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Computing the Stereo Matching Cost with a Convolutional Neural Network

About

We present a method for extracting depth information from a rectified image pair. We train a convolutional neural network to predict how well two image patches match and use it to compute the stereo matching cost. The cost is refined by cross-based cost aggregation and semiglobal matching, followed by a left-right consistency check to eliminate errors in the occluded regions. Our stereo method achieves an error rate of 2.61 % on the KITTI stereo dataset and is currently (August 2014) the top performing method on this dataset.

Jure \v{Z}bontar, Yann LeCun• 2014

Related benchmarks

TaskDatasetResultRank
Stereo MatchingKITTI 2015 (test)
D1 Error (Overall)3.89
144
Stereo MatchingKITTI 2012 (test)--
76
Stereo MatchingMiddlebury 2014 (test)
Bad Pixel Rate (Thresh 2.0)8.08
11
Stereo MatchingKITTI Stereo 2015 (test)
Error Rate (> 3px)6.34
6
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