Improved scene classification using efficient low-level features and semantic cues
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摘要
Prior research in scene classification has focused on mapping a set of classic low-level vision features to semantically meaningful categories using a classifier engine. In this paper, we propose improving the established paradigm by using a simplified low-level feature set to predict multiple semantic scene attributes that are integrated probabilistically to obtain a final indoor/outdoor scene classification. An initial indoor/outdoor prediction is obtained by classifying computationally efficient, low-dimensional color and wavelet texture features using support vector machines. Similar low-level features can also be used to explicitly predict the presence of semantic features including grass and sky. The semantic scene attributes are then integrated using a Bayesian network designed for improved indoor/outdoor scene classification.
论文关键词:Scene classification,Wavelets,Support vector machines,Semantic features,Bayesian networks
论文评审过程:Received 10 September 2003, Revised 8 March 2004, Accepted 8 March 2004, Available online 10 May 2004.
论文官网地址:https://doi.org/10.1016/j.patcog.2004.03.003