User-centred Depth Estimation Benchmarking for VR Content Creation from Single Images

Anthony Dickson, Alistair Knott, S. Zollmann
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Abstract

The capture and creation of 3D content from a device equipped with just a single RGB camera has a wide range of applications ranging from 3D photographs and panoramas to 3D video. Many of these methods rely on depth estimation models to provide the necessary 3D data, mainly neural network models. However, the metrics used to evaluate these models can be difficult to interpret and to relate to the quality of 3D/VR content derived from these models. In this work, we explore the relationship between the widely used depth estimation metrics, image similarly metrics applied to synthesised novel viewpoints, and user perception of quality and similarity on these novel viewpoints. Our results indicate that the standard metrics are indeed a good indicator of 3D quality, and that they correlate with human judgements and other metrics that are designed to follow human judgements.
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基于单个图像的VR内容创作的以用户为中心的深度估计基准
从仅配备一个RGB相机的设备捕获和创建3D内容具有广泛的应用范围,从3D照片和全景到3D视频。这些方法大多依赖于深度估计模型来提供必要的三维数据,主要是神经网络模型。然而,用于评估这些模型的指标很难解释,也很难与这些模型衍生的3D/VR内容的质量联系起来。在这项工作中,我们探讨了广泛使用的深度估计度量,应用于合成新视点的图像相似度量,以及用户对这些新视点的质量和相似性的感知之间的关系。我们的研究结果表明,标准指标确实是3D质量的一个很好的指标,它们与人类的判断和其他旨在遵循人类判断的指标相关。
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