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HMM-Based Multi Oriented Text Recognition in Natural Scene Image

机译:自然场景图像中基于HMM的多方向文本识别

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Recognition of curved text in natural scene image is a challenging task. Due to complex background and unpredictable characteristics of scene text and noise, text characters in strings are often touching that affects the performance of segmentation and recognition. This paper presents a novel approach for curved text recognition using Hidden Markov Models (HMM). From curved text, a path of sliding window is estimated and features extracted from the sliding window are fed to the HMM system for recognition. We evaluate two frame-wise feature extraction algorithms namely Marti-Bunk and local gradient histogram. The proposed approach has been tested on different natural scene benchmark as well as video databases, e.g. ICDAR-2003competition scene images, MSRA-TD500 and NUS. We have achieved word recognition accuracy of about 63.28%, 58.41% and 53.62%y for horizontal text, non-horizontal text and curved text, respectively.
机译:在自然场景图像中识别弯曲文本是一项艰巨的任务。由于复杂的背景以及场景文本和噪声的不可预测特性,字符串中的文本字符经常会碰触到,从而影响分割和识别的性能。本文提出了一种使用隐马尔可夫模型(HMM)进行弯曲文本识别的新方法。根据弯曲的文本,估计滑动窗口的路径,并将从滑动窗口提取的特征输入到HMM系统进行识别。我们评估了两种逐帧特征提取算法,即Marti-Bunk和局部梯度直方图。所提出的方法已经在不同的自然场景基准以及视频数据库(例如, ICDAR-2003比赛现场图像,MSRA-TD500和NUS。对于水平文本,非水平文本和弯曲文本,我们分别实现了约63.28%,58.41%和53.62%y的单词识别精度。

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