Adaptive Fuzzy Network based Transfer Learning for Image Classification

Rishil Shah
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引用次数: 2

Abstract

With the introduction of Convolutional Neural Networks (CNN) the computer vision domain has witnessed a tremendous increase in novel architectures achieving results on vision tasks that exceed human performance. Neuro-fuzzy hybrid systems are a great avenue for enhancing the interpretability of neural networks. A lot of research in recent times has explored the technique of transfer learning applied to CNNs for computer vision applications. However, a pre-trained deep convolutional network with a subsequent adaptive fuzzy based network is yet to be explored. Hence in this paper, a novel adaptive fuzzy network based convolutional network is proposed. The paper focuses on using non-hybrid learning based adaptive fuzzy networks in conjunction with pre-trained convolutional networks for the task of image classification. The results illustrate the proposed approach eclipses over existing architectures used for image classification.
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基于自适应模糊网络的图像分类迁移学习
随着卷积神经网络(CNN)的引入,计算机视觉领域的新架构有了巨大的增长,在视觉任务上取得了超过人类性能的结果。神经模糊混合系统是提高神经网络可解释性的重要途径。近年来,许多研究都在探索将迁移学习技术应用于cnn的计算机视觉应用。然而,一个预训练的深度卷积网络和随后的自适应模糊网络还有待探索。因此,本文提出了一种基于自适应模糊网络的卷积网络。本文将基于非混合学习的自适应模糊网络与预训练卷积网络相结合用于图像分类。结果表明,该方法优于现有的图像分类结构。
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