论概率图像检索的复杂性

N. Vasconcelos
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引用次数: 60

摘要

与标准检索技术相比,概率图像检索方法可以带来显著的收益。然而,这是以计算复杂性的显著增加为代价的。事实上,概率检索的封闭形式解决方案目前仅适用于简单的表示,如高斯和直方图。我们分析了混合密度的情况,并利用似然和Kullback-Leibler散度之间的渐近等价来推导这些模型的解。特别是,(1)我们证明了散度可以精确地计算向量量化器,(2)对于高斯混合物有一个近似解,它没有引入导致相似性判断的显着退化。在这两种情况下,新解具有与标准检索方法相当的封闭形式和计算复杂度,但检索性能明显更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the complexity of probabilistic image retrieval
Probabilistic image retrieval approaches can lead to significant gains over standard retrieval techniques. However, this occurs at the cost of a significant increase in computational complexity. In fact, closed-form solutions for probabilistic retrieval are currently available only for simple representations such as the Gaussian and the histogram. We analyze the case of mixture densities and exploit the asymptotic equivalence between likelihood and Kullback-Leibler divergence to derive solutions for these models. In particular, (1) we show that the divergence can be computed exactly for vector quantizers and, (2) has an approximate solution for Gaussian mixtures that introduces no significant degradation of the resulting similarity judgments. In both cases, the new solutions have closed-form and computational complexity equivalent to that of standard retrieval approaches, but significantly better retrieval performance.
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