Projection mapping based on BRDF reconstruction from single RGBD image

Linling Xun, Shuangjiu Xiao, Chenyu Bian, Jiheng Jiang
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引用次数: 0

Abstract

There have been many researches on projection mapping focused on target objects tracking, geometric shape recovering or virtual materials simulating such as clothes. However, few people pay attention to the material of target object which actually influences the visual results of projection. We present a new projection mapping framework based on BRDF reconstruction for the goal of more real projection results by enhancing the effects of Augmented Reality. In the framework, 3D computer vision method is used to reconstruct the BRDF of target object with a single RGBD image. A new algorithm is proposed using two Convolutional Neural Networks(CNN) which can predict both normal map and reflectance map of the target surface simultaneously with the RGBD image. The predicted maps are used to render the content to be projected onto the target object. Our BRDF reconstruction algorithm can recover several materials in one scene correctly in use of just one image. Experimental results show our framework has impressive performance and relatively accurate consequence.
基于单幅RGBD图像BRDF重构的投影映射
投影映射的研究主要集中在目标物体的跟踪、几何形状的恢复以及服装等虚拟材料的模拟等方面。然而,很少有人注意到目标物体的材质,这实际上影响了投影的视觉效果。本文提出了一种基于BRDF重构的投影映射框架,以增强增强现实的效果,使投影结果更加真实。在该框架中,采用三维计算机视觉方法用单幅RGBD图像重建目标物体的BRDF。提出了一种利用两个卷积神经网络(CNN)结合RGBD图像同时预测目标表面法线映射和反射率映射的新算法。预测映射用于呈现要投影到目标对象上的内容。我们的BRDF重建算法可以使用一张图像正确地恢复一个场景中的多个材料。实验结果表明,该框架具有较好的性能和较准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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