这些地图是通过传播制作的:将深度立体网络适应具有决定性视差扩散的道路场景

Chuang-Wei Liu;Yikang Zhang;Qijun Chen;Ioannis Pitas;Rui Fan
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引用次数: 0

摘要

立体匹配已经成为路面三维重建的一种经济有效的解决方案,在提高计算效率和准确性方面受到了极大的关注。本文介绍了决定性视差扩散(D3Stereo),标志着密集深度特征匹配的首次探索,该匹配将预训练的深度卷积神经网络(DCNNs)适应先前未见过的道路场景。最初使用不同级别的学习表征创建成本体量的金字塔。随后,采用一种新的递归双边滤波算法对这些成本进行汇总。D3Stereo的一个关键创新在于其交替决定性视差扩散策略,该策略采用尺度内扩散来完成稀疏的视差图像,而尺度间继承则为更高的分辨率提供了有价值的先验信息。在我们创建的UDTIRI-Stereo和Stereo-Road数据集上进行的大量实验强调了D3Stereo策略在适应预训练DCNNs方面的有效性,以及与所有其他专门为路面3D重建设计的基于显式编程的算法相比,其优越的性能。在Middlebury数据集上进行的实验进一步验证了D3Stereo策略在解决一般立体匹配问题方面的通用性。我们的源代码和补充材料可以在https://mias.group/D3-Stereo上公开获得。
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These Maps Are Made by Propagation: Adapting Deep Stereo Networks to Road Scenarios With Decisive Disparity Diffusion
Stereo matching has emerged as a cost-effective solution for road surface 3D reconstruction, garnering significant attention towards improving both computational efficiency and accuracy. This article introduces decisive disparity diffusion (D3Stereo), marking the first exploration of dense deep feature matching that adapts pre-trained deep convolutional neural networks (DCNNs) to previously unseen road scenarios. A pyramid of cost volumes is initially created using various levels of learned representations. Subsequently, a novel recursive bilateral filtering algorithm is employed to aggregate these costs. A key innovation of D3Stereo lies in its alternating decisive disparity diffusion strategy, wherein intra-scale diffusion is employed to complete sparse disparity images, while inter-scale inheritance provides valuable prior information for higher resolutions. Extensive experiments conducted on our created UDTIRI-Stereo and Stereo-Road datasets underscore the effectiveness of D3Stereo strategy in adapting pre-trained DCNNs and its superior performance compared to all other explicit programming-based algorithms designed specifically for road surface 3D reconstruction. Additional experiments conducted on the Middlebury dataset with backbone DCNNs pre-trained on the ImageNet database further validate the versatility of D3Stereo strategy in tackling general stereo matching problems. Our source code and supplementary material are publicly available at https://mias.group/D3-Stereo.
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