Do End-to-end Stereo Algorithms Under-utilize Information?
Deep networks for stereo matching typically leverage 2D or 3D convolutional encoder-decoder architectures to aggregate cost and regularize the cost volume for accurate disparity estimation. Due to content-insensitive convolutions and down-sampling and up-sampling operations, these cost aggregation m...
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Zusammenfassung: | Deep networks for stereo matching typically leverage 2D or 3D convolutional
encoder-decoder architectures to aggregate cost and regularize the cost volume
for accurate disparity estimation. Due to content-insensitive convolutions and
down-sampling and up-sampling operations, these cost aggregation mechanisms do
not take full advantage of the information available in the images. Disparity
maps suffer from over-smoothing near occlusion boundaries, and erroneous
predictions in thin structures. In this paper, we show how deep adaptive
filtering and differentiable semi-global aggregation can be integrated in
existing 2D and 3D convolutional networks for end-to-end stereo matching,
leading to improved accuracy. The improvements are due to utilizing RGB
information from the images as a signal to dynamically guide the matching
process, in addition to being the signal we attempt to match across the images.
We show extensive experimental results on the KITTI 2015 and Virtual KITTI 2
datasets comparing four stereo networks (DispNetC, GCNet, PSMNet and GANet)
after integrating four adaptive filters (segmentation-aware bilateral
filtering, dynamic filtering networks, pixel adaptive convolution and
semi-global aggregation) into their architectures. Our code is available at
https://github.com/ccj5351/DAFStereoNets. |
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DOI: | 10.48550/arxiv.2010.07350 |