一种基于深度线索的简单图像分解模型

Qifeng Chen, V. Koltun
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引用次数: 190

摘要

提出了一种RGB-D图像的内禀分解模型。我们的方法分析单个RGB-D图像,并估计解释输入的反照率和阴影场。为了消除这个问题的歧义,我们的模型估计了一些共同构成重建阴影的成分。通过分解阴影场,我们可以建立关于图像形成的假设,帮助区分反射率变化和阴影。这些假设被表示为简单的非局部正则化。我们在真实世界的图像和具有挑战性的合成数据集上评估模型。实验结果表明,该方法在RGB-D图像的内禀分解方面优于现有模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simple Model for Intrinsic Image Decomposition with Depth Cues
We present a model for intrinsic decomposition of RGB-D images. Our approach analyzes a single RGB-D image and estimates albedo and shading fields that explain the input. To disambiguate the problem, our model estimates a number of components that jointly account for the reconstructed shading. By decomposing the shading field, we can build in assumptions about image formation that help distinguish reflectance variation from shading. These assumptions are expressed as simple nonlocal regularizers. We evaluate the model on real-world images and on a challenging synthetic dataset. The experimental results demonstrate that the presented approach outperforms prior models for intrinsic decomposition of RGB-D images.
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