Moving Object Tracking via 3-D Total Variation in Remote-Sensing Videos

IEEE GEOSCIENCE AND REMOTE SENSING LETTERS(2022)

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摘要
Tracking moving objects in remote-sensing videos is becoming increasingly important in remote-sensing analysis. This letter presents a novel object tracking method for remote-sensing videos. We start with using the traditional robust principal component analysis (RPCA) model to extract the moving object from the background. To describe the continuity of moving objects in spatial and temporal directions, we incorporate a 3-D total variation (3DTV) regularization into the RPCA model. Considering that the background is not static and the captured videos will contain noise because of the instability of the sensing camera, our proposed method introduces a certain part of the function to model the noise and capture the changes in background. Experimental results on real videos provided by 2016 IEEE GRSS Data Fusion Contest and 2020 Hyperspectral Object Tracking Challenge demonstrate the advantages of the moving object-tracking method via 3-D TV.
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关键词
Videos, TV, Object tracking, Hyperspectral imaging, Sun, Analytical models, Cameras, Object tracking, remote-sensing videos, robust principal component
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