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Color-to-Grayscale: Does the Method Matter in Image Recognition?

机译:彩色到灰度:该方法是否在图像识别中起作用?

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摘要

In image recognition it is often assumed the method used to convert color images to grayscale has little impact on recognition performance. We compare thirteen different grayscale algorithms with four types of image descriptors and demonstrate that this assumption is wrong: not all color-to-grayscale algorithms work equally well, even when using descriptors that are robust to changes in illumination. These methods are tested using a modern descriptor-based image recognition framework, on face, object, and texture datasets, with relatively few training instances. We identify a simple method that generally works best for face and object recognition, and two that work well for recognizing textures.
机译:在图像识别中,通常假定用于将彩色图像转换为灰度的方法对识别性能的影响很小。我们将13种不同的灰度算法与四种类型的图像描述符进行了比较,并证明了这种假设是错误的:即使使用了对光照变化具有鲁棒性的描述符,并非所有的颜色到灰度算法都能很好地工作。这些方法是使用现代的基于描述符的图像识别框架在面部,对象和纹理数据集上进行测试的,并且训练实例相对较少。我们确定了一种通常最适合面部和物体识别的简单方法,另外两种方法则适用于识别纹理。

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