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Segmentation and classification of hand-drawn pictograms in cluttered scenes - an integrated approach

机译:杂乱场景中手绘象形图的分割和分类 - 一种综合方法

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In this paper, a new approach to identification of handwritten symbols in arbitrary complex environments is presented. 20 different pictograms drawn in different backgrounds can be identified with a recognition accuracy of 90%. In order to perform this challenging task, we use pattern spotting techniques based on pseudo 2-D Hidden Markov Models (P2DHMMs). Practical applications of our approach can be found in many typical multimedia document processing tasks, such as localization and recognition of non-rigid objects in image databases, detection of objects in complex scenes, finding trademarks in presence of clutter within videos, processing distorted document images in digital libraries, or content-based image retrieval based on handwritten querysymbols.
机译:在本文中,提出了一种新方法,识别任意复杂环境中的手写符号。在不同背景中绘制的20种不同的象形图可以以90%的识别精度识别。为了执行这项具有挑战性的任务,我们使用基于伪2-D隐藏马尔可夫模型(P2DHMMS)的模式点发现技术。我们的方法的实际应用可以在许多典型的多媒体文档处理任务中找到,例如图像数据库中的非刚性对象的本地化和识别,在复杂的场景中检测对象,在视频中存在杂乱的商标,处理扭曲的文档图像在数字库中,基于手写QuerySymbols的基于内容的图像检索。

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