Remote sensing image interpretation of geological lithology via a sensitive feature self-aggregation deep fusion network

IF 7.6 Q1 REMOTE SENSING
Kang He , Jie Dong , Haozheng Ma , Yujie Cai , Ruyi Feng , Yusen Dong , Lizhe Wang
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引用次数: 0

Abstract

Geological lithological interpretation is a key focus in Earth observation research, with applications in resource surveys, geological mapping, and environmental monitoring. Although deep learning (DL) methods has significantly improved the performance of lithological remote sensing interpretation, its accuracy remains far below the level achieved by visual interpretation performed by domain experts. This disparity is primarily due to the heavy reliance of current intelligent lithological interpretation methods on remote sensing imagery (RSI), coupled with insufficient exploration of sensitive features (SF) and prior knowledge (PK), resulting in low interpretation precision. Furthermore, multi-modal SF and PK exhibit significant spatiotemporal heterogeneity, which hinders their direct integration into DL networks. In this work, we propose the sensitive feature self-aggregation deep fusion network (SFA-DFNet). Inspired by the visual interpretation practices of domain experts, we selected the five most commonly used SF and one type of PK as multi-modal supplementary information. To address the spatiotemporal heterogeneity of SF and PK, we designed a self-aggregation mechanism (SA-Mechanism) that dynamically selects and optimizes beneficial information from multi-modal features for lithological interpretation. This mechanism has broad applicability and can be extended to support any number of modal data. Additionally, we introduced the cross-modal feature interaction fusion module (CM-FIFM), which enhances the effective exchange and fusion of RSI, SF, and PK by leveraging long-range contextual information. Experimental results on two datasets demonstrate that differences in lithological genesis and types are critical factors affecting interpretation accuracy. Compared with seven SOTA DL models, our method achieves more than a 3% improvement in mIoU, showcasing its effectiveness and robustness.
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来源期刊
International journal of applied earth observation and geoinformation : ITC journal
International journal of applied earth observation and geoinformation : ITC journal Global and Planetary Change, Management, Monitoring, Policy and Law, Earth-Surface Processes, Computers in Earth Sciences
CiteScore
12.00
自引率
0.00%
发文量
0
审稿时长
77 days
期刊介绍: The International Journal of Applied Earth Observation and Geoinformation publishes original papers that utilize earth observation data for natural resource and environmental inventory and management. These data primarily originate from remote sensing platforms, including satellites and aircraft, supplemented by surface and subsurface measurements. Addressing natural resources such as forests, agricultural land, soils, and water, as well as environmental concerns like biodiversity, land degradation, and hazards, the journal explores conceptual and data-driven approaches. It covers geoinformation themes like capturing, databasing, visualization, interpretation, data quality, and spatial uncertainty.
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