Publication | Closed Access
A Taxonomy and Evaluation of Dense Light Field Depth Estimation Algorithms
94
Citations
23
References
2017
Year
Unknown Venue
Light Field ImagingDepth Estimation ChallengeImage AnalysisMachine VisionOphthalmologyEngineeringDense Light FieldsComputer Stereo VisionCvpr 2017Computational ImagingComputational IlluminationDepth MapComputational PhotographyPhotometric StereoComputational GeometryStereoscopic ProcessingComputer Vision
This paper presents the results of the depth estimation challenge for dense light fields, which took place at the second workshop on Light Fields for Computer Vision (LF4CV) in conjunction with CVPR 2017. The challenge consisted of submission to a recent benchmark [7], which allows a thorough performance analysis. While individual results are readily available on the benchmark web page http://www.lightfield-analysis.net, we take this opportunity to give a detailed overview of the current participants. Based on the algorithms submitted to our challenge, we develop a taxonomy of light field disparity estimation algorithms and give a report on the current state-ofthe- art. In addition, we include more comparative metrics, and discuss the relative strengths and weaknesses of the algorithms. Thus, we obtain a snapshot of where light field algorithm development stands at the moment and identify aspects with potential for further improvement.
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