手写体词检索中的可分性与原型性

J. V. Oosten, Lambert Schomaker
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引用次数: 5

摘要

用户对单词图像检索系统的评价是基于查询命中列表的质量。使用支持向量机对大规模的手写文档集合进行排名,我们观察到许多热门列表在排名靠前的位置都存在不良实例。对这个问题的分析表明,两个功能需要在可分离性和原型性方面进行优化。通过分两个阶段对图像进行排序,减少了干扰图像的数量,使该方法非常方便于大规模、连续可训练的检索引擎。代替繁琐的支持向量机训练,我们提出了一种最接近质心的方法,并表明可以实现高达35个百分点的精度提高,在具有大量实例的数据集中产生高达100%的精度,同时保持高召回性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Separability versus Prototypicality in Handwritten Word Retrieval
User appreciation of a word-image retrieval system is based on the quality of a hit list for a query. Using support vector machines for ranking in large scale, handwritten document collections, we observed that many hit lists suffered from bad instances in the top ranks. An analysis of this problem revealed that two functions needed to be optimised concerning both separability and prototypicality. By ranking images in two stages, the number of distracting images is reduced, making the method very convenient for massive scale, continuously trainable retrieval engines. Instead of cumbersome SVM training, we present a nearest-centroid method and show that precision improvements of up to 35 percentage points can be achieved, yielding up to 100% precision in data sets with a large amount of instances, while maintaining high recall performances.
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