Publications

Explore our research publications: papers, articles, and conference proceedings from AImageLab.

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Computer-aided techniques for Chromogenic Immunohistochemistry: Status and Directions

Authors: Di Cataldo, Santa; Ficarra, Elisa; Macii, Enrico

Published in: COMPUTERS IN BIOLOGY AND MEDICINE

2012 Articolo su rivista

Integrate tool for online analysis and offline mining of people trajectories

Authors: Calderara, Simone; Prati, Andrea; Cucchiara, Rita

Published in: IET COMPUTER VISION

In the past literature, online alarm-based video-surveillance and offline forensic-based data mining systems are often treated separately, even from different … (Read full abstract)

In the past literature, online alarm-based video-surveillance and offline forensic-based data mining systems are often treated separately, even from different scientific communities. However, the founding techniques are almost the same and, despite some examples in commercial systems, the cases on which an integrated approach is followed are limited. For this reason, this study describes an integrated tool capable of putting together these two subsystems in an effective way. Despite its generality, the proposal is here reported in the case of people trajectory analysis, both in real time and offline. Trajectories are modelled based on either their spatial location or their shape, and proper similarity measures are proposed. Special solutions to meet real-time requirements in both cases are also presented and the trade-off between efficiency and efficacy is analysed by comparing when using a statistical model and when not. Examples of results in large datasets acquired in the University campus are reported as preliminary evaluation of the system.

2012 Articolo su rivista

Intelligent Video Surveillance

Authors: Cucchiara, Rita; Prati, Andrea; Vezzani, Roberto

Safety and security reasons are pushing the growth of surveillance systems, for both prevention and forensic tasks. Unfortunately, most of … (Read full abstract)

Safety and security reasons are pushing the growth of surveillance systems, for both prevention and forensic tasks. Unfortunately, most of the installed systems have recording capability only, with quality so poor that makes them completely unhelpful. This chapter will introduce the concepts of modern systems for Intelligent Video Surveillance (IVS), with the claim of providing neither a complete treatment nor a technical description of this topic but of representing a simple and concise panorama of the motivations, components, and trends of these systems. Different from CCTV systems, IVS should be able, for instance, to monitor people in public areas and smart homes, to control urban traffi c, and to identity assessment for security and safety of critical infrastructure.

2012 Capitolo/Saggio

Learning Discriminative Spatial Relations for Detector Dictionaries: An Application to Pedestrian Detection

Authors: Sangineto, E; Cristani, M; Del Bue, A; Murino, V

Published in: LECTURE NOTES IN COMPUTER SCIENCE

2012 Relazione in Atti di Convegno

Learning Non-Target Items for Interesting Clothes Segmentation in Fashion Images

Authors: Grana, Costantino; Calderara, Simone; Borghesani, Daniele; Cucchiara, Rita

Published in: INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION

In this paper we propose a color-based approach for skin detection and interest garment selection aimed at an automatic segmentation … (Read full abstract)

In this paper we propose a color-based approach for skin detection and interest garment selection aimed at an automatic segmentation of pieces of clothing. For both purposes, the color description is extracted by an iterative energy minimization approach and an automatic initialization strategy is proposed by learning geometric constraints and shape cues. Experiments confirms the good performance of this technique both in the context of skin removal and in the context of classification of garments.

2012 Relazione in Atti di Convegno

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics): Preface

Authors: Fusiello, A.; Murino, V.; Cucchiara, R.

Published in: LECTURE NOTES IN COMPUTER SCIENCE

2012 Relazione in Atti di Convegno

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics): Preface

Authors: Fusiello, A.; Murino, V.; Cucchiara, R.

Published in: LECTURE NOTES IN COMPUTER SCIENCE

2012 Relazione in Atti di Convegno

Multimedia for Cultural Heritage: Key Issues

Authors: Cucchiara, Rita; Grana, Costantino; Borghesani, Daniele; M., Agosti; A. D., Bagdanov

Multimedia technologies have recently created the conditions for a true revolution in the Cultural Heritage domain, particularly in reference to … (Read full abstract)

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.

2012 Relazione in Atti di Convegno

Multiscale Modelling of Cellular Actin Filaments: From Atomistic Molecular to Coarse Grained Dynamics

Authors: Deriu, Marco Agostino; Shkurti, Ardita; Paciello, Giulia; Bidone, Tamara Carla; Morbiducci, Umberto; Ficarra, Elisa; Audenino, Alberto; Acquaviva, Andrea

Published in: PROTEINS

In this article, we present a computational multiscale model for the characterization of subcellular proteins. The model is encoded inside … (Read full abstract)

In this article, we present a computational multiscale model for the characterization of subcellular proteins. The model is encoded inside a simulation tool that builds coarse-grained (CG) force fields from atomistic simulations. Equilibrium molecular dynamics simulations on an all-atom model of the actin filament are performed. Then, using the statistical distribution of the distances between pairs of selected groups of atoms at the output of the MD simulations, the force field is parameterized using the Boltzmann inversion approach. This CG force field is further used to characterize the dynamics of the protein via Brownian dynamics simulations. This combination of methods into a single computational tool flow enables the simulation of actin filaments with length up to 400 nm, extending the time and length scales compared to state-of-the-art approaches. Moreover, the proposed multiscale modeling approach allows to investigate the relationship between atomistic structure and changes on the overall dynamics and mechanics of the filament and can be easily (i) extended to the characterization of other subcellular structures and (ii) used to investigate the cellular effects of molecular alterations due to pathological conditions.

2012 Articolo su rivista

Multistage Particle Windows for Fast and Accurate Object Detection

Authors: G., Gualdi; A., Prati; Cucchiara, Rita

Published in: IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE

The common paradigm employed for object detection is the sliding window (SW) search. This approach generates grid-distributed patches, at all … (Read full abstract)

The common paradigm employed for object detection is the sliding window (SW) search. This approach generates grid-distributed patches, at all possible positions and sizes, which are evaluated by a binary classifier: the trade-off between computational burden and detection accuracy is the real critical point of sliding windows; several methods have been proposed to speed up the search such as adding complementary features. We propose a paradigm that differs from any previous approach, since it casts object detection into a statistical-based search using a Monte Carlo sampling for estimating the likelihood density function with Gaussian kernels. The estimation relies on a multi-stage strategy where the proposal distribution is progressively refined by taking into account the feedback of the classifiers. The method can be easily plugged in a Bayesian-recursive framework to exploit the temporal coherency of the target objects in videos. Several tests on pedestrian and face detection, both on images and videos, with different types of classifiers (cascade of boosted classifiers, soft cascades and SVM) and features (covariance matrices, Haar-like features, integral channel features and histogram of oriented gradients) demonstrate that the proposed method provides higher detection rates and accuracy as well as a lower computational burden w.r.t. sliding window detection.

2012 Articolo su rivista

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