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Shallow Convolutional Neural Networks for Pattern Recognition Problems

机译:浅卷积神经网络,用于模式识别问题

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Paper describes an investigation of possible usage of shallow (limited by few layers only) convolutional neural networks to solve famous pattern classification problems. Brazilian coffee scenes, SAT-4/SAT-6, MNIST, UC Merced Land Use and CIFAR datasets were tested. It is shown that shallow convolution neural networks with partial training may be effective enough to produce the result close to state-of-the-art deep networks but also limitations are found.
机译:纸张介绍了对可能使用浅(仅限几个层数)卷积神经网络的调查,以解决着名的模式分类问题。巴西咖啡景观,SAT-4 / SAT-6,MNIST,UC MERCED土地使用和CIFAR数据集进行了测试。结果表明,具有部分训练的浅卷积神经网络可能足以产生靠近最先进的深网络的结果,但也发现了限制。

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