Illumination Robust Color Naming via Label Propagation

Yuanliu Liu, Zejian Yuan, Badong Chen, Jianru Xue, Nanning Zheng
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引用次数: 13

Abstract

Color composition is an important property for many computer vision tasks like image retrieval and object classification. In this paper we address the problem of inferring the color composition of the intrinsic reflectance of objects, where the shadows and highlights may change the observed color dramatically. We achieve this through color label propagation without recovering the intrinsic reflectance beforehand. Specifically, the color labels are propagated between regions sharing the same reflectance, and the direction of propagation is promoted to be from regions under full illumination and normal view angles to abnormal regions. We detect shadowed and highlighted regions as well as pairs of regions that have similar reflectance. A joint inference process is adopted to trim the inconsistent identities and connections. For evaluation we collect three datasets of images under noticeable highlights and shadows. Experimental results show that our model can effectively describe the color composition of real-world images.
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基于标签传播的光照鲁棒颜色命名
色彩构成是许多计算机视觉任务如图像检索和对象分类的重要属性。在本文中,我们解决了推断物体的本征反射率的颜色组成的问题,其中阴影和高光可能会显著地改变观察到的颜色。我们通过色标传播来实现这一点,而不需要事先恢复本征反射率。具体而言,颜色标签在具有相同反射率的区域之间传播,传播方向从全照度和正常视角区域提升到异常区域。我们检测阴影和高亮区域以及具有相似反射率的成对区域。采用联合推理的方法对不一致的身份和连接进行了删减。为了评估,我们收集了三组明显高光和阴影下的图像数据集。实验结果表明,该模型可以有效地描述真实图像的颜色组成。
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