An Efficient Pattern Recognition Approach with Applications

Patrick Hall,Jorge Silva, Ilknur Kaynar Kabul, Keith Holdaway, Alex Chien

semanticscholar(2016)

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摘要
This paper presents supervised and unsupervised pattern recognition techniques that use Base SAS® and SAS® Enterprise MinerTM software. A simple preprocessing technique creates many small image patches from larger images. These patches encourage the learned patterns to have local scale, which follows well-known statistical properties of natural images. In addition, these patches reduce the number of features that are required to represent an image and can decrease the training time that algorithms need in order to learn from the images. If a training label is available, a classifier is trained to identify patches of interest. In the unsupervised case, a stacked autoencoder network is used to generate a dictionary of representative patches, which can be used to locate areas of interest in new images. This technique can be applied to pattern recognition problems in general, and this paper presents examples from the oil and gas industry and from a solar power forecasting application.
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