Semi-supervised emotional classification of color images by learning from cloud

Na Li, Yong Xia, Yuwei Xia
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引用次数: 9

Abstract

Classification of images based on the feelings generated by each image in its reviewers is becoming more and more popular. Due to the difficulty of gathering training data, this task is intrinsically a small-sample learning problem. Hence, the results produced by most existing solutions are less accurate. In this paper, we propose the semi-supervised hierarchical classification (SSHC) algorithm for emotional classification of color images. We extract three groups of features for each classification task and use those features in a two-level classification model that is based on the support vector machine (SVM) and Adaboost technique. To enlarge the training dataset, we employ each training image to retrieve similar images from the Internet cloud and jointly use the manually labeled small dataset and retrieved large but unlabeled dataset to train a classifier via semi-supervised learning. We have evaluated the proposed algorithm against the fuzzy similarity-based emotional classification (FSBEC) algorithm and another supervised hierarchical classification algorithm that does not learn from online images in three bi-class classification tasks, including “warm vs. cool”, “light vs. heavy” and “static vs. dynamic”. Our pilot results suggest that, by learning from the similar images archived in the Internet cloud, the proposed SSHC algorithm can produce more accurate emotional classification of color images.
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基于云学习的彩色图像半监督情感分类
基于每个图像在其评论者中产生的感觉的图像分类正变得越来越流行。由于收集训练数据的困难,该任务本质上是一个小样本学习问题。因此,大多数现有解决方案产生的结果都不太准确。在本文中,我们提出了半监督层次分类(SSHC)算法用于彩色图像的情感分类。我们为每个分类任务提取三组特征,并在基于支持向量机(SVM)和Adaboost技术的两级分类模型中使用这些特征。为了扩大训练数据集,我们利用每个训练图像从互联网云中检索相似的图像,并联合使用人工标记的小数据集和检索到的未标记的大数据集,通过半监督学习训练分类器。我们将所提出的算法与基于模糊相似度的情感分类(FSBEC)算法和另一种不从在线图像中学习的监督分层分类算法进行了对比,在三个双类分类任务中,包括“暖与冷”、“轻与重”和“静态与动态”。我们的实验结果表明,通过学习互联网云中存档的相似图像,所提出的SSHC算法可以对彩色图像进行更准确的情感分类。
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