Multi-view photometric stereo (MVPS) is a preferred method for detailed and precise 3D acquisition of an object from images. Although popular methods for MVPS can provide outstanding results, they are often complex to execute and limited to isotropic material objects. To address such limitations, we present a simple, practical approach to MVPS, which works well for isotropic as well as other object material types such as anisotropic and glossy. The proposed approach in this paper exploits the benefit of uncertainty modeling in a deep neural network for a reliable fusion of photometric stereo (PS) and multi-view stereo (MVS) network predictions. Yet, contrary to the recently proposed state-of-the-art, we introduce neural volume rendering methodology for a trustworthy fusion of MVS and PS measurements. The advantage of introducing neural volume rendering is that it helps in the reliable modeling of objects with diverse material types, where existing MVS methods, PS methods, or both may fail. Furthermore, it allows us to work on neural 3D shape representation, which has recently shown outstanding results for many geometric processing tasks. Our suggested new loss function aims to fits the zero level set of the implicit neural function using the most certain MVS and PS network predictions coupled with weighted neural volume rendering cost. The proposed approach shows state-of-the-art results when tested extensively on several benchmark datasets.
翻译:多视光度测光立体(MVPS)是详细、精确地从图像中获取一个物体的3D详细、精确的首选方法。虽然MVPS的流行方法可以提供突出的结果,但它们往往比较复杂,难以执行,而且仅限于非热带物质物体。为解决这些局限性,我们提出了一种简单、实用的MVPS方法,该方法对异形和其他物质类型,如异形和光相和光光光相色体类和其他物体(如光相色相色相色谱和多视立体(MVS),效果良好。本文建议的方法利用不确定性的模型,对现有的MVS方法、PS系统方法或两种方法都可能失败。此外,它允许我们在神经3D形状上进行可靠的整合,这与最近提出的“最新最新最新最新最新最新状态”的神经量量设定方法相反,我们引入了可信赖的MVS和PS测量测量量测量的神经量的神经量方法。我们建议对各种材料种类的物体进行可靠的建模模型,同时将一些新的测测测测算结果,我们最近还用一些低的轨道测测测测测测的轨道的轨道功能。