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The Adaptive Subspace Map for Image Description and Image Database Retrieval

机译:用于图像描述和图像数据库检索的自适应子空间图

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摘要

In this paper, a mixture-of-subspaces model is proposed to describe images. Images or image patches, when translated, rotated or scaled, lie in low-dimensional subspaces of the high-dimensional space spanned by the grey values. These manifolds can locally be approximated by a linear subspace. The adaptive subspace map is a method to learn such a mixture-of-subspaces from the data. Due to its general nature, various clustering and subspace-finding algorithms can be used. If the adaptive subspace map is trained on data extracted from images, a description of the image content is obtained, which can then be used for various classification and clustering problems. Here, the method is applied to an image database retrieval problem and an object image classification problem, and is shown to give promising results.
机译:本文提出了一种混合子空间模型来描述图像。图像或图像块在平移,旋转或缩放后,位于由灰度值跨越的高维空间的低维子空间中。这些流形可以通过线性子空间局部地近似。自适应子空间图是一种从数据中学习这种子空间混合的方法。由于其一般性质,可以使用各种聚类和子空间查找算法。如果在从图像中提取的数据上训练了自适应子空间图,则会获得图像内容的描述,然后将其用于各种分类和聚类问题。在此,该方法被应用于图像数据库检索问题和对象图像分类问题,并且显示出有希望的结果。

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