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Proceedings ArticleDOI

Constant Time Weighted Median Filtering for Stereo Matching and Beyond

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TLDR
It is discovered that with this refinement, even the simple box filter aggregation achieves comparable accuracy with various sophisticated aggregation methods (with the same refinement), revealing that the previously overlooked refinement can be at least as crucial as aggregation.
Abstract
Despite the continuous advances in local stereo matching for years, most efforts are on developing robust cost computation and aggregation methods. Little attention has been seriously paid to the disparity refinement. In this work, we study weighted median filtering for disparity refinement. We discover that with this refinement, even the simple box filter aggregation achieves comparable accuracy with various sophisticated aggregation methods (with the same refinement). This is due to the nice weighted median filtering properties of removing outlier error while respecting edges/structures. This reveals that the previously overlooked refinement can be at least as crucial as aggregation. We also develop the first constant time algorithm for the previously time-consuming weighted median filter. This makes the simple combination ``box aggregation + weighted median'' an attractive solution in practice for both speed and accuracy. As a byproduct, the fast weighted median filtering unleashes its potential in other applications that were hampered by high complexities. We show its superiority in various applications such as depth up sampling, clip-art JPEG artifact removal, and image stylization.

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Citations
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Book ChapterDOI

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TL;DR: A new framework to filter images with the complete control of detail smoothing under a scale measure is proposed, based on a rolling guidance implemented in an iterative manner that converges quickly and achieves realtime performance and produces artifact-free results.
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TL;DR: This tutorial presents a hands-on view of the field of multi-view stereo with a focus on practical algorithms, describing in detail its main two ingredients: robust implementations of photometric consistency measures, and efficient optimization algorithms.
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Optical flow modeling and computation

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Book ChapterDOI

The Fast Bilateral Solver

TL;DR: A novel algorithm for edge-aware smoothing that combines the flexibility and speed of simple filtering approaches with the accuracy of domain-specific optimization algorithms, fast, robust, straightforward to generalize to new domains, and simple to integrate into deep learning pipelines.
References
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Proceedings ArticleDOI

Joint bilateral upsampling

TL;DR: It is demonstrated that in cases, such as those above, the available high resolution input image may be leveraged as a prior in the context of a joint bilateral upsampling procedure to produce a better high resolution solution.
Proceedings ArticleDOI

Evaluation of Cost Functions for Stereo Matching

TL;DR: This paper evaluates the insensitivity of different matching costs with respect to radiometric variations of the input images with a local, a semi-global, and a global stereo method.
Proceedings ArticleDOI

Image smoothing via L0 gradient minimization

TL;DR: This work presents a new image editing method, particularly effective for sharpening major edges by increasing the steepness of transition while eliminating a manageable degree of low-amplitude structures in an optimization framework making use of L0 gradient minimization.
Proceedings ArticleDOI

Fast cost-volume filtering for visual correspondence and beyond

TL;DR: This paper proposes a generic and simple framework comprising three steps: constructing a cost volume, fast cost volume filtering and winner-take-all label selection, and achieves state-of-the-art results that achieve disparity maps in real-time, and optical flow fields with very fine structures as well as large displacements.
Proceedings ArticleDOI

Learning Conditional Random Fields for Stereo

TL;DR: This paper has constructed a large number of stereo datasets with ground-truth disparities, and a subset of these datasets are used to learn the parameters of conditional random fields (CRFs) and presents experimental results illustrating the potential of this approach for automatically learning the Parameters of models with richer structure than standard hand-tuned MRF models.
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