Video super-resolution based on local invariant features matching

Image Processing(2012)

引用 9|浏览18
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摘要
This paper presents an algorithm for video super-resolution based on scale-invariant feature transform (SIFT) matching. SIFT features are known to be a robust method for locating keypoints. The matching of these keypoints from different frames in a video allows us to infer high-frequency information in order to perform example-based super-resolution. We first apply a block constrained keypoint detection for a more precise superposition of features. Later, we extract high-frequency information with a gradient-based matching scheme. Our results indicate gains over interpolation and previous example-based super-resolution approaches.
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关键词
feature extraction,image matching,image resolution,transforms,video signal processing,SIFT matching,block constrained keypoint detection,example-based super-resolution,gradient-based matching scheme,high-frequency information extraction,high-frequency information inference,local invariant features matching,scale-invariant feature transform,video super-resolution,Example-based super-resolution,Local invariant features,Mixed-resolution video,SIFT
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