端到端立体算法没有充分利用信息吗?

Changjiang Cai, Philippos Mordohai
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引用次数: 3

摘要

用于立体匹配的深度网络通常利用2D或3D卷积编码器-解码器架构来聚合成本并规范成本量,以实现准确的视差估计。由于内容不敏感的卷积和下采样和上采样操作,这些成本聚合机制不能充分利用图像中可用的信息。视差图在遮挡边界附近受到过度平滑的影响,并且在薄结构中有错误的预测。在本文中,我们展示了如何将深度自适应滤波和可微半全局聚合集成到现有的2D和3D卷积网络中进行端到端立体匹配,从而提高了精度。这些改进是由于利用图像中的RGB信息作为动态指导匹配过程的信号,除了作为我们尝试跨图像匹配的信号之外。我们在KITTI 2015和Virtual KITTI 2数据集上展示了在将四种自适应滤波器(分割感知双边滤波、动态滤波网络、像素自适应卷积和半全局聚合)集成到其架构中后,比较四种立体网络(disnetc、GCNet、PSMNet和GANet)的广泛实验结果。我们的代码可在https://github.com/ccj5351/DAFStereoNets上获得。
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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 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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