颜色袋分类图像的调色板生成

Ayaka Kojima, T. Ozeki
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引用次数: 2

摘要

在计算机上有大量的颜色来表示图像(例如,在RGB色彩空间中256256256 = 16,777,216种颜色)。由于需要处理的颜色太多,通常在图像处理中通过量化来减少大量的颜色。当我们进行均匀颜色量化时,我们经常得到不适合真实世界的颜色。因此,典型的颜色应该从现实世界的图像中学习,以产生一个实用的调色板。仅基于灰度像素值的局部特征的视觉词袋提供了图像分类、检索和识别领域的最新技术。因此,期望通过在局部特征中添加颜色信息来提高性能。然而,如果我们从图像中提取的特征数量增加,则会消耗内存和计算时间。此外,特征的增加会影响识别的性能。本文的目的是在计算时间越少、颜色越少的情况下,利用颜色袋生成适合图像分类的调色板,以提高图像分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Color palette generation for image classification by bag-of-colors
There are a large number of colors to represent images (e.g. 256256256 = 16,777,216 colors in an RGB color space) on computers. Since there are too many colors to handle, a large number of colors are reduced by quantization in the image processing in general. When we perform a uniform color quantization, we often get colors which do not fit the real world. Therefore, typical colors should be learned from real world images to generate a practical color palette. The bag-of-visual words based only on local features of grayscale pixel values provides the state of the art technology in the field of image classification, retrieval and recognition. Therefore it is expected to improve the performance by adding the color information to the local features. However, if we increase the number of features to extract from images, it costs memory and time for computation. Moreover, the increase of features affects the performance of recognition. The aim of this paper is to generate appropriate color palette for image classification by the bag-of-colors with less computation time and as few colors as possible to improve the accuracy of image classification.
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