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A general framework for the recognition of online handwritten graphics

机译:识别在线手写图形的一般框架

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We revisit graph grammar and graph parsing as tools for recognizing graphics. A top-down approach for parsing families of handwritten graphics containing different kinds of symbols and of structural relations is proposed. It has been tested on two distinct domains, namely the recognition of handwritten mathematical expressions and of handwritten flowcharts. In the proposed approach, a graphic is considered as a labeled graph generated by a graph grammar. The recognition problem is translated into a graph parsing problem: Given a set of strokes (input data), a parse tree which represents the best interpretation is extracted. The graph parsing algorithm generates multiple interpretations (consistent with the grammar) that can be ranked according to a global cost function that takes into account the likelihood of symbols and structures. The parsing algorithm consists in recursively partitioning the stroke set according to rules defined in the graph grammar. To constrain the number of partitions to be evaluated, we propose the use of a hypothesis graph, built from data-driven machine learning techniques, to encode the most likely symbol and relation hypotheses. Within this approach, it is easy to relax the stroke ordering constraint allowing interspersed symbols, as opposed to some previous works. Experiments show that our method obtains accuracy comparable to methods specifically developed to recognize domain-dependent data.
机译:我们将图形语法和图形解析为识别图形的工具。提出了一种自上而下的方法,用于解析包含不同种类符号和结构关系的手写图形的家庭。它已经在两个不同的域中进行了测试,即识别手写的数学表达式和手写流程图。在所提出的方法中,将图形被认为是由图语法生成的标记图。识别问题被翻译成图形解析问题:给定一组笔划(输入数据),提取表示最佳解释的解析树。图形解析算法生成可以根据全局成本函数排序的多个解释(与语法一致),该函数考虑了符号和结构的可能性。解析算法在于根据图形语法中定义的规则递归划分笔划集。要限制要评估的分区数量,我们建议使用由数据驱动的机器学习技术构建的假设图,以编码最可能的符号和关系假设。在这种方法中,很容易放宽允许散射符号的行程排序约束,而不是某些以前的作品。实验表明,我们的方法获得了与专门开发的方法相当的准确性,以识别域依赖数据。

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