利用伽玛分布对Gabor滤波器的幅度进行统计建模,以有效地进行车辆验证

Jing-Ming Guo, Heri Prasetyo
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引用次数: 0

摘要

基于静止图像特征的车辆验证可以看作是监督分类问题。图像描述符直接从给定图像的Gabor过滤输出统计数据中派生出来。一般来说,Gabor滤波输出的幅度是按照高斯分布建模的。因此,图像描述符由Gabor滤波器幅度的均值、标准差和偏度值组成[5,6,8]。然而,Arrospide等人[9]认为偏度参数对类分离没有意义。然后,仅使用Gabor输出分布的均值和标准差来定义特征描述符,从而导致较低的特征维数。根据我们的观察,Gabor滤波器的幅度有很强的服从Gamma分布的倾向。我们提出了一种基于Gamma分布的极大似然估计的纹理描述符,用于有效的车辆验证任务。实验结果表明,该方法在几种分类器技术下均优于原方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical modeling of the Gabor filter magnitude using Gamma distribution for effectively vehicle verification
Vehicle verification based on still image feature can be considered as supervised classification problem. An image descriptor is directly derived from the Gabor filtered output statistics of a given image. In general, the magnitude of the Gabor filtered output is modeled as the Gaussian distribution. So that the image descriptor is composed from mean, standard deviation, and skewness value of the Gabor filter magnitude [5, 6, 8]. However, Arrospide et. al. [9] argued that the skewness parameter is not meaningful for the class separation. Then, the feature descriptor is well defined only using mean and standard deviation of Gabor output distribution which leads to lower feature dimensionality. Based on our observation, the magnitude of the Gabor filter has strong tendency to follow the Gamma distribution. We propose a new texture descriptor derived from the maximum likelihood estimation of the Gamma distribution for effectively vehicle verification task. Experimental result shows that the proposed method is superior to the former approach under several classifier techniques.
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