K-nearest neighborhood based integration of time-of-flight cameras and passive stereo for high-accuracy depth maps

Liwen Liu, Y. Li, Ming Zhang, Lianghao Wang, Dongxiao Li
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引用次数: 1

Abstract

Both time-of-flight (ToF) cameras and passive stereo can provide the depth information for their corresponding captured real scenes, but they have innate limitations. ToF cameras and passive stereo are intrinsically complementary for certain tasks. It is desirable to appropriately leverage all the available information by ToF cameras and passive stereo. Although some fusion methods have been presented recently, they fail to consider ToF reliability detection and ToF based improvement of passive stereo. As a result, this study proposes an approach to integrating ToF cameras and passive stereo to obtain high-accuracy depth maps. The main contributions are: (1) An energy cost function is devised to use data from ToF cameras to boost the stereo matching of passive stereo; (2) A fusion method is used to combine the depth information from both ToF cameras and passive stereo to obtain high-accuracy depth maps. Experiments show that the proposed approach achieves improved results with high accuracy and robustness.
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基于k近邻的飞行时间相机和被动立体的高精度深度地图集成
ToF (time-of-flight, ToF)相机和被动式立体摄像机都可以为它们所捕捉的真实场景提供深度信息,但它们都有先天的局限性。ToF相机和无源立体在某些任务中具有内在的互补性。适当地利用ToF相机和被动立体声的所有可用信息是可取的。虽然近年来提出了一些融合方法,但它们都没有考虑ToF可靠性检测和基于ToF的被动立体改进。因此,本研究提出了一种将ToF相机与被动立体相结合以获得高精度深度图的方法。主要贡献有:(1)设计了能量代价函数,利用ToF相机数据增强被动立体匹配;(2)采用融合方法,将ToF相机和被动立体的深度信息结合起来,得到高精度的深度图。实验结果表明,该方法具有较高的精度和鲁棒性。
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