数字白板协作平台的手写识别

Lutz Gericke, Matthias Wenzel, Raja Gumienny, Christian Willems, C. Meinel
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引用次数: 6

摘要

本文提出的研究解决了两个学科交叉的挑战:使用数字白板和手写识别的基于web的协作。主要的重点是手写识别,以便在现有的web门户之外异步使用白板内容。我们提出了一种分析非结构化白板内容的方法,包括图纸、草图和手写文本。我们的方法使用DBSCAN算法的递归扩展,以便将内容的较小部分传输到识别引擎,并实现内容的适当空间聚类。详细介绍了配置参数的调整以及递归中断条件的开发。我们表明,使用离线数据的在线手写识别引擎仍然可以获得有意义的结果。所提出的体系结构,以及在线和离线识别的结合,简化了使用数字白板的异步交互模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handwriting recognition for a digital whiteboard collaboration platform
The research presented in this paper addresses challenges at the intersection of two disciplines: web based collaboration using digital whiteboards and handwriting recognition. The main focus is on the handwriting recognition in order to enable asynchronous usage of the whiteboard content beyond the existing web portal. We present a way to analyze unstructured whiteboard content including drawings, sketches and handwritten text. Our approach uses a recursive extension of the DBSCAN algorithm in order to transfer smaller portions of content to the recognition engine and achieve an appropriate spatial clustering of the content. The adjustment of the configuration parameters, as well as the development of a break condition for the recursion, are shown in detail. We show that it is possible to use an online handwriting recognition engine with offline data and still achieve meaningful results. The presented architecture on the one hand, and the combination of online and offline recognition on the other, ease asynchronous modes of interaction using digital whiteboards.
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