一种改进的基于gmm的监督语义图像标注方法

Fangfang Yang, Fei Shi, Jiajun Wang
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引用次数: 8

摘要

自动图像标注是实现基于语义的图像检索的关键。本文将图像标注表述为一个有监督的多类标注问题。低级视觉特征和语义概念之间的关系是通过监督贝叶斯学习来发现的。颜色和纹理特征形成两个独立的向量,使用EM算法结合去噪技术从训练集中估计两个独立的高斯混合模型(GMM)作为类密度。计算两个后验概率,并使用它们在不同概念中的排名来确定要注释的图像的标签。对不同底层特性的强调是平衡的。与将颜色和纹理作为一个特征向量的标注方法相比,获得了更好的标注性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved GMM-based method for supervised semantic image annotation
Automatic image annotation is the key to semantic-based image retrieval. In this paper we formulate image annotation as a supervised multi-class labeling problem. The relationship between low-level visual features and semantic concepts is found by supervised Bayesian learning. Color and texture features form two separate vectors, for which two independent Gaussian mixture models (GMM) are estimated from the training set as class densities using the EM algorithm combined with a denoising technique. Two posterior probabilities are calculated, and both their ranks among different concepts are used to determine the labels for the image to be annotated. The emphasis on different low-level features is balanced. Better annotation performance is obtained compared to method that treats color and texture as one feature vector.
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