Saliency detection with moving camera via background model completion
Yupei Zhang, Kwok-Leung Chan

TL;DR
This paper introduces a novel saliency detection framework for videos captured by moving cameras, utilizing background model completion and deep learning segmentation to improve accuracy in complex scenes.
Contribution
It is the first to apply video completion for background modeling and saliency detection in moving camera videos, enhancing robustness and accuracy.
Findings
Outperforms deep learning background subtraction models by over 11%.
Achieves more than 3% improvement over high-ranking background subtraction methods on challenging videos.
Effectively handles dynamic backgrounds and camouflage scenarios.
Abstract
To detect saliency in video is a fundamental step in many computer vision systems. Saliency is the significant target(s) in the video. The object of interest is further analyzed for high-level applications. The segregation of saliency and the background can be made if they exhibit different visual cues. Therefore, saliency detection is often formulated as background subtraction. However, saliency detection is challenging. For instance, dynamic background can result in false positive errors. In another scenario, camouflage will lead to false negative errors. With moving camera, the captured scenes are even more complicated to handle. We propose a new framework, called saliency detection via background model completion (SD-BMC), that comprises of a background modeler and the deep learning background/foreground segmentation network. The background modeler generates an initial clean…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Advanced Image and Video Retrieval Techniques · Image Enhancement Techniques
