基于双四元数损失的360°图像深度估计

Brandon Yushan Feng, Wangjue Yao, Zhe-Yu Liu, A. Varshney
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引用次数: 11

摘要

虽然由于全景内容的普及,360°图像变得无处不在,但它们不能直接与大多数现有的透视图像深度估计技术一起工作。在本文中,我们提出了一种基于深度学习的框架,用于从360°图像中估计深度。我们提出了一种自适应深度改进程序,该程序使用正态估计和像素不确定性分数来改进深度估计。我们引入双四元数近似来结合深度和表面法线联合估计的损失。此外,我们还使用双四元数公式来测量水平位移深度图之间的立体一致性,从而产生用于训练深度估计CNN的新损失函数。结果表明,新的基于双四元数的损失和自适应深度改进方法可以提高网络性能。该方法既适用于单眼图像,也适用于立体图像。当在几个数据集上进行评估时,我们的方法在大多数指标上超过了最先进的方法。
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Deep Depth Estimation on 360° Images with a Double Quaternion Loss
While 360° images are becoming ubiquitous due to popularity of panoramic content, they cannot directly work with most of the existing depth estimation techniques developed for perspective images. In this paper, we present a deep-learning-based framework of estimating depth from 360° images. We present an adaptive depth refinement procedure that refines depth estimates using normal estimates and pixel-wise uncertainty scores. We introduce double quaternion approximation to combine the loss of the joint estimation of depth and surface normal. Furthermore, we use the double quaternion formulation to also measure stereo consistency between the horizontally displaced depth maps, leading to a new loss function for training a depth estimation CNN. Results show that the new double-quaternion-based loss and the adaptive depth refinement procedure lead to better network performance. Our proposed method can be used with monocular as well as stereo images. When evaluated on several datasets, our method surpasses state-of-the-art methods on most metrics.
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