图像如何入史——以中国古地图为例[J]. 安徽史学, 2020(1): 5-12.
[7]
(Cheng Yinong. How Images Enter History: Take the Ancient Maps of China as an Example[J]. Historical Research in Anhui, 2020(1): 5-12.)
(Deng Sanhong, Liu Qijin, Xia Lixin. Research on Categorization of Social Tags Applied to Images for Museum Oriented to User Image Descriptions[J]. Library and Information Service, 2016, 60(2): 14-21.)
doi: 10.13266/j.issn.0252-3116.2016.02.002
(Cai Wanjin. A Review of “The Arrangement and Study of Ancient Chinese Maps in the Library of the University of California, Berkeley”[J]. Trends of Recent Researches on the History of China, 2020(6): 90-91.)
(Tian Qing, Li Xingui. A Review of the Digitization Achievements of Chinese Antique Maps at Home and Abroad[J]. Digital Humanities Research, 2021, 1(3): 63-82.)
(Cheng Sicong, Du Tian, Xu Pengfei. The Research of Construction of Thematic Map Knowledge Base[J]. Urban Geotechnical Investigation & Surveying, 2018(6): 15-18, 23.)
[15]
张克权, 郭仁忠. 试论地图分类[J]. 地图, 1987(2): 3-7.
[15]
(Zhang Kequan, Guo Renzhong. A Tentative Discussion on Map Classifications[J]. Map, 1987(2): 3-7.)
(Liu Rongmei, Miao Jinli, Zhao Linlin. The Enlightenment of Infrastructure for Spatial Information in the European Community(INSPIRE) on Chinese Geological Informatization[J]. Geological Bulletin of China, 2015, 34(8): 1562-1569.)
(Li Lin, Wang Hong. Classification of Fundamental Geographic Information Based on Formal Ontology[J]. Geomatics and Information Science of Wuhan University, 2006, 31(6): 523-526.)
(Li Junli, He Zongyi, Yan Xiongfeng, et al. A Semantic Categorization of Hydrological Domain Based on Formal Concept Analysis[J]. Acta Geodaetica et Cartographica Sinica, 2014, 43(9): 976-981.)
doi: 10.13485/j.cnki.11-2089.2014.0130
(Wang Si, Wang Guangxia, Tian Jiangpeng. Classification Model of Ubiquitous Map Information Facing Location-Based Aggregation[J]. Acta Geodaetica et Cartographica Sinica, 2021, 50(6): 789-799.)
doi: 10.11947/j.AGCS.2021.20200191
(State Administration for Market Regulation, Standardization Administration of the People’s Republic of China. Specification for Fundamental Geographic Information Ontology Exemplar Data: GB/T 41446—2022[S]. Beijing: Standards Press of China, 2022.)
(State Administration for Market Regulation, Standardization Administration of the People’s Republic of China. Classification and Codes for Fundamental Geographic Information Feature: GB/T 13923—2022[S]. Beijing: Standards Press of China, 2022.)
(Jiao Yangyang, Liu Pingzhi, Liu Ailong, et al. Map Building Shape Classification Method Based on AlexNet[J]. Journal of Geo-Information Science, 2022, 24(12): 2333-2341.)
doi: 10.12082/dqxxkx.2022.210396
[25]
杨泽龙. 融合文本和图像描述的网络地图服务主题分类研究[D]. 武汉: 武汉大学, 2020.
[25]
(Yang Zelong. Research on Subject Classification of Web Map Service Based on Text and Image Description[D]. Wuhan: Wuhan University, 2020.)
(Cui Tengteng, Liu Jiping, Luo An. Intelligent Identification Method of Network Map Images Based on Convolutional Neural Network[J]. Science of Surveying and Mapping, 2019, 44(1): 118-123.)
[27]
Zhou X R, Li W W, Arundel S T, et al. Deep Convolutional Neural Networks for Map-Type Classification[OL]. arXiv Preprint, arXiv: 1805.10402.
[28]
马爱芳, 张安定. 谈谈地图文献的分类及收藏[J]. 地图, 1995(3): 17-19.
[28]
(Ma Aifang, Zhang Anding. Classification and Collection of Map Documents[J]. Map, 1995(3): 17-19.)
[29]
宫坂逸郎. 图书资料的分类[M]. 宋益民译. 北京: 书目文献出版社, 1982: 17-26.
[29]
(Miyazaka, Ishiyama. Classification of Books and Materials[M].Translated by Song Yimin. Beijing: Bibliographic Literature Press, 1982: 17-26.)
(Yan Jia, Yang Min, Peng Mei. Research on the Construction of Image Data Infrastructure Oriented to Digital Humanities: From the Perspective of the Field of Libraries, Museums and Archives in China[J]. Library, 2021(5): 51-58.)
[31]
Zhang M L, Zhou Z H. A Review on Multi-label Learning Algorithms[J]. IEEE Transactions on Knowledge and Data Engineering, 2014, 26(8): 1819-1837.
(Editorial Board of Chinese Library Classification System, National Library of China. Chinese Library Classification System[M]. The 5th Edition. Beijing: National Library of China Publishing House, 2010.)
[33]
本书修订委员会. 中国科学院图书馆图书分类法[M]. 第3版. 北京: 科学出版社, 1994.
[33]
(Editorial Board. Book Classification in the Library of the Chinese Academy of Sciences[M]. The 3rd Edition. Beijing: Science Press, 1994.)
[34]
马书慧. 《中图法》地图列类和分类问题[J]. 图书馆学刊, 1992(2): 21-22.
[34]
(Ma Shuhui. Classification of Maps in Chinese Library Classification[J]. Journal of Library Science, 1992(2): 21-22.)
[35]
李嗣贞. 地图的分类与编目[J]. 黑龙江图书馆, 1984(4): 22-24.
[35]
(Li Sizhen. Classification and Cataloging of Maps[J]. Heilongjiang Library, 1984(4): 22-24.)
(Е.И. Shaomulin. A Brief History of Book Classification-Volume 2[M]. Translated by He Shanxiang, Zheng Shengchou. Beijing: Scientific and Technical Documentation Press, 1989.)
[37]
中国科学技术情报研究所. 国际十进分类法[M]. 北京: 中国科学技术情报研究所, 1960.
[37]
(Institute of Scientific and Technical Information of China. Universal Decimal Classification[M]. Beijing: Institute of Scientific and Technical Information of China, 1960.)
[38]
Krizhevsky A, Sutskever I, Hinton G E. ImageNet Classification with Deep Convolutional Neural Networks[C]// Proceedings of the 25th International Conference on Neural Information Processing Systems - Volume 1. 2012: 1097-1105.
[39]
Chen L, Wang R G, Yang J, et al. Multi-label Image Classification with Recurrently Learning Semantic Dependencies[J]. The Visual Computer, 2019, 35: 1361-1371.