Facebook Instagram Twitter RSS Feed PodBean Back to top on side

Background Subtraction Based on Perception-Contained Piecewise Memorizing Framework

In: Computing and Informatics, vol. 37, no. 4
S.b. Liu - X.d. Zhao - X.l. Tang

Details:

Year, pages: 2018, 865 - 893
Language: eng
Keywords:
Long-term background memory, piecewise stationary test, Gaussian mixture model, background subtraction, foreground detection
About article:
A key issue for full-time video surveillance is to search or establish a reference image of background which corresponds to current video frame. However, background that was ever in presence long time ago is enclosed or discarded due to background forgetting assumption. How to rapidly pick up or even rebuild long-term background needs to be discussed. This paper aims to present a framework for background maintenance in order to solve the problem. A piecewise memorizing framework is proposed for matching, updating and even rebuilding long-term background. Based on the metaphors of psychological selective attention theory, the framework is composed of a prior piecewise perception processor for intensity stationary test. Besides, a hierarchical memorizing mechanism constitutes the other part of the framework for overcoming the exponential forgetting of long period background appearances. Applied to Gaussian mixture model (GMM), this framework is capable of maintaining short-term background states, identifying long period background appearances, and rapidly adjusting to new background states according to different expressions derived from the prior perception of scene intensity changes. Its effectiveness can be demonstrated by experimental results for solving various typical problems.
How to cite:
ISO 690:
Liu, S., Zhao, X., Tang, X. 2018. Background Subtraction Based on Perception-Contained Piecewise Memorizing Framework. In Computing and Informatics, vol. 37, no.4, pp. 865-893. 1335-9150. DOI: https://doi.org/10.4149/cai_2018_4_865

APA:
Liu, S., Zhao, X., Tang, X. (2018). Background Subtraction Based on Perception-Contained Piecewise Memorizing Framework. Computing and Informatics, 37(4), 865-893. 1335-9150. DOI: https://doi.org/10.4149/cai_2018_4_865
About edition:
Publisher: Ústav informatiky SAV
Published: 7. 11. 2018