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Type-2 Fuzzy Markov Random Fields and Their Application to Handwritten Chinese Character Recognition

机译:2型模糊马尔可夫随机域及其在手写汉字识别中的应用

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In this paper, we integrate type-2 (T2) fuzzy sets with Markov random fields (MRFs) referred to as T2 FMRFs, which may handle both fuzziness and randomness in the structural pattern representation. On the one hand, the T2 membership function (MF) has a 3-D structure in which the primary MF describes randomness and the secondary MF evaluates the fuzziness of the primary MF. On the other hand, MRFs can represent patterns statistical-structurally in terms of neighborhood system $partial i$ and clique potentials $V_{c}$ and, thus, have been widely applied to image analysis and computer vision. In the proposed T2 FMRFs, we define the same neighborhood system as that in classical MRFs. To describe uncertain structural information in patterns, we derive the fuzzy likelihood clique potentials from T2 fuzzy Gaussian mixture models. The fuzzy prior clique potentials are penalties for the mismatched structures based on prior knowledge. Because Chinese characters have hierarchical structures, we use T2 FMRFs to model character structures in the handwritten Chinese character recognition system. The overall recognition rate is 99.07%, which confirms the effectiveness of the proposed method.
机译:在本文中,我们将类型2(T2)模糊集与称为T2 FMRF的马尔可夫随机字段(MRF)集成在一起,这可以处理结构模式表示中的模糊性和随机性。一方面,T2隶属度函数(MF)具有3-D结构,其中主要MF描述随机性,而次要MF评估主要MF的模糊性。另一方面,MRF可以按照邻域系统$ part i $和集团势$ V_ {c} $的统计结构表示模式,因此已广泛应用于图像分析和计算机视觉。在提出的T2 FMRF中,我们定义了与经典MRF中相同的邻域系统。为了描述模式中的不确定结构信息,我们从T2模糊高斯混合模型中得出模糊似然集团势。模糊先验集团潜力是对基于先验知识的不匹配结构的惩罚。因为汉字具有层次结构,所以我们在手写汉字识别系统中使用T2 FMRF对汉字结构进行建模。总体识别率为99.07%,证实了该方法的有效性。

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