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Hand-drawn symbol recognition in graphic documents using deformable template matching and a Bayesian framework

机译:使用可变形模板匹配和贝叶斯框架的图形文档中的手绘符号识别

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Hand-drawn symbols can take many different and distorted shapes from their ideal representation. Then, very flexible methods are needed to be able to handle unconstrained drawings. We propose to extend our previous work in hand-drawn symbol recognition based on a Bayesian framework and deformable template matching. This approach has enough flexibility to fit distorted shapes in the drawing while keeping fidelity to the ideal shape of the symbol. We define the similarity measure between an image and a symbol based on the distance from every pixel in the image to the lines in the symbol. Matching is carried out using an implementation of the EM algorithm. Thus, we can improve recognition rates and computation time with respect to our previous formulation based on a simulated annealing algorithm.
机译:手绘符号与其理想表示形式相比,可以采用许多不同且变形的形状。然后,需要非常灵活的方法来处理不受约束的图形。我们建议在基于贝叶斯框架和可变形模板匹配的手绘符号识别中扩展我们以前的工作。这种方法具有足够的灵活性,可以在图形中适应变形的形状,同时保持对符号的理想形状的保真度。我们基于图像中每个像素到符号中线条之间的距离,定义图像和符号之间的相似性度量。使用EM算法的实现来进行匹配。因此,基于模拟退火算法,相对于我们以前的公式,我们可以提高识别率和计算时间。

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