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Analysis of Feature Maps Selection in Supervised Learning Using Convolutional Neural Networks

机译:卷积神经网络在监督学习中特征图选择的分析

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Artificial neural networks have been widely used for machine learning tasks such as object recognition. Recent developments have made use of biologically inspired architectures, such as the Convolutional Neural Network. The nature of the Convolutional Neural Network is that each convolutional layer of the network contains a certain number of feature maps or kernels. The number of these used has historically been determined on an ad-hoc basis. We propose a theoretical method for determining the optimal number of feature maps using the dimensions of the feature map or convolutional kernel. We find that the empirical data suggests that our theoretical method works for extremely small receptive fields, but doesn't generalize as clearly to all receptive field sizes. Furthermore, we note that architectures that are pyramidal rather than equally balanced tend to make better use of computational resources.
机译:人工神经网络已广泛用于机器学习任务,例如对象识别。最近的发展已经利用了受生物启发的体系结构,例如卷积神经网络。卷积神经网络的本质是网络的每个卷积层都包含一定数量的特征图或内核。从历史上看,使用的数量是临时确定的。我们提出了一种使用特征图或卷积核的维数确定最佳特征图数量的理论方法。我们发现,经验数据表明,我们的理论方法适用于极小的接收场,但并未对所有的接收场大小都一概而论。此外,我们注意到金字塔式架构而不是均衡式架构倾向于更好地利用计算资源。

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