Publications

Guo, HC; Ye, DQ; Xu, HZY; Bruzzone, L (2024). OBSUM: An object-based spatial unmixing model for spatiotemporal fusion of remote sensing images. REMOTE SENSING OF ENVIRONMENT, 304, 114046.

Abstract
Spatiotemporal fusion aims to improve both the spatial and temporal resolution of remote sensing images, thus facilitating time-series analysis at a fine spatial scale. However, there are several important issues that limit the application of current spatiotemporal fusion methods. First, most spatiotemporal fusion methods are based on pixel-level computation, which neglects the valuable shape information of ground objects. Moreover, many existing methods cannot accurately retrieve strong temporal changes between the available high-resolution image at base date and the predicted one. This study proposes an Object-Based Spatial Unmixing Model (OBSUM), which incorporates object-based image analysis and spatial unmixing, to overcome the two abovementioned problems. OBSUM consists of one preprocessing step and three fusion steps, i.e., object-level unmixing, object-level residual compensation, and pixel-level residual compensation. The performance of OBSUM was compared with seven representative spatiotemporal fusion methods at two agricultural sites. The experimental results demonstrated that OBSUM outperformed other methods in terms of both accuracy indices and visual effects over time-series. Furthermore, OBSUM also achieved satisfactory results in crop progress monitoring and crop mapping. Therefore, it has great potential to generate accurate and high-resolution timeseries observations for supporting various remote sensing applications.

DOI:
10.1016/j.rse.2024.114046

ISSN:
1879-0704