Publications by Roberto Vezzani

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A Hough transform-based method for radial lens distortion correction

Authors: Cucchiara, Rita; Grana, Costantino; A., Prati; Vezzani, Roberto

The paper presents an approach for a robust (semi-)automatic correction of radial lens distortion in images and videos. This method, … (Read full abstract)

The paper presents an approach for a robust (semi-)automatic correction of radial lens distortion in images and videos. This method, based on the Hough transform, has the characteristics to be applicable also on videos from unknown cameras that, consequently, can not be a priori calibrated. We approximated the lens distortion by considering only the lower-order term of the radial distortion. Thus, the method relies on the assumption that pure radial distortion transforms straight lines into curves. The computation of the best value of the distortion parameter is performed in a multi-resolution way. The method precision depends on the scale of the multi-resolution and on the Hough space's resolution. Experiments are provided for both outdoor, uncalibrated camera and an indoor, calibrated one. The stability of the value found in different frames of the same video demonstrates the reliability of the proposed method.

2003 Relazione in Atti di Convegno

Computer Vision Techniques for PDA Accessibility of In-House Video Surveillance

Authors: Cucchiara, Rita; Grana, Costantino; A., Prati; Vezzani, Roberto

In this paper we propose an approach to indoor environment surveillance and, in particular, to people behaviour control in home … (Read full abstract)

In this paper we propose an approach to indoor environment surveillance and, in particular, to people behaviour control in home automation context. The reference application is a silent and automatic control of the behaviour of people living alone in the house and specially conceived for people with limited autonomy (e.g., elders or disabled people). The aim is to detect dangerous events (such as a person falling down) and to react to these events by establishing a remote connection with low-performance clients, such as PDA (Personal Digital Assistant). To this aim, we propose an integrated server architecture, typically connected in intranet with network cameras, able to segment and track objects of interest; in the case of objects classified as people, the system must also evaluate the people posture and infer possible dangerous situations. Finally, the system is equipped with a specifically designed transcoding server to adapt the video content to PDA requirements (display area and bandwidth) and to the user's requests. The main issues of the proposal are a reliable real-time object detector and tracking module, a simple but effective posture classifier improved by a supervised learning phase, and an high performance transcoding inspired on MPEG-4 object-level standard, tailored to PDA. Results on different video sequences and performance analysis are discussed.

2003 Relazione in Atti di Convegno

Domotics for disability: smart surveillance and smart video server

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

In this paper we address the problem of human posture classification, in particular focusing to an indoor surveillance application. The … (Read full abstract)

In this paper we address the problem of human posture classification, in particular focusing to an indoor surveillance application. The approach was initially inspired to a previous works of Haritaoglou et al. [6] that uses histogram projections to classify people’s posture. Projection histograms are here exploited as the main feature for the posture classification, but, differently from [6], we propose a supervised statistical learning phase to create probability maps adopted as posture templates. Moreover, camera calibration and homography is included to resolve prospective problems and improve the precision of classification. Furthermore, we make use of a finite state machineto detect dangerous situations as falls and to activate a suitable alarm generator. The system works on line on standard workstation with network cameras.

2003 Relazione in Atti di Convegno

Object Segmentation in Videos from Moving Camera with MRFs on Color and Motion Features

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

Published in: PROCEEDINGS - IEEE COMPUTER SOCIETY CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION

In this paper we address the problem of fast segmenting moving objects in video acquired by moving camera or more … (Read full abstract)

In this paper we address the problem of fast segmenting moving objects in video acquired by moving camera or more generally with a moving background. We present an approach based on a color segmentation followed by a region-merging on motion through Markov Random Fields (MRFs). The technique we propose is inspired to a work of Gelgon and Bouthemy [6], that has been modified to reduce computational cost in order to achieve a fast segmentation (about ten frame per second). To this aim a modified region matching algorithm (namely Partitioned Region Matching) and an innovative arc-based MRF optimization algorithmwith a suitable definition of the motion reliability are proposed. Results on both synthetic and real sequences are reported to confirm validity of our solution.

2003 Relazione in Atti di Convegno

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