高斯函数的形状作为特征描述符

Liyu Gong, Tianjiang Wang, Fang Liu
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引用次数: 43

摘要

本文介绍了一种基于信号概率密度函数形状(SOSPDF)的通用特征描述子设计框架的高斯形状特征描述子(SOG)。SOSPDF以信号的概率密度函数(pdf)的形状为特征。在这种观点下,计算机视觉中常用的直方图和区域协方差都是SOSPDF特征。直方图以离散逼近的方式描述SOSPDF。区域协方差将SOSPDF描述为一个不完全参数化的多元高斯分布。我们提出的SOG描述符是一个全参数化的高斯描述符,因此它具有区域协方差的所有优点,并且更加有效。此外,我们发现sog形成李群。基于李群理论,提出了一种SOG的距离度量。我们在跟踪问题中测试SOG特性。实验表明,与区域协方差法相比,跟踪效果更好。此外,实验结果表明,SOG特征试图获取更多有用的信息,对噪声的敏感性较低。
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Shape of Gaussians as feature descriptors
This paper introduces a feature descriptor called shape of Gaussian (SOG), which is based on a general feature descriptor design framework called shape of signal probability density function (SOSPDF). SOSPDF takes the shape of a signal's probability density function (pdf) as its feature. Under such a view, both histogram and region covariance often used in computer vision are SOSPDF features. Histogram describes SOSPDF by a discrete approximation way. Region covariance describes SOSPDF as an incomplete parameterized multivariate Gaussian distribution. Our proposed SOG descriptor is a full parameterized Gaussian, so it has all the advantages of region covariance and is more effective. Furthermore, we identify that SOGs form a Lie group. Based on Lie group theory, we propose a distance metric for SOG. We test SOG features in tracking problem. Experiments show better tracking results compared with region covariance. Moreover, experiment results indicate that SOG features attempt to harvest more useful information and are less sensitive against noise.
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