局部部件的基于不相似度的表示

A. C. Carli, U. Castellani, M. Bicego, Vittorio Murino
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引用次数: 14

摘要

本文提出了一种新的基于不相似度的图像表示方法,该方法将局部图像描述子与多个不相似度函数相结合。其基本思想是根据图像部分的局部描述符,即从训练集中提取的特征点来定义原型集。因此,根据基于不相似度的方法,可以根据新图像与每个给定原型的不相似度来表征新图像。这就产生了一类新的局部核,它利用了图像部分之间的不相似性。特别地,我们证明了经典的特征袋(BoF)核可以作为我们的新公式的特殊情况进行修正,并且当使用新的不相似函数时可以获得更好的性能。此外,我们观察到,基本BoF内核的任何变体都可以从我们的方法中获益,正如我们为金字塔匹配内核所展示的那样。在ETH-80数据库上的图像分类显示出令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dissimilarity-based representation for local parts
In this paper a novel approach for dissimilarity-based representation is presented, which combines local image descriptors with several dissimilarity functions. The basic idea consists of defining the set of prototypes in terms of local descriptors of image parts, namely feature points extracted from the training set. Therefore, according to the dissimilarity-based approach, a new image can be characterized on the basis of its dissimilarity with each of the given prototypes. This leads to a new class of Local Kernels which exploits the use of dissimilarities between image parts. In particular, we show that the classic Bag-of-Feature (BoF) kernel can be revised as a special case of our new formulation, and better performance can be obtained when new dissimilarity functions are employed. Moreover, we observe that any variants of the basic BoF kernel can take advantage from our approach as we show for the case of the Pyramid Match kernel. Promising results are shown for image categorization on the ETH-80 database.
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