This dataset contains the training and test set used in the ICDAR 2019 Competition on Image Retrieval for Historical Handwritten Documents. This competition investigates the performance of large-scale retrieval of historical document images based on writing style.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 training data set encompasses images from (i) Letters A, where each...
The dataset HIMANIS Guérin provides a ground-truth for HTR training (Handwritten Text Recognition) f...
International audienceThis paper presents the results of the ICDAR2017Competition on the Classificat...
International audienceIn this paper, we present an evaluative study of pixel-labeling methods using ...
This competition investigates the performance of large-scale retrieval of historical document fragme...
This dataset contains the test set for the ICDAR2017 Competition on Historical Document Writer Ident...
This dataset comprises the dataset used for the ICDAR 2015 Competition on Handwritten Text Recognit...
Many museum and library archives are digitizing their large collections of handwritten historical ma...
Context. Image searching in historical handwritten documents is a challenging problem in computer vi...
The ICDAR2017 Competition on the Classification of Medieval Handwritings in Latin Script (CLaMM), jo...
This paper presents a systematic literature review of image datasets for document image analysis, fo...
Historical library collections across the world hold huge numbers of handwritten documents. By digit...
© 2016 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
This paper presents a systematic literature review of image datasets for document image analysis, fo...
This dataset contains the training and test set for the ICDAR 2017 Competition on Baseline Detection...
In recent years, libraries and archives all around the world have increased their efforts to digitiz...
The dataset HIMANIS Guérin provides a ground-truth for HTR training (Handwritten Text Recognition) f...
International audienceThis paper presents the results of the ICDAR2017Competition on the Classificat...
International audienceIn this paper, we present an evaluative study of pixel-labeling methods using ...
This competition investigates the performance of large-scale retrieval of historical document fragme...
This dataset contains the test set for the ICDAR2017 Competition on Historical Document Writer Ident...
This dataset comprises the dataset used for the ICDAR 2015 Competition on Handwritten Text Recognit...
Many museum and library archives are digitizing their large collections of handwritten historical ma...
Context. Image searching in historical handwritten documents is a challenging problem in computer vi...
The ICDAR2017 Competition on the Classification of Medieval Handwritings in Latin Script (CLaMM), jo...
This paper presents a systematic literature review of image datasets for document image analysis, fo...
Historical library collections across the world hold huge numbers of handwritten documents. By digit...
© 2016 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
This paper presents a systematic literature review of image datasets for document image analysis, fo...
This dataset contains the training and test set for the ICDAR 2017 Competition on Baseline Detection...
In recent years, libraries and archives all around the world have increased their efforts to digitiz...
The dataset HIMANIS Guérin provides a ground-truth for HTR training (Handwritten Text Recognition) f...
International audienceThis paper presents the results of the ICDAR2017Competition on the Classificat...
International audienceIn this paper, we present an evaluative study of pixel-labeling methods using ...