4.7 Article

Real-Time Spatiotemporal Spectral Unmixing of MODIS Images

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TGRS.2021.3108540

Keywords

MODIS; Real-time systems; Training; Remote sensing; Spatial resolution; Earth; Artificial satellites; Machine learning; real time; spatiotemporal spectral unmixing (STSU); spectral unmixing

Funding

  1. National Natural Science Foundation of China [41971297, 42171345]
  2. Tongji University [02502350047]

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The article proposes a real-time STSU method (RSTSU) for monitoring land cover changes in real-time, which only requires a single coarse-to-fine spatial resolution image pair for training the learning model, suitable for real-time analysis, and its effectiveness is validated through experiments.
Mixed pixels are a ubiquitous problem in remote sensing images. Spectral unmixing has been used widely for mixed pixel analysis. However, up to now, most spectral unmixing methods require endmembers and cannot consider fully intraclass spectral variation. The recently proposed spatiotemporal spectral unmixing (STSU) method copes with the aforementioned problems through exploitation of the available temporal information. However, this method requires coarse-to-fine spatial image pairs both before and after the prediction time and is, thus, not suitable for important real-time applications (i.e., where the fine spatial resolution data after the prediction time are unknown). In this article, we proposed a real-time STSU (RSTSU) method for real-time monitoring. RSTSU requires only a single coarse-to-fine spatial resolution image pair before, and temporally closest to, the prediction time, coupled with the coarse image at the prediction time, to extract samples automatically to train a learning model. By fully incorporating the multiscale spatiotemporal information, the RSTSU method inherits the key advantages of STSU; it does not need endmembers and can account for intraclass spectral variation. More importantly, RSTSU is suitable for real-time analysis and, thus, facilitates the timely monitoring of land cover changes. The effectiveness of the method was validated by experiments on four Moderate Resolution Imaging Spectroradiometer (MODIS) datasets. RSTSU utilizes and enriches the theory underpinning the advanced STSU method and enhances greatly the applicability of spectral unmixing for time-series data.

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