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Learning Hierarchical Bag of Words Using Naive Bayes Clustering

机译:使用Naive Bayes聚类学习分层袋的单词

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Image analysis tasks such as classification, clustering, detection, and retrieval are only as good as the feature representation of the images they use. Much research in computer vision is focused on finding better or semantically richer image representations. Bag of visual Words (BoW) is a representation that has emerged as an effective one for a variety of computer vision tasks. BoW methods traditionally use low level features. We have devised a strategy to use these low level features to create "higher level" features by making use of the spatial context in images. In this paper, we propose a novel hierarchical feature learning framework that uses a Naive Bayes Clustering algorithm to convert a 2-D symbolic image at one level to a 2-D symbolic image at the next level with richer features. On two popular datasets, Pascal VOC 2007 and Caltech 101, we empirically show that classification accuracy obtained from the hierarchical features computed using our approach is significantly higher than the traditional SIFT based BoW representation of images even though our image representations are more compact.
机译:图像分析任务,如分类,聚类,检测和检索只能与他们使用的图像的特征表示一样好。计算机愿景的许多研究专注于找到更好或语义上更丰富的图像表示。袋视觉词语(弓)是一个表示作为各种计算机视觉任务的有效的表示。弓形方法传统上使用低级功能。我们设计了一种使用这些低级功能来使用这些低级功能来创建“更高级别”功能的策略来使用图像中的空间上下文。在本文中,我们提出了一种新颖的分层特征学习框架,该框架使用Naive Bayes聚类算法在一个级别将2-D符号图像转换为在下一级别的2-D符号图像,其具有更丰富的特征。在两个流行的数据集,Pascal VOC 2007和CALTECH 101上,我们经验证明,从使用我们的方法计算的分层特征获得的分类准确性显着高于传统的基于SIFT的弓形弓表示,即使我们的图像表示更紧凑。

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