ICDAR 2019 Competition On Image Retrieval For Historical Handwritten Documents
2019 Β· Vincent Christlein, Anguelos Nicolaou, Mathias Seuret, et al.
Abstract
This competition investigates the performance of large-scale retrieval of historical document images based on writing style. Based on large image data sets provided by cultural heritage institutions and digital libraries, providing a total of 20 000 document images representing about 10 000 writers, divided in three types: writers of (i) manuscript books, (ii) letters, (iii) charters and legal documents. We focus on the task of automatic image retrieval to simulate common scenarios of humanities research, such as writer retrieval. The most teams submitted traditional methods not using deep learning techniques. The competition results show that a combination of methods is outperforming single methods. Furthermore, letters are much more difficult to retrieve than manuscripts.
Authors
(none)
Tags
Stats
Related papers
- Pattern Spotting And Image Retrieval In Historical Documents Using Deep Hashing (2022)2.26
- A Comprehensive Study Of Imagenet Pre-training For Historical Document Image Analysis (2019)13.28
- Deep Learning Approaches For Image Retrieval And Pattern Spotting In Ancient Documents (2019)0.00
- A Generic Image Retrieval Method For Date Estimation Of Historical Document Collections (2022)3.58
- Language-agnostic Visual Embeddings For Cross-script Handwriting Retrieval (2026)0.00
- Lifelong Learning For Text Retrieval And Recognition In Historical Handwritten Document Collections (2019)5.24
- Online Writer Retrieval With Chinese Handwritten Phrases: A Synergistic Temporal-frequency Representation Learning Approach (2024)7.11
- IRPAPERS: A Visual Document Benchmark For Scientific Retrieval And Question Answering (2026)0.00