CVMay 23

Benchmarking Composed Image Retrieval for Applied Earth Observation

arXiv:2605.2444249.6Has Code
AI Analysis

For remote sensing practitioners, this work provides a practical benchmark and insights into the applicability of composed image retrieval for operational EO tasks like change analysis.

The paper benchmarks composed image retrieval methods for Earth observation, finding that training-free composition methods provide strong baselines, and introduces a change-centric dataset (xView2-CIR) for disaster monitoring, revealing that change-centric retrieval poses different challenges than attribute-based retrieval.

Remote sensing composed image retrieval (RSCIR) enables search in large satellite image archives using composed queries that combine a reference image with a textual modifier. Although RSCIR offers a flexible interface for expressing targeted retrieval intent, the transferability of modern composition methods to Earth observation (EO) imagery and their relevance to operational EO workflows remain underexplored. We address this gap through a unified benchmark and an application-oriented study. First, we systematically adapt and evaluate representative composed image retrieval methods with six vision-language backbones on PatternCom under a standardized protocol, analyzing their behavior across backbones, composition strategies, and query types. Second, we introduce xView2-CIR, a change-centric dataset for disaster and damage monitoring, where retrieval is conditioned on scene identity and a target post-event state. Our results show that training-free composition methods provide strong and scalable baselines for EO retrieval, while change-centric retrieval presents different challenges from attribute-based retrieval, particularly due to the need to preserve scene identity. Overall, this study establishes a practical benchmark for RSCIR and positions composed retrieval as a complementary tool for remote sensing image retrieval, archive exploration, and change analysis. The dataset and code are available at https://github.com/billpsomas/rscir.

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