Publications by Rita Cucchiara

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SARC3D: a new 3D body model for People Tracking and Re-identification

Authors: Baltieri, Davide; Vezzani, Roberto; Cucchiara, Rita

Published in: LECTURE NOTES IN COMPUTER SCIENCE

We propose a new simplified 3D body model (called Sarc3D) for surveillance application, that can be created, updated and compared … (Read full abstract)

We propose a new simplified 3D body model (called Sarc3D) for surveillance application, that can be created, updated and compared in rea-time.People are detected and tracked in each calibrated camera, and their silhouette, appearance, position and orientation are extracted and used to place, scale and orientate a 3D body model. Foreach vertex of the model a signature (color features, reliability and saliency) is computed from the 2D appearance images and exploited for mathing. This approach achieves robustness against partial occlusions, pose and viewpoint changes. The complete proposal and a full experimental evaluation is presented, using a new benchmark suite and the PETS2009 dataset.

2011 Relazione in Atti di Convegno

Using Monolithic Classifiers On Multi-stage Pedestrian Detection

Authors: Gualdi, Giovanni; Prati, Andrea; Cucchiara, Rita

Despite the many efforts in finding effective feature sets or accurate classifiers for people detection, few works have addressed ways … (Read full abstract)

Despite the many efforts in finding effective feature sets or accurate classifiers for people detection, few works have addressed ways for reducing the computational burden introducedby the sliding window paradigm. This paper proposes a multi-stage procedure for refining the search for pedestrians using the HOG features and the monolithic SVM classifier. The multi-stage procedure is based on particle-based estimation of pdfs and exploits the margin provided by the classifier to draw more particles on the areas where the classifier’s response is higher. This iterative algorithm achieves the same accuracy than sliding window using less particles (and thus being more efficient) and, conversely, is more accurate when configured to work at thesame computational load. Experimental results on publicly available datasets demonstrate that this method, previouslyproposed for boosted classifiers only, can be successfully applied to monolithic classifiers.

2011 Relazione in Atti di Convegno

Vision based smoke detection system using image energy and color information

Authors: Calderara, Simone; Piccinini, Paolo; Cucchiara, Rita

Published in: MACHINE VISION AND APPLICATIONS

Smoke detection is a crucial task in many video surveillance applications and could have a great impact to raise the … (Read full abstract)

Smoke detection is a crucial task in many video surveillance applications and could have a great impact to raise the level of safety of urban areas. Many commercial smoke detection sensors exist but most of them cannot be applied in open space or outdoor scenarios. With this aim, the paper presents a smoke detection system that uses a common CCD camera sensor to detect smoke in images and trigger alarms. First, a proper background model is proposed to reliably extract smoke regions and avoid over-segmentation and false positives in outdoor scenarios where many distractors are present, such as moving trees or light reflexes. A novel Bayesian approach is adopted to detect smoke regions in the scene analyzing image energy by means of the Wavelet Transform coefficients and Color Information. A statistical model of image energy is built, using a temporal Gaussian Mixture, to analyze the energy decay that typically occurs when smoke covers the scene then the detection is strengthen evaluating the color blending between a reference smoke color and the input frame. The proposed system is capable of detecting rapidly smoke events both in night and in day conditions with a reduced number of false alarms hence is particularly suitable for monitoring large outdoor scenarios where common sensors would fail. An extensive experimental campaign both on recorded videos and live cameras evaluates the efficacy and efficiency of the system in many real world scenarios, such as outdoor storages and forests.

2011 Articolo su rivista

3D Body Model Construction and Matching for Real Time People Re-Identification

Authors: Baltieri, Davide; Vezzani, Roberto; Cucchiara, Rita

Wide area video surveillance always requires to extract and integrate information coming from different cameras and views. Re-identification of people … (Read full abstract)

Wide area video surveillance always requires to extract and integrate information coming from different cameras and views. Re-identification of people captured from different cameras or different views is one of most challenging problems. In this paper, we present a novel approach for people matching with vertices-based 3D human models.People are detected and tracked in each calibrated camera, and their silhouette, appearance, position and orientation are extracted and used to place, scale and orientate a 3D body model. Colour features are computed from the 2D appearance images and mapped to the 3D model vertices, generating the 3D model for each tracked person. A distance function between 3D models is defined in order to find matches among models belonging to the same person. This approach achieves robustness against partial occlusions, pose and viewpoint changes. A first experimental evaluation is conducted using images extracted from a real camera set-up.

2010 Relazione in Atti di Convegno

A Videosurveillance data browsing software architecture for forensics: From trajectories similarities to video fragments

Authors: Aravecchia, M.; Calderara, S.; Chiossi, S.; Cucchiara, R.

