上下文感知在线图表识别

Mudit Agrawal, Alexander Zotov, Ming Ye, Sashi Raghupathy
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引用次数: 3

摘要

本文提出了一种上下文感知的在线即时模式手绘图识别与美化软件。该系统与笔划顺序、笔划数、笔划方向无关,对缩放、平移和旋转不影响。在我们的基于笔画的识别模型中,我们提出了凸性特征以及空间和时间接近特征来修剪可能的笔画配置的组合搜索空间以形成形状。这将指数复杂度的问题减少到多项式1,同时与基于时间接近的准则相比,误差减少了24%。然后使用几何多边形特征对基于神经网络的17类分类器进行识别。该系统基于基于笔画的分类器组合模型,仲裁者根据形状、连接器和书写绘图专家的建议做出上下文感知的决策。对于70万个在线形状集合,我们分别对专家实现了92.7%、81.4%和91.5%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context Aware On-line Diagramming Recognition
This paper presents a context aware, online immediate-mode diagramming recognition and beautification software for hand-sketched diagrams. The system is independent of stroke-order, -number, -direction and is invariant to scaling, translation and rotation. In our stroke-based recognition model, we propose convexity features along with spatial and temporal proximity features to prune the combinatorial search space of possible stroke configurations to form shapes. This reduces the problem of exponential complexity to polynomial one while reducing the error by 24% compared to temporal proximity based criterion. The strokes are then recognized using geometric polygonal features against a neural-net based classifier for 17 classes. The diagramming system is based on stroke-based classifier combination model where an arbitrator makes context aware decisions using suggestions from shape, connector and writing-drawing experts. We achieved an accuracy of 92.7%, 81.4% and 91.5% on the respective experts for a collection of 700,000 online shapes.
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