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Online Writer Identification Using Sparse Coding and Histogram Based Descriptors

机译:使用稀疏编码和基于直方图的描述符进行在线作者识别

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In this paper, we present a novel scheme for text-independent online writer identification. As a first contribution, we propose histogram based features, inspired from the area of object detection, to describe the structural primitives of handwriting. Secondly, we have used sparse coding techniques to learn prototypes, that describe the general writing characteristics of the authors. To the best of our knowledge, the present proposal is the first of its kind that exploits the sparse learning framework for online writer identification. In addition, we consider the inclusion of ideas from information retrieval into our sparse representation to formulate a novel descriptor for each document. The efficacy of our proposal is tested on the handwritten paragraphs and text lines of the IAM On-Line Handwriting Database. We also provide a quantitative comparison of performance of our histogram based features with Fourier and Wavelet descriptors. The results are promising.
机译:在本文中,我们提出了一种独立于文本的在线作者识别的新颖方案。作为第一个贡献,我们提出了基于直方图的功能,这些功能受到对象检测领域的启发,用于描述手写的结构基元。其次,我们使用稀疏编码技术来学习原型,这些原型描述了作者的一般写作特征。据我们所知,本提案是第一个利用稀疏学习框架进行在线作者身份识别的提案。此外,我们考虑将信息检索中的思想纳入稀疏表示中,以便为每个文档制定一个新颖的描述符。我们的提案的有效性在IAM在线手写数据库的手写段落和文本行中进行了测试。我们还提供了基于傅立叶和小波描述符的直方图特征性能的定量比较。结果是有希望的。

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