Unmixing-based radiometric and spectral harmonization for consistency of multi-sensor reflectance time-series data

被引:2
|
作者
Obata, Kenta [1 ]
Yoshioka, Hiroki [1 ]
机构
[1] Aichi Prefectural Univ, Dept Informat Sci & Technol, 1522 3 Ibaragabasama, Nagakute, Aichi 4801198, Japan
关键词
Multi-sensor; Reflectance; Radiometric correction; Spectral transformation; Unmixing; NDVI; Landsat; MODIS SURFACE REFLECTANCE; LANDSAT; VEGETATION; NDVI; MSS; TM; NORMALIZATION; CALIBRATION; SENTINEL-2; IMAGERY;
D O I
10.1016/j.isprsjprs.2024.05.016
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
We developed a new algorithm for computing radiometrically and spectrally consistent surface reflectances from multiple sensors. The algorithm approximates surface reflectances of reference sensors directly from top-of-atmosphere (TOA) reflectances of sensors-to-be-transformed. A unique characteristic of the algorithm is that coefficients in the algorithm are computed independently using statistics of time-series reflectance data for each sensor; thus, no regressions or optimizations using pairs of data from different sensors are required. This characteristic can lead to a substantial reduction in the number of computational tasks required for calibrating models when numerous satellite sensors or datasets are used. First, a system of equations relating TOA reflectances of one sensor and surface reflectances of another sensor in the red and near-infrared bands was analytically approximated using a linear mixture model of three land-cover types and radiative transfer in the atmosphere. The equations were subsequently used to develop an unmixing-based algorithm for radiometric corrections and spectral transformations. The algorithm was evaluated using synchronous observation data and long-term time-series data with middle spatial resolution, which were obtained from the Landsat 4-5 Multispectral Scanner (MSS) and Thematic Mapper (TM) sensors. Results obtained using contemporaneous data from the two sensors indicated that cross-sensor differences in reflectances and in a spectral index, the normalized difference vegetation index (NDVI), between the MSS and TM sensors were reduced to reasonable levels after the algorithm was applied; the magnitudes of remaining biases were less than 0.005 in reflectance units and less than 0.03 in NDVI units. Results obtained using time-series data for four regions of interest with different land-cover types indicated that the transformed MSS time-series data well synchronized with the TM data used as a reference. Reflectance differences remaining after implementation of the algorithm were possibly due to instability of the algorithm for computing parameters, sensor-dependent quality assurance (QA) data and QA accuracy, and geolocation errors, among others. The concept of the developed algorithm might be applicable universally to various combinations of spectral bands and sensors/missions, which should be further evaluated for cross-sensor radiometric and spectral harmonization with the aim of multi-sensor analysis.
引用
收藏
页码:396 / 411
页数:16
相关论文
共 50 条
  • [41] Phytoplankton Bloom Dynamics in the Baltic Sea Using a Consistently Reprocessed Time Series of Multi-Sensor Reflectance and Novel Chlorophyll-a Retrievals
    Brando, Vittorio E.
    Sammartino, Michela
    Colella, Simone
    Bracaglia, Marco
    Di Cicco, Annalisa
    D'Alimonte, Davide
    Kajiyama, Tamito
    Kaitala, Seppo
    Attila, Jenni
    REMOTE SENSING, 2021, 13 (16)
  • [42] AutoSS: A Deep Learning-Based Soft Sensor for Handling Time-Series Input Data
    Bargellesi, Nicolo
    Beghi, Alessandro
    Rampazzo, Mirco
    Susto, Gian Antonio
    IEEE ROBOTICS AND AUTOMATION LETTERS, 2021, 6 (03) : 6100 - 6107
  • [43] An innovative deep architecture for aircraft hard landing prediction based on time-series sensor data
    Tong, Chao
    Yin, Xiang
    Li, Jun
    Zhu, Tongyu
    Lv, Renli
    Sun, Liang
    Rodrigues, Joel J. P. C.
    APPLIED SOFT COMPUTING, 2018, 73 : 344 - 349
  • [44] TS-GAN: Time-series GAN for Sensor-based Health Data Augmentation
    Yang Z.
    Li Y.
    Zhou G.
    ACM Transactions on Computing for Healthcare, 2023, 4 (02):
  • [45] Generation of long-term InSAR ground displacement time-series through a novel multi-sensor data merging technique: The case study of the Shanghai coastal area
    Zhao, Qing
    Ma, Guanyu
    Wang, Qiang
    Yang, Tianhang
    Liu, Min
    Gao, Wei
    Falabella, Francesco
    Mastro, Pietro
    Pepe, Antonio
    ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2019, 154 : 10 - 27
  • [46] An Improved Multi-Sensor MTI Time-Series Fusion Method to Monitor the Subsidence of Beijing Subway Network during the Past 15 Years
    Duan, Li
    Gong, Huili
    Chen, Beibei
    Zhou, Chaofan
    Lei, Kunchao
    Gao, Mingliang
    Yu, Hairuo
    Cao, Qun
    Cao, Jin
    REMOTE SENSING, 2020, 12 (13)
  • [47] A Multi-Output Deep Learning Model for Fault Diagnosis Based on Time-Series Data
    Al-Ajeli, Ahmed
    Alshamery, Eman S.
    INTERNATIONAL JOURNAL OF PROGNOSTICS AND HEALTH MANAGEMENT, 2024, 15 (01)
  • [48] Discovery of time-series motif from multi-dimensional data based on MDL principle
    Tanaka, Y
    Iwamoto, K
    Uehara, K
    MACHINE LEARNING, 2005, 58 (2-3) : 269 - 300
  • [49] Temporal Multi-Features Representation Learning-Based Clustering for Time-Series Data
    Lee, Jaehoon
    Kim, Dohee
    Sim, Sunghyun
    IEEE ACCESS, 2024, 12 : 87675 - 87690
  • [50] Normalization of time-series satellite reflectance data to a standard sun-target-sensor geometry using a semi-empirical model
    Zhao, Yongguang
    Li, Chuanrong
    Ma, Lingling
    Tang, Lingli
    Wang, Ning
    Zhou, Chuncheng
    Qian, Yonggang
    EARTH RESOURCES AND ENVIRONMENTAL REMOTE SENSING/GIS APPLICATIONS VIII, 2017, 10428