TL;DR
This paper introduces Temporal Cluster Matching (TCM), a novel model for detecting structural changes in satellite imagery over time using only single-time labels, with applications in rural and urban settings.
Contribution
The paper presents TCM, a new change detection method that requires minimal labeling and can be applied across diverse environments, enhancing temporal analysis of satellite images.
Findings
TCM performs comparably to supervised models when using heuristic parameter selection.
The model effectively detects building construction and demolition in various settings.
Using TCM for data augmentation improves deep learning model generalization.
Abstract
Longitudinal studies are vital to understanding dynamic changes of the planet, but labels (e.g., buildings, facilities, roads) are often available only for a single point in time. We propose a general model, Temporal Cluster Matching (TCM), for detecting building changes in time series of remotely sensed imagery when footprint labels are observed only once. The intuition behind the model is that the relationship between spectral values inside and outside of building's footprint will change when a building is constructed (or demolished). For instance, in rural settings, the pre-construction area may look similar to the surrounding environment until the building is constructed. Similarly, in urban settings, the pre-construction areas will look different from the surrounding environment until construction. We further propose a heuristic method for selecting the parameters of our model…
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