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ACM Multimedia 2008 Feng Liu 1, Yuhen-Hu 1,2 and Michael Gleicher 1
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Introduction Video analysis Discovering panoramas Panorama synthesis Experiments Conclusion
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STEP 1 image alignment STEP2 image stitching
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Not all video has appropriate sources ◦ Not cover a wide field-of-view of a scene ◦ Motion may be randomly ◦ Image quality
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Three parts ◦ video analysis ◦ panorama source selection ◦ panorama synthesis
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transformation
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Feature matching – SIFT Compute homography parameters – RANSAC algo ◦ Run k times: (1)draw n samples randomly (2) fit parameters Θ with these n samples (3) for each of other N-n points, calculate its distance to the fitted model, count the number of inlier points, c ◦ Output Θ with the largest c
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n=2 c=3c=15 …………………
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Image homography ◦ Points should match ◦ Measure error distance and give penalty Moving object detect ◦ For activity synopsis ◦ examining the discrepancy between its local motion vector and the global motion
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Visual quality measures Method of [31]Tong et al 04 Method of [35]Wang et al 02 Average differences across block boundaries. Average differences across block boundaries.
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Good panoramas ◦ Good homography between frames ◦ Video have high image quality ◦ Cover a wild field view Collision ◦ More frame more wild field of view ◦ More frame more accumulate error to degrade quality, vistual quality, extent of the scene
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Visual quality measure
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Scene extent measure Reference
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An Approximate Solution Steps ◦ 1.Fetch a segment Sk from pool Sp ◦ 2.Find the scene extent of Sk and corresponding reference frame. ◦ 3.Append the panorama set according to equation(2). until. ◦ 4.If the scene meet,, add remainder to pool Sp. ◦ 5.If pool Sp != Ο, go to loop 1
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shot boundary segments video divide segments that have too penalty Repeat until done Discard those extent with too little coverage <
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Scene panorama synthesis ◦ blending – feathering ◦ median-bilateral filtering
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Activity synopsis synthesis Detect Discard Select and composite into scene
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YouTube Travel and Events category – West Lake http://www.youtube.com/watch?v=6FKCHLfTns8&feature=player_embedded#! http://www.youtube.com/watch?v=6FKCHLfTns8&feature=player_embedded#! ◦ size 320 x 240
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Query panorama from YouTube 6 query, top 10 videos 86.7% contain panoramas
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Notre Dame, Paris
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In this paper, we presented an automatic method to discover panorama sources from casual videos. “Query panoramas from YouTube”supports our proposal of using web videos as panorama source. More importantly, this method contribute to presenting or summarizing imagery databases using panoramic imageries by mining the possible sources to synthesize the representations.
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[31] H. Tong, M. Li, H. Zhang, and C. Zhang. Blur detection for digital images using wavelet transform.In IEEE ICME, 2004. [35] Z. Wang, G. Wu, H. Sheikh, E. Simoncelli, E.-H.Yang, and A. Bovik. Quality- aware images. IEEE Transactions on Image Processing, 15(6):1680 -1689,2006. Original Videos: http://pages.cs.wisc.edu/~fliu/project/discover-pano.htm
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