Fast Approximate Matching of Videos from Hand-Held Cameras for Robust Background Subtraction

Applications of Computer Vision(2015)

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摘要
We identify a novel instance of the background subtraction problem that focuses on extracting near-field foreground objects captured using handheld cameras. Given two user-generated videos of a scene, one with and the other without the foreground object (s), our goal is to efficiently generate an output video with only the foreground object (s) present in it. We cast this challenge as a spatio-temporal frame matching problem, and propose an efficient solution for it that exploits the temporal smoothness of the video sequences. We present theoretical analyses for the error bounds of our approach, and validate our findings using a detailed set of simulation experiments. Finally, we present the results of our approach tested on multiple real videos captured using handheld cameras, and compare them to several alternate foreground extraction approaches.
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关键词
feature extraction,image matching,image sensors,image sequences,video signal processing,fast approximate video matching,foreground extraction approaches,hand-held cameras,near-field foreground object extraction,robust background subtraction,spatiotemporal frame matching problem,temporal video sequence smoothness,user-generated videos,approximation algorithms,computer vision,accuracy,robustness
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