卷积视觉特征学习:一种组合子空间表示视角

M. Teow
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引用次数: 1

摘要

本文的主要贡献是利用经验特征映射分析为理解卷积神经网络(ConvNet)中端到端卷积视觉特征学习提供了一个新的视角。分析是通过一种新的方法,称为组合子空间模型,使用最小卷积神经网络进行的。这种方法使我们能够更好地理解卷积神经网络如何以分层方式学习视觉特征。利用MNIST数据集对手写体数字识别进行了经验特征映射分析实验。实验结果总结了我们提出的使用组合子空间模型来直观理解卷积神经网络中卷积视觉特征学习的方法。
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Convolutional Visual Feature Learning: A Compositional Subspace Representation Perspective
The main contribution of this paper is to provide a new perspective to understand the end-to-end convolutional visual feature learning in a convolutional neural network (ConvNet) using empirical feature map analysis. The analysis is performed through a novel mathod called compositional subspace model using a minimal ConvNet. This method allows us to better understand how a ConvNet learn visual features in a hierarchical manner. A handwritten digit recognition using MNIST dataset is used to experiment the empirical feature map analysis. The experimental results conclude our proposal on using the compositional subspace model to visually understand the convolutional visual feature learning in a ConvNet.
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