Hi-UCD: A Large-scale Dataset for Urban Semantic Change Detection in Remote Sensing Imagery
This provides a new benchmark dataset for researchers in remote sensing and urban analysis, addressing specific bottlenecks in the field, though it is incremental as it builds on existing change detection methods.
The authors tackled the lack of high-resolution, semantically annotated, and multi-temporal datasets for urban change detection by introducing Hi-UCD, a large-scale dataset with 0.1 m resolution aerial images, three-time phases, and nine land cover classes, which they benchmarked showing it is challenging yet useful.
With the acceleration of the urban expansion, urban change detection (UCD), as a significant and effective approach, can provide the change information with respect to geospatial objects for dynamical urban analysis. However, existing datasets suffer from three bottlenecks: (1) lack of high spatial resolution images; (2) lack of semantic annotation; (3) lack of long-range multi-temporal images. In this paper, we propose a large scale benchmark dataset, termed Hi-UCD. This dataset uses aerial images with a spatial resolution of 0.1 m provided by the Estonia Land Board, including three-time phases, and semantically annotated with nine classes of land cover to obtain the direction of ground objects change. It can be used for detecting and analyzing refined urban changes. We benchmark our dataset using some classic methods in binary and multi-class change detection. Experimental results show that Hi-UCD is challenging yet useful. We hope the Hi-UCD can become a strong benchmark accelerating future research.