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Large Image Collection Visualization Using Perception-Based Similarity with Color Features

机译:使用基于感知的相似度和色彩特征实现大图像集合的可视化

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This paper introduces the basic steps to build a similarity-based visualization tool for large image collections. We build the similarity metrics based on human perception. Psychophysical experiments have shown that human observers can recognize the gist of scenes within 100 milliseconds (ms) by comprehending the global properties of an image. Color also plays an important role in human rapid scene recognition. However, previous works often neglect color features. We propose new scene descriptors that preserve the information from coherent color regions, as well as the spatial layouts of scenes. Experiments show that our descriptors outperform existing state-of-the-art approaches. Given the similarity metrics, a hierarchical structure of an image collection can be built in a top-down manner. Representative images are chosen for image clusters and visualized using a force-directed graph.
机译:本文介绍了为大型图像集合构建基于相似度的可视化工具的基本步骤。我们基于人类的感知来建立相似性指标。心理物理实验表明,人类观察者可以通过理解图像的整体属性来识别100毫秒(ms)内的场景要点。颜色在人类快速场景识别中也起着重要作用。但是,以前的作品经常忽略色彩特征。我们提出了新的场景描述符,该描述符保留了来自连贯的色彩区域以及场景的空间布局中的信息。实验表明,我们的描述符优于现有的最新方法。给定相似性度量,可以以自上而下的方式构建图像集合的分层结构。选择代表图像进行图像聚类,并使用力导向图将其可视化。

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