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📄 Abstract
Abstract: Historical maps are unique and valuable archives that document geographic
features across different time periods. However, automated analysis of
historical map images remains a significant challenge due to their wide
stylistic variability and the scarcity of annotated training data. Constructing
linked spatio-temporal datasets from historical map time series is even more
time-consuming and labor-intensive, as it requires synthesizing information
from multiple maps. Such datasets are essential for applications such as dating
buildings, analyzing the development of road networks and settlements, studying
environmental changes etc. We present MapSAM2, a unified framework for
automatically segmenting both historical map images and time series. Built on a
visual foundation model, MapSAM2 adapts to diverse segmentation tasks with
few-shot fine-tuning. Our key innovation is to treat both historical map images
and time series as videos. For images, we process a set of tiles as a video,
enabling the memory attention mechanism to incorporate contextual cues from
similar tiles, leading to improved geometric accuracy, particularly for areal
features. For time series, we introduce the annotated Siegfried Building Time
Series Dataset and, to reduce annotation costs, propose generating pseudo time
series from single-year maps by simulating common temporal transformations.
Experimental results show that MapSAM2 learns temporal associations effectively
and can accurately segment and link buildings in time series under limited
supervision or using pseudo videos. We will release both our dataset and code
to support future research.
Authors (7)
Xue Xia
Randall Balestriero
Tao Zhang
Yixin Zhou
Andrew Ding
Dev Saini
+1 more
Submitted
October 31, 2025
Key Contributions
MapSAM2 is a unified framework for segmenting historical map images and time series by adapting a visual foundation model. It innovatively treats both images and time series as videos, enabling few-shot fine-tuning for diverse segmentation tasks and facilitating the creation of linked spatio-temporal datasets from historical maps.
Business Value
Automates the analysis of historical maps, unlocking valuable insights for historical research, urban development planning, and environmental studies.