Background subtraction - separating the modeling and the inference
Manjunath Narayana, Allen Hanson, Erik Learned-Miller

TL;DR
This paper proposes a Bayesian framework for background subtraction in video, utilizing spatially informed likelihoods and priors to improve pixel classification accuracy over traditional pixelwise models.
Contribution
It introduces a Bayesian approach with spatially dependent likelihoods and priors, addressing limitations of previous models by incorporating neighborhood information.
Findings
Enhanced modeling of pixel influence through neighborhood observations
Overcomes deficiencies of joint domain-range models
Improved background and foreground classification accuracy
Abstract
In its early implementations, background modeling was a process of building a model for the background of a video with a stationary camera, and identifying pixels that did not conform well to this model. The pixels that were not well-described by the background model were assumed to be moving objects. Many systems today maintain models for the foreground as well as the background, and these models compete to explain the pixels in a video. In this paper, we argue that the logical endpoint of this evolution is to simply use Bayes' rule to classify pixels. In particular, it is essential to have a background likelihood, a foreground likelihood, and a prior at each pixel. A simple application of Bayes' rule then gives a posterior probability over the label. The only remaining question is the quality of the component models: the background likelihood, the foreground likelihood, and the prior.…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Vision and Imaging · Human Pose and Action Recognition
