Title :
Stopped Object Detection by Learning Foreground Model in Videos
Author :
Maddalena, L. ; Petrosino, Alfredo
Author_Institution :
Inst. for High-Performance Comput. & Networking, Naples, Italy
Abstract :
The automatic detection of objects that are abandoned or removed in a video scene is an interesting area of computer vision, with key applications in video surveillance. Forgotten or stolen luggage in train and airport stations and irregularly parked vehicles are examples that concern significant issues, such as the fight against terrorism and crime, and public safety. Both issues involve the basic task of detecting static regions in the scene. We address this problem by introducing a model-based framework to segment static foreground objects against moving foreground objects in single view sequences taken from stationary cameras. An image sequence model, obtained by learning in a self-organizing neural network image sequence variations, seen as trajectories of pixels in time, is adopted within the model-based framework. Experimental results on real video sequences and comparisons with existing approaches show the accuracy of the proposed stopped object detection approach.
Keywords :
computer vision; image sequences; learning (artificial intelligence); neural nets; object detection; safety; video signal processing; video surveillance; airport stations; automatic detection; computer vision; forgotten luggage; image sequence model; irregularly parked vehicles; learning foreground model; public safety; self-organizing neural network; stolen luggage; stopped object detection; train stations; video scene; video surveillance; Adaptation models; Computational modeling; Image color analysis; Image sequences; Object detection; Robustness; Videos; Artificial neural network; image sequence modeling; stopped foreground detection; video surveillance;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2242092