An empirical study of automatic image annotation through Multi-Instance Multi-Label Learning

Liang Peng, Xinshun Xu, G. Wang
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引用次数: 3

Abstract

Although many region based models for image auto-annotation have been proposed recently, their performances are not satisfactory due to the sensitivity to segmentation errors. In this paper, by evaluating two image partition methods and four visual features, we propose a new ensemble method under Multi-Instance Multi-Label (MIML) learning framework which has been proposed recently. The ensemble method combines all the outputs of these separate learning machines trained on different features. The experimental results over Corel images show that the ensemble method is efficient for image auto-annotation and comparable with other methods. In addition, the results show that the region-based image segmentation approach significantly improves the performance of the proposed model.
基于多实例多标签学习的图像自动标注实证研究
尽管近年来提出了许多基于区域的图像自动标注模型,但由于对分割误差的敏感性,其效果并不理想。本文通过评估两种图像分割方法和四种视觉特征,在最近提出的多实例多标签(MIML)学习框架下提出了一种新的集成方法。集成方法将这些在不同特征上训练的独立学习机的所有输出组合在一起。在Corel图像上的实验结果表明,集成方法对图像的自动标注是有效的,并且与其他方法具有可比性。此外,结果表明,基于区域的图像分割方法显著提高了所提模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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