In this work we propose a system for automatic document segmentation to extract graphical elements from historical manuscripts and then to identify significant pictures from them, removing floral and abstract decorations. The system performs a block based analysis by means of color and texture features. The Gradient Spatial Dependency Matrix, a new texture operator particularly effective for this task, is proposed. The feature vectors are processed by an embedding procedure which allows increased performance in later SVM classification. Results for both feature extraction and embedding based classification are reported, supporting the effectiveness of the proposal
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
In this paper, we present an unsupervised feature learning method for page segmentation of historica...
In this work we propose a system for automatic document segmentation to extract graphical elements f...
The artistic content of historical manuscripts provides a lot of challenges in terms of automatic te...
The artistic content of historical manuscripts provides a lot of challenges in terms of automatic te...
In this paper a document analysis tool for historical manuscripts is proposed. The goal is to automa...
In this paper a document analysis tool for historical manuscripts is proposed. The goal is to automa...
International audienceMany challenges and open issues related to the tremendous growth in digitizing...
International audienceTexture feature analysis has undergone tremendous growth in recent years. It p...
International audienceTexture feature analysis has undergone tremendous growth in recent years. It p...
Separating content from noise in historical manuscripts is a fundamental task in digital palaeograph...
Separating content from noise in historical manuscripts is a fundamental task in digital palaeograph...
International audienceOver the last few years, there has been tremendous growth in the automatic pro...
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
In this paper, we present an unsupervised feature learning method for page segmentation of historica...
In this work we propose a system for automatic document segmentation to extract graphical elements f...
The artistic content of historical manuscripts provides a lot of challenges in terms of automatic te...
The artistic content of historical manuscripts provides a lot of challenges in terms of automatic te...
In this paper a document analysis tool for historical manuscripts is proposed. The goal is to automa...
In this paper a document analysis tool for historical manuscripts is proposed. The goal is to automa...
International audienceMany challenges and open issues related to the tremendous growth in digitizing...
International audienceTexture feature analysis has undergone tremendous growth in recent years. It p...
International audienceTexture feature analysis has undergone tremendous growth in recent years. It p...
Separating content from noise in historical manuscripts is a fundamental task in digital palaeograph...
Separating content from noise in historical manuscripts is a fundamental task in digital palaeograph...
International audienceOver the last few years, there has been tremendous growth in the automatic pro...
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
Computerized analysis of handwritten documents is an active research area in image analysis and comp...
In this paper, we present an unsupervised feature learning method for page segmentation of historica...