Bootstrap sampling applied to image analysis

F. Ghorbel, C. Banga
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引用次数: 9

Abstract

We present the bootstrap sampling techniques applied to some pattern recognition algorithms. Two important procedures in image analysis are tested: a statistical segmentation based on expectation-maximisation (EM) family algorithms and two methods of invariant features extraction for gray level images. In the first case, the results we obtain show that the bootstrap sample selection method gives better results than the classical one both in the quality of the segmented image and the computing time. In the second case, the computation of the moment invariants (MI) and the analytical Fourier Mellin transform (AFMT) by the bootstrap approach using the Monte Carlo approximations are implemented. We note that this approach gives a stable approximation and reduces considerably the computing time, since we select only a small representative sample from the image. These algorithms are applied to natural image (medical image).<>
自举采样应用于图像分析
介绍了自举采样技术在模式识别算法中的应用。测试了图像分析中的两个重要步骤:基于期望最大化(EM)族算法的统计分割和灰度图像的两种不变特征提取方法。在第一种情况下,我们得到的结果表明,自举样本选择方法在分割图像的质量和计算时间上都优于经典样本选择方法。在第二种情况下,通过使用蒙特卡洛近似的自举方法实现矩不变量(MI)和解析傅里叶梅林变换(AFMT)的计算。我们注意到,这种方法给出了一个稳定的近似,并大大减少了计算时间,因为我们只从图像中选择了一个小的代表性样本。这些算法应用于自然图像(医学图像)
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