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Sparse Color Interest Points for Image Retrieval and Object Categorization

机译:用于图像检索和对象分类的稀疏颜色兴趣点

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摘要

Interest point detection is an important research area in the field of image processing and computer vision. In particular, image retrieval and object categorization heavily rely on interest point detection from which local image descriptors are computed for image matching. In general, interest points are based on luminance, and color has been largely ignored. However, the use of color increases the distinctiveness of interest points. The use of color may therefore provide selective search reducing the total number of interest points used for image matching. This paper proposes color interest points for sparse image representation. To reduce the sensitivity to varying imaging conditions, light-invariant interest points are introduced. Color statistics based on occurrence probability lead to color boosted points, which are obtained through saliency-based feature selection. Furthermore, a principal component analysis-based scale selection method is proposed, which gives a robust scale estimation per interest point. From large-scale experiments, it is shown that the proposed color interest point detector has higher repeatability than a luminance-based one. Furthermore, in the context of image retrieval, a reduced and predictable number of color features show an increase in performance compared to state-of-the-art interest points. Finally, in the context of object recognition, for the Pascal VOC 2007 challenge, our method gives comparable performance to state-of-the-art methods using only a small fraction of the features, reducing the computing time considerably.
机译:兴趣点检测是图像处理和计算机视觉领域的重要研究领域。特别地,图像检索和对象分类严重依赖于兴趣点检测,从该兴趣点检测中计算出用于图像匹配的局部图像描述符。通常,兴趣点基于亮度,而颜色已被大大忽略。但是,使用颜色会增加兴趣点的独特性。因此,使用颜色可以提供选择性搜索,从而减少用于图像匹配的兴趣点的总数。本文提出了用于稀疏图像表示的颜色兴趣点。为了降低对变化的成像条件的敏感性,引入了光不变兴趣点。基于出现概率的颜色统计会导致颜色提升点,这些点是通过基于显着性的特征选择获得的。此外,提出了一种基于主成分分析的尺度选择方法,该方法给出了每个兴趣点的鲁棒尺度估计。从大规模实验中可以看出,所提出的色彩兴趣点检测器具有比基于亮度的检测器更高的可重复性。此外,在图像检索的背景下,与最新的兴趣点相比,色彩特征的减少和可预测数量显示出性能的提高。最后,在对象识别的背景下,对于Pascal VOC 2007挑战,我们的方法仅使用一小部分功能即可提供与最新方法相当的性能,从而大大减少了计算时间。

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