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Journal ArticleDOI

Effective Gaussian mixture learning for video background subtraction

Dar-Shyang Lee
- 01 May 2005 - 
- Vol. 27, Iss: 5, pp 827-832
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TLDR
An effective scheme to improve the convergence rate without compromising model stability is proposed by replacing the global, static retention factor with an adaptive learning rate calculated for each Gaussian at every frame.
Abstract
Adaptive Gaussian mixtures have been used for modeling nonstationary temporal distributions of pixels in video surveillance applications. However, a common problem for this approach is balancing between model convergence speed and stability. This paper proposes an effective scheme to improve the convergence rate without compromising model stability. This is achieved by replacing the global, static retention factor with an adaptive learning rate calculated for each Gaussian at every frame. Significant improvements are shown on both synthetic and real video data. Incorporating this algorithm into a statistical framework for background subtraction leads to an improved segmentation performance compared to a standard method.

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Citations
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A survey of advances in vision-based human motion capture and analysis

TL;DR: This survey reviews recent trends in video-based human capture and analysis, as well as discussing open problems for future research to achieve automatic visual analysis of human movement.
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ViBe: A Universal Background Subtraction Algorithm for Video Sequences

TL;DR: Efficiency figures show that the proposed technique for motion detection outperforms recent and proven state-of-the-art methods in terms of both computation speed and detection rate.
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Efficient adaptive density estimation per image pixel for the task of background subtraction

TL;DR: This work presents recursive equations that are used to constantly update the parameters of a Gaussian mixture model and to simultaneously select the appropriate number of components for each pixel and presents a simple non-parametric adaptive density estimation method.
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SuBSENSE: A Universal Change Detection Method With Local Adaptive Sensitivity

TL;DR: This paper presents a universal pixel-level segmentation method that relies on spatiotemporal binary features as well as color information to detect changes, which allows camouflaged foreground objects to be detected more easily while most illumination variations are ignored.
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Background Modeling using Mixture of Gaussians for Foreground Detection - A Survey

TL;DR: The purpose of this paper is to provide a survey and an original classification of improvements of the original MOG, and to discuss relevant issues to reduce the computation time.
References
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Proceedings ArticleDOI

Adaptive background mixture models for real-time tracking

TL;DR: This paper discusses modeling each pixel as a mixture of Gaussians and using an on-line approximation to update the model, resulting in a stable, real-time outdoor tracker which reliably deals with lighting changes, repetitive motions from clutter, and long-term scene changes.
Book ChapterDOI

A view of the EM algorithm that justifies incremental, sparse, and other variants

TL;DR: In this paper, an incremental variant of the EM algorithm is proposed, in which the distribution for only one of the unobserved variables is recalculated in each E step, which is shown empirically to give faster convergence in a mixture estimation problem.
Proceedings ArticleDOI

Wallflower: principles and practice of background maintenance

TL;DR: This work develops Wallflower, a three-component system for background maintenance that is shown to outperform previous algorithms by handling a greater set of the difficult situations that can occur.
Book ChapterDOI

An Improved Adaptive Background Mixture Model for Real-time Tracking with Shadow Detection

TL;DR: This paper presents a method which improves this adaptive background mixture model by reinvestigating the update equations at different phases, which allows the system learn faster and more accurately as well as adapts effectively to changing environment.
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