Bars Removal by Multiview Images Team: YiChang Shih Hsin-Jung Yang Date: 05/11/2011 -- 6.865 Final Project 1.

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Presentation transcript:

Bars Removal by Multiview Images Team: YiChang Shih Hsin-Jung Yang Date: 05/11/ Final Project 1

Removing Bars from Multiview 2 Bars are annoying You can’t put your hand in the bars Remove bars from multiview images Bars

A Toy Example 3 view1view2 view3

Algorithm Overview 4 Bar Segmentation Bar Segmentation Image Alignment SIFT Feature Matching Feature Selection Warping Patch Matching Reference Image Aligned Images Bar Mask

Patch Matching 5 source image patch Min SSD Selection replace pixel Aligned images Reference Image

Result ( use 4 views) 6 Reference Image Our ResultGround Truth

Result 2 ( Use 3 views) 7 Reference Image Our ResultGround Truth

Non-static scene view1view2 Result