Multispectral Image Intrinsic Decomposition via Subspace Constraint

Qian Huang, Weixin Zhu, Yang Zhao, Linsen Chen, Yao Wang, Tao Yue, Xun Cao
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引用次数: 7

Abstract

Multispectral images contain many clues of surface characteristics of the objects, thus can be used in many computer vision tasks, e.g., recolorization and segmentation. However, due to the complex geometry structure of natural scenes, the spectra curves of the same surface can look very different under different illuminations and from different angles. In this paper, a new Multispectral Image Intrinsic Decomposition model (MIID) is presented to decompose the shading and reflectance from a single multispectral image. We extend the Retinex model, which is proposed for RGB image intrinsic decomposition, for multispectral domain. Based on this, a subspace constraint is introduced to both the shading and reflectance spectral space to reduce the ill-posedness of the problem and make the problem solvable. A dataset of 22 scenes is given with the ground truth of shadings and reflectance to facilitate objective evaluations. The experiments demonstrate the effectiveness of the proposed method.
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基于子空间约束的多光谱图像内禀分解
多光谱图像包含了许多物体表面特征的线索,因此可以用于许多计算机视觉任务,如重新着色和分割。然而,由于自然场景复杂的几何结构,同一表面的光谱曲线在不同的光照和不同的角度下看起来会有很大的不同。本文提出了一种新的多光谱图像内禀分解模型(MIID)来分解单幅多光谱图像的遮光和反射率。我们将RGB图像固有分解的Retinex模型扩展到多光谱域。在此基础上,对遮阳光谱空间和反射率光谱空间引入子空间约束,降低了问题的病态性,使问题具有可解性。为了便于客观评价,给出了一个包含22个场景的数据集,其中包含阴影和反射率的真实值。实验证明了该方法的有效性。
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