Analogic preprocessing and segmentation algorithms for off-line handwriting recognition

G. Tímár, K. Karacs, C. Rekeczky
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引用次数: 18

Abstract

This report describes analogic algorithms used in the preprocessing and segmentation phase of offline handwriting recognition tasks. The handwriting recognition approach is segmentation based, i.e. it attempts to segment words into their constituent letters. In order to improve their speed the utilized CNN algorithms use dynamic, wave front propagation-based methods instead of relying on morphologic operators embedded into iterative algorithms. The system first locates handwritten lines in the page image then corrects their skew as necessary. Afterwards it searches for words within the lines and corrects skew at the word level as well. A novel trigger wave-based word segmentation algorithm is presented which operates on the skeletons of words. Sample results of experiments conducted on a database of 25 handwritten pages are presented.
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离线手写识别的模拟预处理和分割算法
本文描述了离线手写识别任务的预处理和分割阶段中使用的类比算法。手写识别方法是基于分割的,即它试图将单词分割成它们的组成字母。为了提高其速度,所使用的CNN算法使用动态的、基于波前传播的方法,而不是依赖于嵌入到迭代算法中的形态学算子。系统首先定位页面图像中的手写线条,然后根据需要纠正它们的倾斜。然后,它会搜索字里行间的单词,并在单词级别上纠正歪斜。提出了一种基于触发波的基于词骨架的分词算法。本文给出了在25个手写页面数据库上进行的实验样本结果。
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Non-saturated binary image learning and recognition using the ratio-memory cellular neural network (RMCNN) Analogic preprocessing and segmentation algorithms for off-line handwriting recognition Statistical error modeling of CNN-UM architectures: the binary case Realization of couplings in a polynomial type mixed-mode CNN Configurable multi-layer CNN-UM emulator on FPGA
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