全向图像的密集视差估计

Zafer Arican, P. Frossard
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引用次数: 33

摘要

本文解决了在球形框架中全向图像之间差的密集估计问题。全向成像对于3D场景中全视函数的表示和处理具有重要的优势,例如用于定位或深度估计。在这种情况下,我们建议直接在球面框架中执行视差估计,以避免由于全向图像在平面上的不精确投影而导致的差异。首先在球面域对全向图像进行校正。在此基础上,提出了一种基于图切算法的全局能量最小化算法,对球面进行视差估计。实验结果表明,无论对于简单的合成场景还是复杂的自然场景,该算法都优于基于块匹配的典型方法。该方法具有较好的密集视差估计性能,可以有效地推广到多个相机传感器组成的网络中。
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Dense disparity estimation from omnidirectional images
This paper addresses the problem of dense estimation of disparities between omnidirectional images, in a spherical framework. Omnidirectional imaging certainly represents important advantages for the representation and processing of the plenoptic function in 3D scenes for applications in localization, or depth estimation for example. In this context, we propose to perform disparity estimation directly in a spherical framework, in order to avoid discrepancies due to inexact projections of omnidirectional images onto planes. We first perform rectification of the omnidirectional images in the spherical domain. Then we develop a global energy minimization algorithm based on the graph-cut algorithm, in order to perform disparity estimation on the sphere. Experimental results show that the proposed algorithm outperforms typical methods as the ones based on block matching, for both a simple synthetic scene, and complex natural scenes. The proposed method shows promising performances for dense disparity estimation and can be extended efficiently to networks of several camera sensors.
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