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Stacked Convolutional Auto-Encoders for Hierarchical Feature Extraction

机译:用于分层特征提取的堆叠卷积自动编码器

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We present a novel convolutional auto-encoder (CAE) for unsupervised feature learning. A stack of CAEs forms a convolutional neural network (CNN). Each CAE is trained using conventional on-line gradient descent without additional regularization terms. A max-pooling layer is essential to learn biologically plausible features consistent with those found by previous approaches. Initializing a CNN with filters of a trained CAE stack yields superior performance on a digit (MNIST) and an object recognition (CIFAR10) benchmark.
机译:我们为无监督的特征学习提供了一种新型卷积自动编码器(CAE)。一堆caces形成卷积神经网络(CNN)。每个CAE使用传统的在线梯度下降训练,而无需额外的正则化术语。最大池层对于学习与先前方法发现的那些符合的功能至关重要。用训练的CAE堆栈的滤波器初始化CNN,在数字(MNIST)上具有卓越的性能和对象识别(CIFAR10)基准测试。

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