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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Unsupervised Nearest Neighbors Clustering With Application to Hyperspectral Images
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Unsupervised Nearest Neighbors Clustering With Application to Hyperspectral Images

机译:无监督最近邻聚类在高光谱图像中的应用

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摘要

We address the problem of unsupervised clustering of multidimensional data when the number of clusters is not known a priori. The proposed iterative approach is a stochastic extension of the density-based clustering (knnclust) method which randomly assigns objects to clusters by sampling a posterior class label distribution. In our approach, contextual class-conditional distributions are estimated based on a nearest neighbors graph, and are iteratively modified to account for current cluster labeling. Posterior probabilities are also slightly reinforced to accelerate convergence to a stationary labeling. A stopping criterion based on the measure of clustering entropy is defined thanks to the Kozachenko-Leonenko differential entropy estimator, computed from current class-conditional entropies. One major advantage of our approach relies in its ability to provide an estimate of the number of clusters present in the data set. The application of our approach to the clustering of real hyperspectral image data is considered. Our algorithm is compared with other unsupervised clustering approaches, namely affinity propagation (ap), knnclust and Non Parametric Stochastic Expectation Maximization (npsem), and is shown to improve the correct classification rate in most experiments.
机译:当先验未知簇数时,我们将解决多维数据无监督聚类的问题。所提出的迭代方法是基于密度的聚类(knnclust)方法的随机扩展,该方法通过采样后验类标签分布将对象随机分配给聚类。在我们的方法中,基于最近邻居图估计上下文的类条件分布,并对其进行迭代修改以解决当前的聚类标记。后验概率也略有增强,以加速收敛到固定标签。借助基于当前类别条件熵计算出的Kozachenko-Leonenko微分熵估计器,可以定义基于聚类熵测度的停止准则。我们方法的一个主要优点在于它能够估计数据集中存在的簇数。考虑了我们的方法在实际高光谱图像数据聚类中的应用。将我们的算法与其他无监督聚类方法(即亲和力传播(ap),knnclust和非参数随机期望最大化(npsem))进行了比较,并证明在大多数实验中均能提高正确的分类率。

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