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Fuzzy Intervals for Designing Structural Signature: An Application to Graphic Symbol Recognition

机译:用于设计结构特征的模糊区间:在图形符号识别中的应用

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The motivation behind our work is to present a new methodology for symbol recognition. The proposed method employs a structural approach for representing visual associations in symbols and a statistical classifier for recognition. We vectorize a graphic symbol, encode its topological and geometrical information by an attributed relational graph and compute a signature from this structural graph. We have addressed the sensitivity of structural representations to noise, by using data adapted fuzzy intervals. The joint probability distribution of signatures is encoded by a Bayesian network, which serves as a mechanism for pruning irrelevant features and choosing a subset of interesting features from structural signatures of underlying symbol set. The Bayesian network is deployed in a supervised learning scenario for recognizing query symbols. The method has been evaluated for robustness against degradations & deformations on pre-segmented 2D linear architectural & electronic symbols from GREC databases, and for its recognition abilities on symbols with context noise i.e. cropped symbols.
机译:我们工作的动机是提出一种新的符号识别方法。所提出的方法采用了一种用于表示符号中的视觉关联的结构方法以及用于识别的统计分类器。我们对图形符号进行矢量化处理,通过属性关系图对其拓扑和几何信息进行编码,并从该结构图计算出签名。我们已经通过使用适应数据的模糊区间来解决结构表示对噪声的敏感性。贝叶斯网络对签名的联合概率分布进行编码,该网络用作修剪不相关特征并从基础符号集的结构签名中选择有趣特征子集的机制。贝叶斯网络被部署在监督学习场景中以识别查询符号。该方法已针对GREC数据库中预分割的2D线性建筑和电子符号进行了针对退化和变形的鲁棒性评估,并针对具有上下文噪声的符号(即裁剪符号)识别了该方法。

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