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Sensitivity evaluation of dynamic speckle activity measurements using clustering methods

机译:使用聚类方法对动态斑点活性测量进行敏感性评估

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摘要

We evaluate and compare the use of competitive neural networks, self-organizing maps, the expectation-maximization algorithm, K-means, and fuzzy C-means techniques as partitional clustering methods, when the sensitivity of the activity measurement of dynamic speckle images needs to be improved. The temporal history of the acquired intensity generated by each pixel is analyzed in a wavelet decomposition framework, and it is shown that the mean energy of its corresponding wavelet coefficients provides a suited feature space for clustering purposes. The sensitivity obtained by using the evaluated clustering techniques is also compared with the well-known methods of Konishi-Fujii, weighted generalized differences, and wavelet entropy. The performance of the partitional clustering approach is evaluated using simulated dynamic speckle patterns and also experimental data.
机译:我们需要评估和比较竞争性神经网络,自组织图,期望最大化算法,K均值和模糊C均值技术作为分区聚类方法的应用,当动态散斑图像的活动度测量需要有待改进。在小波分解框架中分析了每个像素生成的强度的时间历程,结果表明,其对应的小波系数的平均能量为聚类提供了合适的特征空间。使用评估的聚类技术获得的灵敏度也与Konishi-Fujii的已知方法,加权广义差和小波熵进行了比较。使用模拟的动态散斑图案以及实验数据对分区聚类方法的性能进行了评估。

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