Content-based hierarchical classification of vacation images

Aditya Vailaya, Mário A. T. Figueiredo, Anil K. Jain, HongJiang Zhang
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引用次数: 187

Abstract

Grouping images into (semantically) meaningful categories using low level visual features is a challenging and important problem in content based image retrieval. Using binary Bayesian classifiers, we attempt to capture high level concepts from low level image features under the constraint that the test image does belong to one of the classes of interest. Specifically, we consider the hierarchical classification of vacation images; at the highest level, images are classified into indoor/outdoor classes, outdoor images are further classified into city/landscape classes, and finally, a subset of landscape images is classified into sunset, forest, and mountain classes. We demonstrate that a small codebook (the optimal size of codebook is selected using a modified MDL criterion) extracted from a vector quantizer can be used to estimate the class-conditional densities of the observed features needed for the Bayesian methodology. On a database of 6931 vacation photographs, our system achieved an accuracy of 90.5% for indoor vs. outdoor classification, 95.3% for city vs. landscape classification, 96.6% for sunset vs. forest and mountain classification, and 95.5% for forest vs. mountain classification. We further develop a learning paradigm to incrementally train the classifiers as additional training samples become available and also show preliminary results for feature size reduction using clustering techniques.
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基于内容的度假图像分层分类
在基于内容的图像检索中,利用低级视觉特征将图像分组为语义上有意义的类别是一个具有挑战性和重要的问题。使用二进制贝叶斯分类器,我们尝试在测试图像确实属于感兴趣的类之一的约束下,从低级图像特征中捕获高级概念。具体来说,我们考虑了度假图像的分层分类;在最高层次上,将图像分为室内/室外类,室外图像进一步分为城市/景观类,最后将景观图像子集分为日落类、森林类和山地类。我们证明了从矢量量化器中提取的小码本(使用改进的MDL准则选择最佳码本大小)可用于估计贝叶斯方法所需的观察特征的类条件密度。在一个包含6931张假期照片的数据库中,我们的系统在室内与室外分类上的准确率为90.5%,在城市与景观分类上的准确率为95.3%,在日落与森林和山地分类上的准确率为96.6%,在森林与山地分类上的准确率为95.5%。我们进一步开发了一种学习范式,随着可用的额外训练样本的增加,逐步训练分类器,并展示了使用聚类技术减少特征大小的初步结果。
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