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Ontology and HMAX Features-based Image Classification using Merged Classifiers

机译:基于本体和HMAX功能的图像分类,使用合并的分类器进行分类

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Bag-of-Viusal-Words (BoVW) model has been widely used in the area of image classification, which rely on building visual vocabulary. Recently, attention has been shifted to the use of advanced architectures which are characterized by multilevel processing. HMAX model (Hierarchical Max-pooling model) has attracted a great deal of attention in image classification. Recent works, in image classification, consider the integration of ontologies and semantic structures is useful to improve image classification. In this paper, we propose an approach of image classification based on ontology and HMAX features using merged classifiers. Our contribution resides in exploiting ontological relationships between image categories in line with training visual-feature classifiers, and by merging the outputs of hypernym-hyponym classifiers to lead to a better discrimination between classes. Our purpose is to improve image classification by using ontologies. Several strategies have been experimented and the obtained results have shown that our proposal improves image classification. Results based our ontology outperform results obtained by baseline methods without ontology. Moreover, the deep learning network Inception-v3 is experimented and compared with our method, classification results obtained by our method outperform Inception-v3 for some image classes.
机译:Viusal-Lords(BOVW)模型已广泛应用于图像分类领域,依靠建立视觉词汇表。最近,注意力已经转移到使用具有多级处理的先进架构。 HMAX模型(分层最大池模型)在图像分类中引起了大量的注意。最近的作品,在图像分类中,考虑本体和语义结构的集成可用于改善图像分类。在本文中,我们提出了一种基于本体和HMAX功能的图像分类方法,使用合并的分类器。我们的贡献驻留在利用培训视觉特征分类器中利用图像类别之间的本体关系,并通过合并超义下义分类器的输出来导致类之间的更好的歧视。我们的目的是通过使用本体提高图像分类。有几种策略已经进行了实验,并且获得的结果表明我们的提案改善了图像分类。结果基于我们的本体优于没有本体的基线方法获得的结果。此外,深入学习网络Inception-V3是通过我们的方法进行实验和比较,通过我们的方法获得的分类结果,以用于某些图像类的Inception-V3。

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