Integrating multiple information of active learning for image classification

Haihui Xu, Pengpeng Zhao, Jian Wu, Zhiming Cui, Chengchao Li
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Abstract

In the application of image classification, active learning algorithm can effectively alleviate the efforts of labeling by selecting the most informative instances for user annotation, as well as obtain a satisfactory classifier. Traditional active learning methods do not consider the cost of manual labeling, which is usually regarded as the same. They focus on minimizing the classification error, aiming at improving the classifier performance. However, in fact, the user annotation cost is not equal and changes dynamically. We introduce the value of the information framework to measure the instance informativeness, which including misclassification risk and the cost of user annotation. While the value of information is based on probability over the current classifier, only taking into the labeled examples account, thus it may query the outliers. In order to simultaneously lever the distribution information of a large amount of the remaining unlabeled instances, we use information density to measure the representativeness of the sample. To this end, we propose an integrating multiple information of active learning method for image classification (IMIM), which incorporates the strength of both value of information and information density measure criteria by a heuristic weighting strategy. At last, select the most informative instance by the expected error reduction method. Compared with the state of art method, experimental results on diverse datasets demonstrate the effectiveness of our proposed method.
集成多种主动学习信息进行图像分类
在图像分类的应用中,主动学习算法可以通过选择信息量最大的实例进行用户标注,从而有效地减轻标注的工作量,并获得满意的分类器。传统的主动学习方法不考虑人工标注的成本,这通常被认为是相同的。他们关注于最小化分类误差,旨在提高分类器的性能。但实际上,用户标注成本是不相等的,而且是动态变化的。我们引入信息框架的价值来衡量实例的信息量,包括错误分类风险和用户标注成本。而信息的值是基于当前分类器上的概率,只考虑标记的例子,因此可能会查询离群值。为了同时利用大量剩余未标记实例的分布信息,我们使用信息密度来度量样本的代表性。为此,我们提出了一种多信息集成的图像分类主动学习方法(IMIM),该方法通过启发式加权策略将信息值和信息密度度量标准的强度结合起来。最后,通过期望误差缩减方法选择信息量最大的实例。与现有方法相比,在不同数据集上的实验结果证明了本文方法的有效性。
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