Background modeling and foreground detection for PTZ cameras.Grid strategy for spatio-temporal tracking of keypoints.Background initialization and estimation.Background updating and reconstruction.Panoramic background reconstruction. Display Omitted The automatic scene analysis is still a topic of great interest in computer vision due to the growing possibilities provided by the increasingly sophisticated optical cameras. The background modeling, including its initialization and its updating, is a crucial aspect that can play a main role in a wide range of application domains, such as vehicle tracking, person re-identification and object recognition. In any case, many challenges still remain partially unsolved, including camera movements (i.e., pan/tilt), scale changes (i.e., zoom-in/zoom-out) and deletion of the initial foreground elements from the background model. This paper describes a method for background modeling and foreground detection able to address all the mentioned challenges. In particular, the proposed method uses a spatio-temporal tracking of sets of keypoints to distinguish the background from the foreground. It analyses these sets by a grid strategy to estimate both camera movements and scale changes. The same sets are also used to construct a panoramic background model and to delete the possible initial foreground elements from it. Experiments carried out on some challenging videos from three different datasets (i.e., PBI, VOT and Airport MotionSeg) demonstrate the effectiveness of the method on PTZ cameras. Other videos from a further dataset (i.e., FBMS) have been used to measure the accuracy of the proposed method with respect to some key works of the current state-of-the-art. Finally, some videos from another dataset (i.e., SBI) have been used to test the method on stationary cameras.
A keypoint-based method for background modeling and foreground detection using a PTZ camera
D. Avola,L. Cinque,G. Foresti,Cristiano Massaroni,D. Pannone
Published 2017 in Pattern Recognition Letters
ABSTRACT
PUBLICATION RECORD
- Publication year
2017
- Venue
Pattern Recognition Letters
- Publication date
2017-09-01
- Fields of study
Computer Science, Engineering
- Identifiers
- External record
- Source metadata
Semantic Scholar
CITATION MAP
EXTRACTION MAP
CLAIMS
CONCEPTS
- foreground detection
The task of identifying moving or non-background regions in a video frame.
Aliases: foreground/background separation
- grid strategy
A spatial partitioning scheme that analyzes keypoint sets cell by cell to infer scene changes.
Aliases: grid-based strategy
- initial foreground elements
Objects present at the start of the video that are meant to be excluded from the learned background model.
Aliases: initial foreground, foreground elements
- keypoint-based method for background modeling and foreground detection
A background-modeling and foreground-detection approach that relies on tracking sets of keypoints over time.
Aliases: keypoint-based method, background modeling and foreground detection method
- panoramic background model
A wide-field background representation assembled from tracked scene observations across camera motion.
Aliases: panoramic background reconstruction
- ptz camera
A camera that can pan, tilt, and zoom while observing a scene.
Aliases: pan-tilt-zoom camera, PTZ cameras
- spatio-temporal tracking of keypoints
Tracking keypoint sets across both space and time to characterize scene content and motion.
Aliases: spatio-temporal tracking of sets of keypoints, keypoint tracking
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