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    地质灾害隐患关联要素遥感智能识别平台设计与实现

    Design and implementation of a remote sensing platform for intelligent identification of geological hazards and related elements

    • 摘要: 现有国内外主流遥感智能识别平台普遍面临数据安全与隐私、成本与资源限制、技术依赖性强与灵活性差的共性痛点问题,该文设计了集“样本构建-模型训练-智能识别”功能于一体的智能识别平台,针对性地解决上述问题。该平台突破了地质灾害隐患及其关联要素(房屋、道路等可能受到地质灾害隐患影响的信息)在全流程、规模化地质灾害隐患及其关联要素智能识别的瓶颈,实现了对“多要素、多场景、多模型”的高效应用,显著提升了计算精度与效率,增强了技术自主性。同时,本研究为自然资源全要素遥感智能识别平台的研发提供了可复制、可推广的范式。

       

      Abstract: Global mainstream remote sensing platforms for intelligent identification of geological hazards and related elements (e.g., houses, roads, and other factors potentially affected by geological hazards) generally face common challenges, such as data security and privacy concerns, cost and resource limitations, dependency on proprietary technologies, and poor flexibility. To address these challenges, this study designed and implemented an intelligent identification platform that integrates sample construction, model training, and intelligent identification. This platform achieves a breakthrough in the full-process and large-scale intelligent identification of geological hazards and related elements. It efficiently supports the multi-element, multi-scenario, and multi-model applications, significantly improving the computational accuracy and efficiency while also enhancing technological autonomy. This study provides a replicable and generalizable paradigm for developing comprehensive remote sensing platforms for intelligent identification of natural resources.

       

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