历史掉落帽样式识别的局部嵌套直方图

Michaël Clément, Mickaël Coustaty, Camille Kurtz, L. Wendling
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引用次数: 4

摘要

本文重点研究了文化遗产保护背景下drop caps图像识别的具体问题。由于它们的异质性和弱结构特性,这些历史图像代表了具有挑战性的数据。在drop caps的识别过程中,一个重要的方面是它们的背景样式,这可以被认为是区分打印机和时期的特征。大多数现有的风格识别方法都是基于底层特征,如颜色或纹理属性。在本文中,我们提出了一种新的基于高层特征的跌落帽样式识别框架。我们建议使用相对位置描述符来捕获这些图像所携带的空间结构,这些描述符模拟了从文档分割步骤中获得的像素层局部细胞之间的嵌套。然后在一个有效的特征袋学习过程中利用这些描述符。在历史滴帽图像数据集上获得的实验结果突出了该方法的兴趣,特别是考虑空间信息的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Enlacement Histograms for Historical Drop Caps Style Recognition
This article focuses on the specific issue of drop caps image recognition in the context of cultural heritage preservation. Due to their heterogeneity and their weakly structured properties, these historical images represent challenging data. An important aspect in the recognition process of drop caps is their background styles, which can be considered as discriminative features to identify both the printer and the period. Most existing methods for style recognition are based on low-level features such as color or texture properties. In this article, we present a novel framework for the recognition of drop caps style based on features of higher levels. We propose to capture the spatial structure carried by these images using relative position descriptors modeling the enlacement between local cells of pixel layers obtained from a document segmentation step. Such descriptors are then exploited in an efficient bag-of-features learning procedure. Experimental results obtained on a dataset of historical drop caps images highlight the interest of this approach, and in particular the benefit of considering spatial information.
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