A large scale training sample database system for intelligent interpretation of remote sensing imagery

Artificial Intelligence (AI) Machine Learning (ML) technologies, particularly Deep Learning (DL), have demonstrated significant potential in the interpretation of Remote Sensing (RS) imagery, covering tasks such as scene classification, object detection, land-cover/land-use classification, change de...

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Bibliographic Details
Published in:Geo-spatial information science Vol. 27; no. 5; pp. 1489 - 1508
Main Authors: Cao, Zhipeng, Jiang, Liangcun, Yue, Peng, Gong, Jianya, Hu, Xiangyun, Liu, Shuaiqi, Tan, Haofeng, Liu, Chang, Shangguan, Boyi, Yu, Dayu
Format: Journal Article
Language:English
Published: Wuhan Taylor & Francis 02-09-2024
Taylor & Francis Ltd
Taylor & Francis Group
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Summary:Artificial Intelligence (AI) Machine Learning (ML) technologies, particularly Deep Learning (DL), have demonstrated significant potential in the interpretation of Remote Sensing (RS) imagery, covering tasks such as scene classification, object detection, land-cover/land-use classification, change detection, and multi-view stereo reconstruction. Large-scale training samples are essential for ML/DL models to achieve optimal performance. However, the current organization of training samples is ad-hoc and vendor-specific, lacking an integrated approach that can effectively manage training samples from different vendors to meet the demands of various RS AI tasks. This article proposes a solution to address these challenges by designing and implementing LuoJiaSET, a large-scale training sample database system for intelligent interpretation of RS imagery. LuoJiaSET accommodates over five million training samples, providing support for cross-dataset queries and serving as a comprehensive training data store for RS AI model training and calibration. It overcomes challenges related to label semantic categories, structural heterogeneity in label representation, and interoperable data access.
ISSN:1009-5020
1993-5153
DOI:10.1080/10095020.2023.2244005