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A scale and rotation invariant scheme for multi-oriented Character Recognition

机译:一种面向多方向字符识别的尺度旋转不变方案

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In printed stylized documents, text lines may be curved in shape and as a result characters of a single line may be multi-oriented. This paper presents a multi-scale and multi-oriented character recognition scheme using foreground as well as background information. Here each character is partitioned into multiple circular zones. For each zone, three centroids are computed by grouping the constituent character segments (components) of each zone into two clusters. As a result, we obtain one global centroid for all the components in the zone, and further two centroids for the two generated clusters. The above method is repeated for both foreground as well as background information. The features are generated by encoding the spatial distribution of these centroids by computing their relative angular information. These features are then fed into a SVM classifier. A PCA based feature selection phase has also been applied. Detailed experiments on Bangla and Devanagari datasets have been performed. It has been seen that the proposed methodology outperforms a recent competing method.
机译:在打印的样式化文档中,文本行的形状可能是弯曲的,因此,单个行的字符可能是多方向的。本文提出了一种使用前景和背景信息的多尺度,多方位的字符识别方案。在这里,每个字符被划分为多个圆形区域。对于每个区域,通过将每个区域的组成字符段(组件)分组为两个簇来计算三个质心。结果,我们为区域中的所有组件获得了一个全局质心,为两个生成的簇又获得了两个质心。对前景和背景信息均重复上述方法。通过计算这些质心的相对角度信息来对这些质心的空间分布进行编码,从而生成特征。然后将这些功能输入到SVM分类器中。基于PCA的特征选择阶段也已应用。已经对Bangla和Devanagari数据集进行了详细的实验。已经看到,所提出的方法优于最近的竞争方法。

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