基于多模态半监督学习模型的异构图像特征集成

Xiao Cai, F. Nie, Weidong (Tom) Cai, Heng Huang
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引用次数: 114

摘要

随着互联网的发展和图像数据库规模的增长,自动图像分类变得越来越重要。虽然图像分类可以表述为一个典型的多类分类问题,但现实世界的图像提出了两个主要的挑战。一方面,虽然使用更多的标记训练数据可以提高预测性能,但获得图像标签是一个耗时且有偏见的过程。另一方面,人们提出了越来越多的视觉描述符来描述图像中出现的物体和场景,不同的特征描述了视觉特征的不同方面。因此,如何整合异构的视觉特征进行半监督学习是对大规模图像数据进行分类的关键。在本文中,我们提出了一种新的方法,通过对未标记和未分割的图像进行多模态半监督分类来整合异构特征。本文提出的自适应多模态半监督分类(AMMSS)算法将每一种特征作为一种模态,利用大量未标记的数据信息,同时学习一个共同的类指标矩阵和不同模态(图像特征)的权值。
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Heterogeneous Image Features Integration via Multi-modal Semi-supervised Learning Model
Automatic image categorization has become increasingly important with the development of Internet and the growth in the size of image databases. Although the image categorization can be formulated as a typical multi-class classification problem, two major challenges have been raised by the real-world images. On one hand, though using more labeled training data may improve the prediction performance, obtaining the image labels is a time consuming as well as biased process. On the other hand, more and more visual descriptors have been proposed to describe objects and scenes appearing in images and different features describe different aspects of the visual characteristics. Therefore, how to integrate heterogeneous visual features to do the semi-supervised learning is crucial for categorizing large-scale image data. In this paper, we propose a novel approach to integrate heterogeneous features by performing multi-modal semi-supervised classification on unlabeled as well as unsegmented images. Considering each type of feature as one modality, taking advantage of the large amount of unlabeled data information, our new adaptive multi-modal semi-supervised classification (AMMSS) algorithm learns a commonly shared class indicator matrix and the weights for different modalities (image features) simultaneously.
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