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火星含水矿物高光谱遥感探测算法的原理、现状及展望

吴兴 周翔 李柯仪 刘洋

吴兴, 周翔, 李柯仪, 刘洋. 火星含水矿物高光谱遥感探测算法的原理、现状及展望[J]. 空间科学学报. doi: 10.11728/cjss2025.06.2024-0173
引用本文: 吴兴, 周翔, 李柯仪, 刘洋. 火星含水矿物高光谱遥感探测算法的原理、现状及展望[J]. 空间科学学报. doi: 10.11728/cjss2025.06.2024-0173
WU Xing, ZHOU Xiang, LI Keyi, LIU Yang. Principles, Current Status and Prospects of Hydrated Minerals Detection on Mars with Hyperspectral Remote Sensing (in Chinese). Chinese Journal of Space Science, 2025, 45(6): 1482-1491 doi: 10.11728/cjss2025.06.2024-0173
Citation: WU Xing, ZHOU Xiang, LI Keyi, LIU Yang. Principles, Current Status and Prospects of Hydrated Minerals Detection on Mars with Hyperspectral Remote Sensing (in Chinese). Chinese Journal of Space Science, 2025, 45(6): 1482-1491 doi: 10.11728/cjss2025.06.2024-0173

火星含水矿物高光谱遥感探测算法的原理、现状及展望

doi: 10.11728/cjss2025.06.2024-0173 cstr: 32142.14.cjss.2024-0173
基金项目: 国家自然科学基金项目(42241111, 42430210, 42441832)和中国科协青年人才托举工程项目(2022QNRC001)共同资助
详细信息
    作者简介:
    • 吴兴 男, 1993年11月出生于陕西省西安市, 现为中国科学院国家空间科学中心副研究员, 硕士生导师, 主要研究方向为火星高光谱遥感. E-mail: wuxing@nssc.ac.cn
    通讯作者:
    • 刘洋 男, 1984年1月出生于山东省泰安市, 现为中国科学院国家空间科学中心研究员, 博士生导师, 主要从事行星科学研究, 研究领域包括月球火星物质成分反演、火星宜居环境演化等. E-mail: yangliu@nssc.ac.cn
  • 中图分类号: P141.2

Principles, Current Status and Prospects of Hydrated Minerals Detection on Mars with Hyperspectral Remote Sensing

  • 摘要: 火星是太阳系中与地球最为相似的类地行星, 因其潜在的宜居性成为深空探测的热点星球. 含水矿物是火星水岩相互作用的产物, 其对研究火星早期水环境、地质演化及宜居性具有重要意义. 高光谱遥感技术通过超高光谱分辨率, 为含水矿物的识别与丰度反演提供了重要工具. 然而火星含水矿物分布零散且丰度极低, 加之光谱混合与噪声影响, 目前探测主要依赖光谱参数法与目视解译, 难以满足海量高光谱数据的处理需求. 近年来, 机器学习在地球高光谱遥感技术中的迅猛发展为火星矿物探测提供了新思路, 但其在火星上的应用研究仍处于初步探索阶段. 本文从定性识别和定量反演两方面系统梳理了火星含水矿物高光谱探测的研究进展, 评估了各种方法的优缺点与适用性, 并结合当前瓶颈提出未来发展方向, 为火星含水矿物探测的发展提供参考.

     

  • 图  1  火星轨道光谱数据空间分辨率与波段数(光谱分辨率)的关系. CRISM-M和CRISM-T分别代表多光谱模式和目标模式观测数据, MMS-M和MMS-H 分别代表多光谱模式和高光谱模式观测数据

    Figure  1.  Relationship between spatial and spectral resolution of Mars orbital spectral data. CRISM-M and CRISM-T represent target mode and multispectral mode, respectively; whereas MMS-M and MMS-H denote multispectral mode and hyperspectral mode, respectively

    图  2  常见含水矿物的反射率光谱曲线(a)和去连续统光谱曲线(b)

    Figure  2.  Reflectance spectra (a) and Continuum-Removed (CR) spectra (b) of common hydrated minerals

    图  3  常见含水矿物吸收特征随波长的变化. 矩形代表吸收特征, 绿色垂线表示吸收中心, 矩形颜色表示吸收深度, 矩形宽度代表吸收深度最大值一半对应的宽度. 黑色、蓝色、绿色、棕色和红色字体分别表示层状硅酸盐、硫酸盐、碳酸盐、其他水合硅酸盐和氢氧化物

    Figure  3.  Variations of absorption features for hydrated minerals with wavelength. Rectangles represent the absorption features, with the green vertical lines indicating the band center, the color of the rectangles representing the band depth, and the width representing the full width at half maximum. The black, blue, green, brown, and red fonts represent phyllosilicates, sulfates, carbonates, other hydrated silicates, and hydroxides, respectively

    图  4  光谱混合模型

    Figure  4.  Spectral mixing models

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  • 收稿日期:  2024-11-26
  • 修回日期:  2025-01-15
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