首页> 外文会议>IAPR-TC-15 International Workshop on Graph-Based Representations in Pattern Recognition(GbRPR 2007); 20070611-13; Alicante(ES) >Generalized vs Set Median Strings for Histogram-Based Distances: Algorithms and Classification Results in the Image Domain
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Generalized vs Set Median Strings for Histogram-Based Distances: Algorithms and Classification Results in the Image Domain

机译:基于直方图的距离的广义vs集合中值字符串:图像域中的算法和分类结果

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We compare different statistical characterizations of a set of strings, for three different histogram-based distances. Given a distance, a set of strings may be characterized by its generalized median, i.e., the string —over the set of all possible strings— that minimizes the sum of distances to every string of the set, or by its set median, i.e., the string of the set that minimizes the sum of distances to every other string of the set. For the first two histogram-based distances, we show that the generalized median string can be computed efficiently; for the third one, which biased histograms with individual substitution costs, we conjecture that this is a NP-hard problem, and we introduce two different heuristic algorithms for approximating it. We experimentally compare the relevance of the three histogram-based distances, and the different statistical characterizations of sets of strings, for classifying images that are represented by strings.
机译:对于三个不同的基于直方图的距离,我们比较了一组字符串的不同统计特征。在给定距离的情况下,一组字符串的特征可能在于其广义中值,即,在所有可能的字符串集合中的,使到该集合中每个字符串的距离之和最小的字符串,或者由其集合中位数,即,该集合的字符串,可最大程度减少到该集合的每个其他字符串的距离之和。对于前两个基于直方图的距离,我们表明可以有效地计算广义中值字符串。对于第三个,它用个体替换成本对直方图进行了偏倚,我们推测这是一个NP难题,并且我们引入了两种不同的启发式算法对其进行近似。我们通过实验比较了三个基于直方图的距离的相关性以及字符串集的不同统计特征,以对由字符串表示的图像进行分类。

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