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A novel image classification method based on manifold learning and Gaussian mixture model

机译:基于流形学习和高斯混合模型的图像分类新方法

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Image classification is one of the important parts of digital image processing. We propose a novel feature space-based image classification method by combining manifold learning and mixture model. In this paper, the process of image classification can be viewed as two parts: a coarse-grained classification and a fine-grained classification. In the coarse-grained classification, we apply the ISOMAP (Isometric Mapping) algorithm to do a dimensional reduction based on manifold learning. Thus, solving the classification problem is transformed from a high-dimensional data space to a low-dimensional feature space. And then, during the fine-grained classification, we present an improved EM algorithm of finite Gaussian mixture model to do clustering. Experimental results have demonstrated that the proposed method performs well in both accuracy and time. Additionally, our algorithm is robust to some extent.
机译:图像分类是数字图像处理的重要部分之一。通过结合流形学习和混合模型,提出了一种新颖的基于特征空间的图像分类方法。在本文中,图像分类的过程可以分为两个部分:粗粒度分类和细粒度分类。在粗粒度分类中,我们应用ISOMAP(等距映射)算法基于流形学习进行尺寸缩减。因此,解决分类问题从高维数据空间转换为低维特征空间。然后,在细粒度分类中,我们提出了一种改进的有限高斯混合模型的EM算法进行聚类。实验结果表明,该方法在准确度和时间上均表现良好。另外,我们的算法在某种程度上很健壮。

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