Download PDFOpen PDF in browserNovel Deep Learning Architectures: Classification Accuracy ImprovementEasyChair Preprint 111020 pages•Date: June 8, 2019AbstractIn future, emotion classification, object classification etc by machines will play an important role. In this research paper, we proposed a series connection of Convolutional Neural Network (CNN) and Auto-Encoder (AE) for classification problems. We proposed a total of three architectures. We applied these architectures for emotion classification. Among the three architectures, two architectures are trained with JAFFE ( Japanese Female Facial Expressions), remaining one architecture was trained with Berlin Database of Emotional Speech. We attained better classification accuracy than earlier efforts. We expect that such architectures will provide better classification accuracy in other applications also Keyphrases: Auto-encoders, Classification, Convolutional Neural Networks, emotion
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