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SNMFCA: Supervised NMF-Based Image Classification and Annotation

机译:SNMFCA:基于NMF的受监督图像分类和注释

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摘要

In this paper, we propose a novel supervised nonnegative matrix factorization-based framework for both image classification and annotation. The framework consists of two phases: training and prediction. In the training phase, two supervised nonnegative matrix factorizations for image descriptors and annotation terms are combined to identify the latent image bases, and to represent the training images in the bases space. These latent bases can capture the representation of the images in terms of both descriptors and annotation terms. Based on the new representation of training images, classifiers can be learnt and built. In the prediction phase, a test image is first represented by the latent bases via solving a linear least squares problem, and then its class label and annotation can be predicted via the trained classifiers and the proposed annotation mapping model. In the algorithm, we develop a three-block proximal alternating nonnegative least squares algorithm to determine the latent image bases, and show its convergent property. Extensive experiments on real-world image data sets suggest that the proposed framework is able to predict the label and annotation for testing images successfully. Experimental results have also shown that our algorithm is computationally efficient and effective for image classification and annotation.
机译:在本文中,我们为图像分类和注释提出了一种新颖的基于监督的非负矩阵分解框架。该框架包括两个阶段:训练和预测。在训练阶段,将两个监督的图像描述符和注释项的非负矩阵分解组合在一起,以识别潜像库,并在库空间中表示训练图。这些潜在的基础可以捕获描述符和注释方面的图像表示。基于训练图像的新表示,可以学习和建立分类器。在预测阶段,首先通过解决线性最小二乘问题,用潜在基表示测试图像,然后可以通过训练有素的分类器和建议的注释映射模型来预测其图像类别和注释。在该算法中,我们开发了一种三块近端交替非负最小二乘算法来确定潜像基,并显示其收敛性。对真实世界图像数据集的大量实验表明,所提出的框架能够预测成功测试图像的标签和注释。实验结果还表明,我们的算法在图像分类和注释方面具有高效的计算能力。

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