4.5 Article

Efficient local stereo matching algorithm based on fast gradient domain guided image filtering

期刊

出版社

ELSEVIER
DOI: 10.1016/j.image.2021.116280

关键词

Stereo matching; Cost aggregation; Disparity refinement; Guided image filtering

资金

  1. National Natural Science Founda-tion of China [61873010, 91748201]
  2. National Key Re-search and Development Program of China [2019YFB1311703]
  3. Tianjin Key Research and Development Project [19YFSLQY00050]

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F-GDGIF effectively alleviates halo artifacts by incorporating efficient multi-scale edge-aware weighting and reduces computational costs by sub-sampling strategy, resulting in more accurate disparity maps with lower computational cost in stereo matching.
Guided image filtering (GIF) based cost aggregation or disparity refinement stereo matching algorithms are studied extensively owing to the edge-aware preserved smoothing property. However, GIF suffers from halo artifacts in sharp edges and shows high computational costs on high-resolution images. The performance of GIF in stereo matching would be limited by the above two defects. To solve these problems, a novel fast gradient domain guided image filtering (F-GDGIF) is proposed. To be specific, halo artifacts are effectively alleviated by incorporating an efficient multi-scale edge-aware weighting into GIF. With this multi-scale weighting, edges can be preserved much better. In addition, high computational costs are cut down by sub-sampling strategy, which decreases the computational complexity from O(N) to O(N/s(2)) (s: sub-sampling ratio) To verify the effectiveness of the algorithm, F-GDGIF is applied to cost aggregation and disparity refinement in stereo matching algorithms respectively. Experiments on the Middlebury evaluation benchmark demonstrate that F-GDGIF based stereo matching method can generate more accuracy disparity maps with low computational cost compared to other GIF based methods.

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