Visually Browsing Millions of Images Using Image Graphs.

ICMR(2017)

引用 13|浏览39
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摘要
We present a new approach to visually browse very large sets of untagged images. High quality image features are generated using transformed activations of a convolutional neural network. These features are used to model image similarities, from which a hierarchical image graph is build. We show how such a graph can be constructed efficiently. In our experiments we found best user experience for navigating the graph is achieved by projecting sub-graphs onto a regular 2D image map. This allows users to explore the image collection like an interactive map.
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关键词
Image Graph, Exploration, Browsing, Visualization, Navigation, Convolutional Neural Networks, CBIR
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