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>Unconstrained handwritten numeral recognition based on radial basis competitive and cooperative networks with spatio-temporal feature representation
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Unconstrained handwritten numeral recognition based on radial basis competitive and cooperative networks with spatio-temporal feature representation
This paper presents a new approach to representation and recognition of handwritten numerals. The approach first transforms a two-dimensional (2-D) spatial representation of a numeral into a three-dimensional (3-D) spatio-temporal representation by identifying the tracing sequence based on a set of heuristic rules acting as transformation operators. A multiresolution critical-point segmentation method is then proposed to extract local feature points, at varying degrees of scale and coarseness. A new neural network architecture, referred to as radial-basis competitive and cooperative network (RCCN), is presented especially for handwritten numeral recognition. RCCN is a globally competitive and locally cooperative network with the capability of self-organizing hidden units to progressively achieve desired network performance, and functions as a universal approximator of arbitrary input-output mappings. Three types of RCCNs are explored: input-space RCCN (IRCCN), output-space RCCN (ORCCN), and bidirectional RCCN (BRCCN). Experiments against handwritten zip code numerals acquired by the U.S. Postal Service indicated that the proposed method is robust in terms of variations, deformations, transformations, and corruption, achieving about 97% recognition rate.
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机译:本文提出了一种新的方法来表示和识别手写数字。该方法首先根据一组用作变换算符的启发式规则来识别跟踪序列,从而将数字的二维(2-D)空间表示形式转换为三维(3-D)时空表示形式。然后提出了一种多分辨率临界点分割方法,以不同程度的尺度和粗糙度提取局部特征点。提出了一种新的神经网络架构,称为径向基竞争与合作网络(RCCN),专门用于手写数字识别。 RCCN是具有全球竞争力的本地合作网络,具有自组织隐藏单元以逐步实现所需网络性能的能力,并且可以充当任意输入输出映射的通用近似器。研究了三种类型的RCCN:输入空间RCCN(IRCCN),输出空间RCCN(ORCCN)和双向RCCN(BRCCN)。针对美国邮政局(US Postal Service)获得的手写邮政编码进行的实验表明,该方法在变化,变形,变换和破坏方面都非常可靠,识别率约为97%。
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