Computing Ritz approximations of primary images

H. Schweitzer
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引用次数: 7

Abstract

Ritz vectors approximate eigenvectors that are a common choice for primary images in content based indexing. They can be computed efficiently even when the images are accessed through slow communication such as the Internet. We develop an algorithm that computes Ritz vectors in one pass through the images. When iterated, the algorithm can recover the exact eigenvectors. In applications to image indexing and learning it may be necessary to compute primary images for indexing many sub-categories of the image set. The proposed algorithm can compute these age data. Similar computation by other algorithms is much more costly even when access to the images is inexpensive.
计算主图像的里兹近似
里兹向量近似特征向量,是基于内容的索引中主要图像的常用选择。即使通过因特网等慢速通信访问图像,它们也可以有效地计算。我们开发了一种算法,在一次通过图像计算里兹向量。当迭代时,该算法可以准确地恢复特征向量。在图像索引和学习的应用中,为了索引图像集的许多子类别,可能需要计算主图像。提出的算法可以计算这些年龄数据。即使访问图像的成本不高,使用其他算法进行类似计算的成本也要高得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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