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Evaluating Color Descriptors for Object and Scene Recognition

机译:评估颜色描述符以进行对象和场景识别

摘要

Image category recognition is important to access visual information on the level of objects and scene types. So far, intensity-based descriptors have been widely used for feature extraction at salient points. To increase illumination invariance and discriminative power, color descriptors have been proposed. Because many different descriptors exist, a structured overview is required of color invariant descriptors in the context of image category recognition. Therefore, this paper studies the invariance properties and the distinctiveness of color descriptors (software to compute the color descriptors from this paper is available from http://www.colordescriptors.com) in a structured way. The analytical invariance properties of color descriptors are explored, using a taxonomy based on invariance properties with respect to photometric transformations, and tested experimentally using a data set with known illumination conditions. In addition, the distinctiveness of color descriptors is assessed experimentally using two benchmarks, one from the image domain and one from the video domain. From the theoretical and experimental results, it can be derived that invariance to light intensity changes and light color changes affects category recognition. The results further reveal that, for light intensity shifts, the usefulness of invariance is category-specific. Overall, when choosing a single descriptor and no prior knowledge about the data set and object and scene categories is available, the OpponentSIFT is recommended. Furthermore, a combined set of color descriptors outperforms intensity-based SIFT and improves category recognition by 8 percent on the PASCAL VOC 2007 and by 7 percent on the Mediamill Challenge.
机译:图像类别识别对于访问有关对象和场景类型级别的视觉信息很重要。到目前为止,基于强度的描述符已被广泛用于显着点的特征提取。为了增加照明不变性和判别能力,已经提出了颜色描述符。因为存在许多不同的描述符,所以在图像类别识别的上下文中需要颜色不变描述符的结构化概述。因此,本文以结构化的方式研究了颜色描述符的不变性和独特性(可从http://www.colordescriptors.com获得用于从本文计算颜色描述符的软件)。使用基于关于光度转换的不变性的分类法,探索了颜色描述符的分析不变性,并使用具有已知照明条件的数据集进行了实验测试。此外,使用两个基准对色彩描述符的独特性进行了实验评估,一个基准来自图像域,一个来自视频域。从理论和实验结果可以得出,光强度变化和光颜色变化的不变性会影响类别识别。结果进一步表明,对于光强度变化,不变性的有效性是特定于类别的。总体而言,当选择单个描述符并且没有关于数据集以及对象和场景类别的先验知识时,建议使用OpponentSIFT。此外,一组组合的颜色描述符优于基于强度的SIFT,在PASCAL VOC 2007上将类别识别提高了8%,在Mediamill Challenge中提高了7%。

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