Background modeling and subtraction to detect new or moving objects in a scene is an important component of many intelligent video applications. Compared to a single camera, the use of multiple cameras leads to better handling of shadows, specularities and illumination changes due to the utilization of geometric information. Although the result of stereo matching can be used as the feature for detection, it has been shown that the detection process can be made much faster by a simple subtraction of the intensities observed at stereo-generated conjugate pairs in the two views. The methodology however, suffers from false and missed detections due to some geometric considerations. In this paper, we perform a detailed analysis of such errors. Then, we propose a sensor configuration that eliminates false detections. Algorithms are also proposed that effectively eliminate most detection errors due to missed detections, specular reflections and objects being geometrically close to the background. Experiments on several scenes illustrate the utility and enhanced performance of the proposed approach compared to existing techniques.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Fast illumination-invariant background subtraction using two views: error analysis, sensor placement and applications


    Contributors:
    Ser-Nam Lim, (author) / Mittal, A. (author) / Davis, L.S. (author) / Paragios, N. (author)


    Publication date :

    2005-01-01


    Size :

    541011 byte





    Type of media :

    Conference paper


    Type of material :

    Electronic Resource


    Language :

    English



    Fast Lighting Independent Background Subtraction

    Ivanov, Y. / Bobick, A. / Liu, J. | British Library Online Contents | 2000


    Illumination Invariant Background Extraction

    Durucan, E. / Snoeckx, J. / Weilenmann, Y. et al. | British Library Conference Proceedings | 1999


    Real-time robust background subtraction under rapidly changing illumination conditions

    Vosters, L. / Shan, C. / Gritti, T. | British Library Online Contents | 2012


    Fast Background Subtraction Using Improved GMM and Graph Cut

    Tang, Zhen / Miao, Zhenjiang | IEEE | 2008


    Background Subtraction Using Markov Thresholds

    Migdal, Joshua / Grimson, W. Eric L. | IEEE | 2005