多层次上下文超聚合立体匹配

Guangyu Nie, Ming-Ming Cheng, Yun Liu, Zhengfa Liang, Deng-Ping Fan, Yue Liu, Yongtian Wang
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引用次数: 92

摘要

利用多层次的上下文信息来计算体积可以提高基于学习的立体匹配方法的性能。近年来,3-D卷积神经网络(3-D cnn)在正则化代价体积方面表现出优势,但在匹配代价计算方面受到一元特征学习的限制。然而,现有方法仅使用普通卷积层的特征或多层特征的简单聚合来计算代价体积,这是不够的,因为立体匹配需要判别性特征来识别校正后的立体图像对中的相应像素。本文提出了一种基于多级上下文超聚合(multi-level context ultra-aggregation, MCUA)的一元特征描述符,该描述符通过层内和层间特征组合将所有卷积特征封装为更具判别性的表示。具体来说,将低分辨率图像作为输入的子模块可以捕获更大的上下文信息;来自每一层的更大的上下文信息被密集地连接到网络的主干。MCUA很好地利用了上下文更丰富的多层次特征,实现了图像到图像的整体预测。介绍了一种成本体积计算的单片机方案,并在PSM-Net上进行了测试。我们还在场景流和KITTI 2012/2015立体数据集上评估了我们的方法。实验结果表明,该方法明显优于现有方法,有效地提高了立体匹配的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Level Context Ultra-Aggregation for Stereo Matching
Exploiting multi-level context information to cost volume can improve the performance of learning-based stereo matching methods. In recent years, 3-D Convolution Neural Networks (3-D CNNs) show the advantages in regularizing cost volume but are limited by unary features learning in matching cost computation. However, existing methods only use features from plain convolution layers or a simple aggregation of multi-level features to calculate cost volume, which is insufficient because stereo matching requires discriminative features to identify corresponding pixels in rectified stereo image pairs. In this paper, we propose a unary features descriptor using multi-level context ultra-aggregation (MCUA), which encapsulates all convolutional features into a more discriminative representation by intra- and inter-level features combination. Specifically, a child module that takes low-resolution images as input captures larger context information; the larger context information from each layer is densely connected to the main branch of the network. MCUA makes good usage of multi-level features with richer context and performs the image-to-image prediction holistically. We introduce our MCUA scheme for cost volume calculation and test it on PSM-Net. We also evaluate our method on Scene Flow and KITTI 2012/2015 stereo datasets. Experimental results show that our method outperforms state-of-the-art methods by a notable margin and effectively improves the accuracy of stereo matching.
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