Multiclass Learning for Writer Identification Using Error-Correcting Codes

Document Analysis Systems(2014)

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摘要
Writer Identification can be seen as a multi-class learning problem where number of writers are different classes. One of the fundamental approaches to solve a multi-class problemis by breaking it into binary classification tasks. In this work weare proposing a generic approach for multi-class classification using an ensemble of binary classifiers. We assign a distributedoutput representation to each class in the form of codewords andan ensemble of binary classifiers is created where each classifierpredicts one bit of the codeword. Actual label is determined using Belief Propagation algorithm on a graph constructed from the code matrix. We have performed experiments on a new publiclyavailable IBM-UB-1 dataset for the task of writer identification to show the efficacy of our method.
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关键词
belief networks,graph theory,handwritten character recognition,image recognition,learning (artificial intelligence),pattern classification,IBM-UB-1 dataset,belief propagation algorithm,binary classification tasks,code matrix,codewords,error-correcting codes,graph,multiclass classification,multiclass learning problem,writer identification,Writer Identification,multi-class learning
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