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Neural gray edge: Improving gray edge algorithm using neural network

机译:神经灰边:使用神经网络改进灰边算法

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Color constancy is the ability to compute color constant descriptors of objects independent of the light illuminating the scene. Gray-Edge is a recent and color constancy algorithm that is based on this assumption “the average edge difference in a scene is achromatic”. The approximation error of Gray edge increases sometimes because Gray-Edge assumption is not satisfied completely. Therefore, by modeling Gray-Edge assumption, we can compensate the error of Gray-Edge algorithm. In this paper, we proposed a method that is called Neural Gray Edge. This method employs a neural network to model the Gray-Edge assumption based on image statistics. In other words, Gray-Edge acts as a global search that finds the neighborhoods of the scene illuminant vector and then, the neural network acts as a local search and compensates the Gray-Edge error. Experiments on a large dataset of 11000 images show that proposed approach outperforms current state of the art algorithms.
机译:颜色恒定性是计算与照明场景无关的对象的颜色恒定描述符的能力。 Gray-Edge是一种最新的色彩恒定性算法,它基于以下假设:“场景中的平均边缘差异是消色差的”。由于没有完全满足Gray-Edge的假设,因此Gray Edge的近似误差有时会增加。因此,通过建模Gray-Edge假设,我们可以补偿Gray-Edge算法的误差。在本文中,我们提出了一种称为神经灰边的方法。该方法采用神经网络对基于图像统计数据的Gray-Edge假设进行建模。换句话说,Gray-Edge充当全局搜索,找到场景光源矢量的邻域,然后,神经网络充当局部搜索并补偿Gray-Edge误差。在包含11000张图像的大型数据集上进行的实验表明,所提出的方法优于当前的最新算法。

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