We introduce a novel architecture for neural disparity refinement aimed at facilitating deployment of 3D computer vision on cheap and widespread consumer devices, such as mobile phones. Our approach relies on a continuous formulation that enables to estimate a refined disparity map at any arbitrary output resolution. Thereby, it can handle effectively the unbalanced camera setup typical of nowadays mobile phones, which feature both high and low resolution RGB sensors within the same device. Moreover, our neural network can process seamlessly the output of a variety of stereo methods and, by refining the disparity maps computed by a traditional matching algorithm like SGM, it can achieve unpaired zero-shot generalization performance compared to state-of-the-art end-to-end stereo models.
翻译:我们引入了一个新的神经差异改善结构,目的是便利在廉价和广泛的消费设备(如移动电话)上部署3D计算机视线,我们的方法依赖于一种连续的配方,这种配方能够对任何任意输出分辨率的精确差异图进行估计。因此,它能够有效地处理当今移动电话典型的不平衡摄像装置,在同一装置中,这种装置具有高分辨率和低分辨率的RGB传感器。此外,我们的神经网络可以无缝处理各种立体方法的输出,并且通过完善由像SGM这样的传统匹配算法计算的差异图,它能够实现与最先进的端到端立体模型相比的无孔化通用性功能。