2021
DOI: 10.32604/jai.2021.027154
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Solving the Feature Diversity Problem Based on Multi-Model Scheme

Abstract: Generally, the performance of deep learning models is related to the captured features of training samples. When the training samples belong to different domains, the diverse features may increase the difficulty of training high performance models. In this paper, we built a new framework that generates multiple models on the organized samples to increase the accuracy of classification. Firstly, our framework selects some existing models and trains each of them on organized training sets to get multiple trained… Show more

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