发明名称 TRAINING AN IMAGE PROCESSING NEURAL NETWORK WITHOUT HUMAN SELECTION OF FEATURES
摘要 A method for training an image processing neural network without human selection of features may include providing a training set of images labeled with two or more classifications, providing an image processing toolbox with image transforms that can be applied to the training set, generating a random set of feature extraction pipelines, where each feature extraction pipeline includes a sequence of image transforms randomly selected from the image processing toolbox and randomly selected control parameters associated with the sequence of image transforms. The method may also include coupling a first stage classifier to an output of each feature extraction pipeline and executing a genetic algorithm to conduct genetic modification of each feature extraction pipeline and train each first stage classifier on the training set, and coupling a second stage classifier to each of the first stage classifiers in order to increase classification accuracy.
申请公布号 US2013266214(A1) 申请公布日期 2013.10.10
申请号 US201313857909 申请日期 2013.04.05
申请人 BRIGHHAM YOUNG UNIVERSITY 发明人 LILLYWHITE KIRT DWAYNE;LEE DAH-JYE
分类号 G06K9/62 主分类号 G06K9/62
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