LSDE: Levenshtein Space Deep Embedding for Query-by-String Word Spotting

L. G. I. Bigorda, Marçal Rusiñol, Dimosthenis Karatzas
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引用次数: 25

Abstract

In this paper we present the LSDE string representation and its application to handwritten word spotting. LSDE is a novel embedding approach for representing strings that learns a space in which distances between projected points are correlated with the Levenshtein edit distance between the original strings. We show how such a representation produces a more semantically interpretable retrieval from the user's perspective than other state of the art ones such as PHOC and DCToW. We also conduct a preliminary handwritten word spotting experiment on the George Washington dataset.
基于字符串查询的Levenshtein空间深度嵌入
本文提出了LSDE字符串表示及其在手写体单词识别中的应用。LSDE是一种表示字符串的新颖嵌入方法,它学习一个空间,其中投影点之间的距离与原始字符串之间的Levenshtein编辑距离相关。我们展示了这种表示如何从用户的角度产生比PHOC和DCToW等其他先进技术更具有语义可解释性的检索。我们还在乔治·华盛顿的数据集上进行了一个初步的手写单词识别实验。
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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