TL;DR
WATCH introduces a satellite imagery framework with multiple scoring methods for detecting archaeological site changes, outperforming baseline approaches and enabling scalable heritage monitoring.
Contribution
The paper presents a novel multi-method framework for change detection in archaeological sites using satellite imagery and foundation-model embeddings, with extensive benchmarking.
Findings
Unsupervised methods outperform weakly supervised approaches in change detection.
TED with SatMAE achieves 55% exact-month recall; 92.5% within three months.
GeoRSCLIP and Prithvi-EO-2.0 paired with SSCD detect anomalies early.
Abstract
Monitoring archaeological sites at scale is vital for protecting cultural heritage, yet pinpointing when disturbances occur remains difficult because visual cues are subtle and ground-truth data are sparse. We introduce WATCH, a framework for month-level change-event localization over PlanetScope satellite mosaics (2017-2024, 4.7 m/px) that supports three complementary scoring approaches: (i) Temporal Embedding Distance (TED), a training-free method that scores month-to-month deviations from a local temporal reference; (ii) Self-Supervised Change Detection (SSCD), an ensemble of reconstruction, forecasting, and latent-novelty signals; and (iii) a Weakly Supervised (WS) temporal localization model trained with sparse event-month labels. We benchmark WATCH on 1,943 archaeological sites in Afghanistan using embeddings from six foundation models (CLIP, GeoRSCLIP, SatMAE, Prithvi-EO-2.0,…
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