首页> 外国专利> DEEP-LEARNING METHOD FOR SEPARATING REFLECTION AND TRANSMISSION IMAGES VISIBLE AT A SEMI-REFLECTIVE SURFACE IN A COMPUTER IMAGE OF A REAL-WORLD SCENE

DEEP-LEARNING METHOD FOR SEPARATING REFLECTION AND TRANSMISSION IMAGES VISIBLE AT A SEMI-REFLECTIVE SURFACE IN A COMPUTER IMAGE OF A REAL-WORLD SCENE

机译:分离真实世界场景中计算机图像中半反射表面的反射和透射图像的深度学习方法

摘要

When a computer image is generated from a real-world scene having a semi-reflective surface (e.g. window), the computer image will create, at the semi-reflective surface from the viewpoint of the camera, both a reflection of a scene in front of the semi-reflective surface and a transmission of a scene located behind the semi-reflective surface. Similar to a person viewing the real-world scene from different locations, angles, etc., the reflection and transmission may change, and also move relative to each other, as the viewpoint of the camera changes. Unfortunately, the dynamic nature of the reflection and transmission negatively impacts the performance of many computer applications, but performance can generally be improved if the reflection and transmission are separated. The present disclosure uses deep learning to separate reflection and transmission at a semi-reflective surface of a computer image generated from a real-world scene.
机译:当从具有半反射表面(例如,窗口)的真实场景中生成计算机图像时,从相机的角度来看,计算机图像将在半反射表面上创建场景的两个反射。半反射表面的透射和位于半反射表面后面的场景的透射。类似于从不同位置,角度等观看现实世界场景的人,随着相机视点的改变,反射和透射可能会发生变化,并且也会相对彼此移动。不幸的是,反射和透射的动态性质会对许多计算机应用程序的性能产生负面影响,但是如果将反射和透射分开,则通常可以提高性能。本公开使用深度学习来分离从真实世界场景生成的计算机图像的半反射表面处的反射和透射。

著录项

  • 公开/公告号US2019164268A1

    专利类型

  • 公开/公告日2019-05-30

    原文格式PDF

  • 申请/专利权人 NVIDIA CORPORATION;

    申请/专利号US201816200192

  • 申请日2018-11-26

  • 分类号G06T7;G06K9/62;G06T1/20;G06T11/40;G06N20;

  • 国家 US

  • 入库时间 2022-08-21 12:06:54

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