基于潜在动态条件模型的速写符号识别

V. Deufemia, M. Risi, G. Tortora
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引用次数: 2

摘要

本文提出了一种基于序列分类判别模型——潜在动态条件随机场(LDCRF)的速写符号识别器。LDCRF模型通过考虑上下文和时间信息,将未分割的笔画序列分类为领域符号。特别是,ldcrf通过建模符号标签的连续流来学习笔画之间的外在动态,并通过使用中间隐藏状态来学习笔画内部的子结构。我们的工作表现是在电路领域进行评估的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sketched Symbol Recognition with a Latent-Dynamic Conditional Model
In this paper we present a recognizer of sketched symbols based on Latent-Dynamic Conditional Random Fields (LDCRF), a discriminative model for sequence classification. The LDCRF model classifies unsegmented sequences of strokes into domain symbols by taking into account contextual and temporal information. In particular, LDCRFs learn the extrinsic dynamics among strokes by modeling a continuous stream of symbol labels, and learn internal stroke sub-structure by using intermediate hidden states. The performance of our work is evaluated in the electric circuit domain.
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