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WxBS: Wide Baseline Stereo Generalizations

About

We have presented a new problem -- the wide multiple baseline stereo (WxBS) -- which considers matching of images that simultaneously differ in more than one image acquisition factor such as viewpoint, illumination, sensor type or where object appearance changes significantly, e.g. over time. A new dataset with the ground truth for evaluation of matching algorithms has been introduced and will be made public. We have extensively tested a large set of popular and recent detectors and descriptors and show than the combination of RootSIFT and HalfRootSIFT as descriptors with MSER and Hessian-Affine detectors works best for many different nuisance factors. We show that simple adaptive thresholding improves Hessian-Affine, DoG, MSER (and possibly other) detectors and allows to use them on infrared and low contrast images. A novel matching algorithm for addressing the WxBS problem has been introduced. We have shown experimentally that the WxBS-M matcher dominantes the state-of-the-art methods both on both the new and existing datasets.

Dmytro Mishkin, Jiri Matas, Michal Perdoch, Karel Lenc• 2015

Related benchmarks

TaskDatasetResultRank
Camera pose estimationTerrace (test)
Location Error (mm)1.30e+3
7
Camera pose estimationTerrace
RPE60.09
7
Camera pose estimationBasketball
RPE80.21
7
Camera pose estimationConstructSite (test)
Location Error (mm)7.80e+3
7
Camera pose estimationConstructSite
RPE1.84e+4
7
Camera pose estimationBasketball (test)
Location Error (mm)8.20e+4
7
Wide baseline stereoEVD 3 (test)
Matched Image Pairs3
4
Wide baseline stereoEF 46 (test)
Matched Image Pairs33
4
Wide baseline stereoOxAff 8 (test)
Matched Image Pairs Count40
4
Wide baseline stereoSymB 47 (test)
Matched Image Pairs35
4
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