基于FAST检测到的原语,从图形表示构造图像描述符

A. Chergui, A. Bekkhoucha, W. Sabbar
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引用次数: 1

摘要

图像表征中兴趣点的提取方法多种多样。一般来说,描述过程遵循检测器/描述符模式的构造。检测允许选择一些感兴趣的点作为捕捉图像重要结构信息的原语。然后用特征向量描述这些检测到的点,形成图像的代表性签名。我们发现这些方法在图像数据库的分类、索引和按内容搜索系统中有很多应用。虽然大多数检测方法都提供了与检测阶段和目标应用程序相关的描述符。对于FAST (Features from Accelerated Segment Test)方法来说,它仍然是目前最快的方法之一,在即时表征任务中有很多应用。但是,该方法的作者只提供了一种检测方法,并没有明确给出方法的描述,让这部分方法用于以后的应用。另一方面,其他方法基于图,带来结构方面的特征优于统计方法。在本文中,我们提出了一种利用FAST算法检测到的兴趣点来构造表征图结构的图像图表征方法。这样,图像相似性问题就转化为图形匹配问题。然后,我们描述了这种方法比传统表征方法提供的优势。
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Construction of an image descriptor from graph representation based on a primitives detected by FAST
Extraction methods of points of interest in image characterization are many and diverse. In general the process of characterization follows a construction of a detector/descriptor schema. The detection allows selecting some points of interest as primitives who capture important structural information about the image. These detected points are then described by characteristic vectors to form a representative signature of the image. We find many applications of these methods in systems of classification, indexing and search by content in the images databases. While most of detection methods offer descriptors related both to the detection phase and the destination application. For the FAST (Features from Accelerated Segment Test) method, it remains one of the fastest methods currently, and located many application in the tasks of instant characterization. However, the authors of this method offer only a detection approach, without explicitly giving the approach of description to let this part for future application methods. On the other hand, others methods based on graphs, bringing structural aspects over the statistical methods of characterization. In this paper, we propose a method of characterization of the image by the graph that uses points of interest detected by the FAST algorithm to construct the structure of graphs of characterization. Thus the image similarity transforms into a problem of graphs matching. We then describe the advantage offered by this method over conventional characterization approaches.
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