Parameterization methodology for 2D shape classification by hidden Markov models

M. A. Ferrer-Ballester, J. B. Alonso, S. David, C. Travieso-González
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Abstract

In computer vision, two-dimensional shape classification is a complex and well known topic, often basic for three-dimensional object recognition. Among different classification methods, this paper is focus on those that describe the 2D shape by means of a sequence of d-dimensional vectors which feeds a left to right hidden Markov model (HMM) recogniser. We propose a methodology for featuring the 2D shape with a sequence of vectors that take advantage of the HMM ability to spot the times when the infrequent vectors of the input sequence of vectors occur. This propierty is deduced by the repetition of the same HMM state during the moments in which the infrequent vectors is repeated. These HMM states are called by us synchronism states. The synchronization between the HMM and the input sequence of vectors can be improved thanks to adding an index component to the vectors. We show the recognition rate improvement of our proposal on selected applications.
基于隐马尔可夫模型的二维形状分类参数化方法
在计算机视觉中,二维形状分类是一个复杂而广为人知的话题,通常是三维物体识别的基础。在不同的分类方法中,本文重点研究了用d维向量序列来描述二维形状的分类方法,该方法为从左到右的隐马尔可夫模型(HMM)识别器提供信息。我们提出了一种方法,利用HMM识别输入向量序列中不常见向量出现的时间,利用向量序列来表征二维形状。这一性质是通过在不频繁向量重复的时刻重复相同的HMM状态来推导的。这些HMM状态被我们称为同步状态。通过向矢量添加索引组件,可以提高HMM与矢量输入序列之间的同步性。我们展示了我们的建议在选定应用程序上的识别率提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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