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Language-Agnostic Visual Embeddings for Cross-Script Handwriting Retrieval

About

Handwritten word retrieval is vital for digital archives but remains challenging due to large handwriting variability and cross-lingual semantic gaps. While large vision-language models offer potential solutions, their prohibitive computational costs hinder practical edge deployment. To address this, we propose a lightweight asymmetric dual-encoder framework that learns unified, style-invariant visual embeddings. By jointly optimizing instance-level alignment and class-level semantic consistency, our approach anchors visual embeddings to language-agnostic semantic prototypes, enforcing invariance across scripts and writing styles. Experiments show that our method outperforms 28 baselines and achieves state-of-the-art accuracy on within-language retrieval benchmarks. We further conduct explicit cross-lingual retrieval, where the query language differs from the target language, to validate the effectiveness of the learned cross-lingual representations. Achieving strong performance with only a fraction of the parameters required by existing models, our framework enables accurate and resource-efficient cross-script handwriting retrieval.

Fangke Chen, Tianhao Dong, Sirry Chen, Guobin Zhang, Yishu Zhang, Yining Chen• 2026

Related benchmarks

TaskDatasetResultRank
Handwriting RetrievalHandwriting Spanish synthetic disjoint fonts (Out-of-Domain (OOD))
Top-1 Accuracy86.05
30
Handwriting RetrievalHandwriting In-Domain Set
Accuracy@197.38
30
Image-to-Text Cross-lingual RetrievalOOD handwriting set
Accuracy@1 (en->zh)73.55
7
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