The information contained in digital video surveillance repositories can present relevant hints, when not even legal evidence, during investigations. As … (Read full abstract)

The information contained in digital video surveillance repositories can present relevant hints, when not even legal evidence, during investigations. As the amount of video data often forbids manual search, some tools have been developed during the past years in order to aid investigators in the look up process. We propose an application for forensic video analysis which aims at analysing the activities in a given scenario, particularly focusing on trajectories followed by people and their visual appearances. The recorded videos can be browsed by investigators thanks to a user-friendly interface, allowing easy information retrieval, through the choice of the best mining strategy. The underlying application architecture implements different feature and query models as well as query optimization strategies in order to return the best response in terms of both efficacy and efficiency.

2010 Relazione in Atti di Convegno

Alignment-based Similarity of People Trajectories using Semi-directional Statistics

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

Published in: INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION

This paper presents a method for comparing people trajectories for video surveillance applications, based on semi-directional statistics. In fact, the … (Read full abstract)

This paper presents a method for comparing people trajectories for video surveillance applications, based on semi-directional statistics. In fact, the modelling of a trajectory as a sequence of angles, speeds and time lags, requires the use of a statistical tool capable to jointly consider periodic and linear variables. Our statistical method is compared with two state-of-the-art methods.

2010 Relazione in Atti di Convegno

Bag-Of-Words Classification of Miniature Illustrations

Authors: Grana, Costantino; Borghesani, Daniele; Gualdi, Giovanni; Cucchiara, Rita

In this paper a system for illuminated manuscripts images analysis is presented. In particular the bag-of-keypoints strategy, commonly adopted for … (Read full abstract)

In this paper a system for illuminated manuscripts images analysis is presented. In particular the bag-of-keypoints strategy, commonly adopted for object recognition, image classification and scene recognition, is applied to the classification of automatically extracted miniatures. Pictures are characterized by SURF descriptors, and a classification procedure is performed, comparing the results of Naive Bayes and histogram intersection distance measures.

2010 Relazione in Atti di Convegno

Decision Trees for Fast Thinning Algorithms

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

Published in: INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION

We propose a new efficient approach for neighborhood exploration, optimized with decision tables and decision trees, suitable for local algorithms … (Read full abstract)

We propose a new efficient approach for neighborhood exploration, optimized with decision tables and decision trees, suitable for local algorithms in image processing. In this work, it is employed to speed up two widely used thinning techniques. The performance gain is shown over a large freely available dataset of scanned document images.

2010 Relazione in Atti di Convegno

Event Driven Software Architecture for Multi-camera and Distributed Surveillance Research Systems

Authors: Vezzani, Roberto; Cucchiara, Rita

Surveillance of wide areas with several connected cameras integrated in the same automatic system is no more a chimera, but … (Read full abstract)

Surveillance of wide areas with several connected cameras integrated in the same automatic system is no more a chimera, but modular, scalable and flexible architectures are mandatory to manage them. This paper points out the main issues on the development of distributed surveillance systems and proposes an integrated framework particularly suitable for research purposes. As first, exploiting a computer architecture analogy, a three layer tracking system is proposed, which copes with the integration of both overlapping and non overlapping cameras. Then, a static service oriented architecture is adopted to collect and manage the plethora of high level modules, such as face detection and recognition, posture and action classification, and so on. Finally, the overall architecture is controlled by an event driven communication infrastructure, which assures the scalability and the flexibility of the system.

2010 Relazione in Atti di Convegno

Fast Background Initialization with Recursive Hadamard Transform

Authors: Baltieri, Davide; Vezzani, Roberto; Cucchiara, Rita

In this paper, we present a new and fast techniquefor background estimation from cluttered image sequences.Most of the background initialization … (Read full abstract)

In this paper, we present a new and fast techniquefor background estimation from cluttered image sequences.Most of the background initialization approaches developedso far collect a number of initial frames and then requirea slow estimation step which introduces a delay wheneverit is applied. Conversely, the proposed technique redistributesthe computational load among all the frames bymeans of a patch by patch preprocessing, which makesthe overall algorithm more suitable for real-time applications.For each patch location a prototype set is created andmaintained. The background is then iteratively estimatedby choosing from each set the most appropriate candidatepatch, which should verify a sort of frequency coherencewith its neighbors. To this aim, the Hadamard transformhas been adopted which requires less computation time thanthe commonly used DCT. Finally, a refinement step exploitsspatial continuity constraints along the patch borders toprevent erroneous patch selections. The approach has beencompared with the state of the art on videos from availabledatasets (ViSOR and CAVIAR), showing a speed up of about10 times and an improved accuracy

2010 Relazione in Atti di Convegno

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