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Dive into the research topics where Daniele Borghesani is active.

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Featured researches published by Daniele Borghesani.


IEEE Transactions on Image Processing | 2010

Optimized Block-Based Connected Components Labeling With Decision Trees

Costantino Grana; Daniele Borghesani; Rita Cucchiara

In this paper, we define a new paradigm for eight-connection labeling, which employes a general approach to improve neighborhood exploration and minimizes the number of memory accesses. First, we exploit and extend the decision table formalism introducing or-decision tables, in which multiple alternative actions are managed. An automatic procedure to synthesize the optimal decision tree from the decision table is used, providing the most effective conditions evaluation order. Second, we propose a new scanning technique that moves on a 2 × 2 pixel grid over the image, which is optimized by the automatically generated decision tree. An extensive comparison with the state of art approaches is proposed, both on synthetic and real datasets. The synthetic dataset is composed of different sizes and densities random images, while the real datasets are an artistic image analysis dataset, a document analysis dataset for text detection and recognition, and finally a standard resolution dataset for picture segmentation tasks. The algorithm provides an impressive speedup over the state of the art algorithms.


Proceedings of SPIE | 2013

A fast approach for integrating ORB descriptors in the bag of words model

Costantino Grana; Daniele Borghesani; Marco Manfredi; Rita Cucchiara

In this paper we propose to integrate the recently introduces ORB descriptors in the currently favored approach for image classification, that is the Bag of Words model. In particular the problem to be solved is to provide a clustering method able to deal with the binary string nature of the ORB descriptors. We suggest to use a k-means like approach, called k-majority, substituting Euclidean distance with Hamming distance and majority selected vector as the new cluster center. Results combining this new approach with other features are provided over the ImageCLEF 2011 dataset.


Multimedia Tools and Applications | 2011

Automatic segmentation of digitalized historical manuscripts

Costantino Grana; Daniele Borghesani; Rita Cucchiara

The artistic content of historical manuscripts provides a lot of challenges in terms of automatic text extraction, picture segmentation and retrieval by similarity. In particular this work addresses the problem of automatic extraction of meaningful pictures, distinguishing them from handwritten text and floral and abstract decorations. The proposed solution firstly employs a circular statistics description of a directional histogram in order to extract text. Then visual descriptors are computed over the pictorial regions of the page: the semantic content is distinguished from the decorative parts using color histograms and a novel texture feature called Gradient Spatial Dependency Matrix. The feature vectors are finally processed using 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 on high resolution replicas of artistic manuscripts.


international conference on image processing | 2009

Fast block based connected components labeling

Costantino Grana; Daniele Borghesani; Rita Cucchiara

In this paper we present a new optimization technique for the neighborhood computation in connected component labeling focused on images stored in raster scan order. This new technique is based on a 2×2 square block analysis of the image, and it exploits the fact that, when using 8-connection, the pixels of a 2×2 square are all connected to each other. This implies that they will share the same label at the end of the computation. To prove the effectiveness of our proposal, we show a comprehensive comparison of the most used and advanced connected components labeling techniques presented so far. The tests are conducted on high resolution images obtained from digitized historical manuscripts and a set of transformations is applied in order to show the algorithms behavior at different image resolutions and with a varying number of labels.


Pattern Recognition Letters | 2012

Optimal decision trees for local image processing algorithms

Costantino Grana; Manuela Montangero; Daniele Borghesani

In this paper we present a novel algorithm to synthesize an optimal decision tree from OR-decision tables, an extension of standard decision tables, complete with the formal proof of optimality and computational cost analysis. As many problems which require to recognize particular patterns can be modeled with this formalism, we select two common binary image processing algorithms, namely connected components labeling and thinning, to show how these can be represented with decision tables, and the benefits of their implementation as optimal decision trees in terms of reduced memory accesses. Experiments are reported, to show the computational time improvements over state of the art implementations.


international conference on pattern recognition | 2008

Describing texture directions with Von Mises distributions

Costantino Grana; Daniele Borghesani; Rita Cucchiara

In this work we describe a new approach for texture characterization. Starting from the autocorrelation matrix an elegant description through a mixture of Von Mises distributions is proposed. A compact 6 valued descriptor is produced for each block and served as input to an SVM classifier. Tests are carried out on high resolution illuminated manuscripts images.


Multimedia Systems | 2014

Miniature illustrations retrieval and innovative interaction for digital illuminated manuscripts

Daniele Borghesani; Costantino Grana; Rita Cucchiara

In this paper we propose a multimedia solution for the interactive exploration of illuminated manuscripts. We leveraged on the joint exploitation of content-based image retrieval and relevance feedback to provide an effective mechanism to navigate through the manuscript and add custom knowledge in the form of tags. The similarity retrieval between miniature illustrations is based on covariance descriptors, integrating color, spatial and gradient information. The proposed relevance feedback technique, namely Query Remapping Feature Space Warping, accounts for the user’s opinions by accordingly warping the data points. This is obtained by means of a remapping strategy (from the Riemannian space where covariance matrices lie, referring back to Euclidean space) useful to boost the retrieval performance. Experiments are reported to show the quality of the proposal. Moreover, the complete prototype with user interaction, as already showcased at museums and exhibitions, is presented.


conference on image and video retrieval | 2009

Picture extraction from digitized historical manuscripts

Costantino Grana; Daniele Borghesani; Rita Cucchiara

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.


acm multimedia | 2010

Surfing on artistic documents with visually assisted tagging

Daniele Borghesani; Costantino Grana; Rita Cucchiara

This paper describes a complete architecture for the interactive exploration and annotation of artistic collections. In particular the focus is on Renaissance illuminated manuscripts, which typically contain thousands of pictures, used to comment or embellish the manuscript Gothic text. The final aim is to create a human centered multimedia application allowing the non practitioners to enjoy these masterpieces and expert users to share their knowledge. The system is composed by a modern user interface for browsing, surfing and querying, an automatic segmentation module, to ease the initial picture extraction task, and a similarity based retrieval engine, used to provide visually assisted tagging capabilities. A relevance feedback procedure is included to further refine the results. Experiments are reported regarding the adopted visual features based on covariance matrices and the Mean Shift Feature Space Warping relevance feedback. Finally some hints on the user interface for museum installations are discussed.


Communications in computer and information science | 2012

Multimedia for Cultural Heritage: Key Issues

Rita Cucchiara; Costantino Grana; Daniele Borghesani; Maristella Agosti; Andrew D. Bagdanov

Multimedia technologies have recently created the conditions for a true revolution in the Cultural Heritage domain, particularly in reference to the study, exploitation, and fruition of artistic works. New opportunities are arising for researchers in the field of multimedia to share their research results with people coming from the field of art and culture, and viceversa. This paper gathers together opinions and ideas shared during the final discussion session at the 1st International Workshop on Multimedia for Cultural Heritage, as a summary of the problems and possible directions to solve to them.

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Dive into the Daniele Borghesani's collaboration.

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Costantino Grana

University of Modena and Reggio Emilia

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Rita Cucchiara

University of Modena and Reggio Emilia

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Simone Calderara

University of Modena and Reggio Emilia

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Manuela Montangero

University of Modena and Reggio Emilia

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Paolo Santinelli

University of Modena and Reggio Emilia

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Dalia Coppi

University of Modena and Reggio Emilia

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Giovanni Gualdi

University of Modena and Reggio Emilia

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Marco Manfredi

University of Modena and Reggio Emilia

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