CVNov 26, 2024

Self-supervised Video Instance Segmentation Can Boost Geographic Entity Alignment in Historical Maps

arXiv:2411.17425v11 citationsh-index: 29
Originality Incremental advance
AI Analysis

This work addresses a domain-specific problem for researchers in cultural heritage and historical studies by providing an incremental automation enhancement for geographic entity alignment.

The paper tackles the challenge of linking geographic entities across historical maps by proposing a self-supervised video instance segmentation method, which reduces manual annotation needs and achieves a 24.9% improvement in AP and a 0.23 increase in F1 score compared to training from scratch.

Tracking geographic entities from historical maps, such as buildings, offers valuable insights into cultural heritage, urbanization patterns, environmental changes, and various historical research endeavors. However, linking these entities across diverse maps remains a persistent challenge for researchers. Traditionally, this has been addressed through a two-step process: detecting entities within individual maps and then associating them via a heuristic-based post-processing step. In this paper, we propose a novel approach that combines segmentation and association of geographic entities in historical maps using video instance segmentation (VIS). This method significantly streamlines geographic entity alignment and enhances automation. However, acquiring high-quality, video-format training data for VIS models is prohibitively expensive, especially for historical maps that often contain hundreds or thousands of geographic entities. To mitigate this challenge, we explore self-supervised learning (SSL) techniques to enhance VIS performance on historical maps. We evaluate the performance of VIS models under different pretraining configurations and introduce a novel method for generating synthetic videos from unlabeled historical map images for pretraining. Our proposed self-supervised VIS method substantially reduces the need for manual annotation. Experimental results demonstrate the superiority of the proposed self-supervised VIS approach, achieving a 24.9\% improvement in AP and a 0.23 increase in F1 score compared to the model trained from scratch.

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