首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Classification of 2-dimensional array patterns: assembling many small neural networks is better than using a large one.
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Classification of 2-dimensional array patterns: assembling many small neural networks is better than using a large one.

机译:二维阵列模式的分类:组装许多小型神经网络比使用大型神经网络更好。

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In many pattern classification/recognition applications of artificial neural networks, an object to be classified is represented by a fixed sized 2-dimensional array of uniform type, which corresponds to the cells of a 2-dimensional grid of the same size. A general neural network structure, called an undistricted neural network, which takes all the elements in the array as inputs could be used for problems such as these. However, a districted neural network can be used to reduce the training complexity. A districted neural network usually consists of two levels of sub-neural networks. Each of the lower level neural networks, called a regional sub-neural network, takes the elements in a region of the array as its inputs and is expected to output a temporary class label, called an individual opinion, based on the partial information of the entire array. The higher level neural network, called an assembling sub-neural network, uses the outputs (opinions) of regional sub-neural networks as inputs, and by consensus derives the label decision for the object. Each of the sub-neural networks can be trained separately and thus the training is less expensive. The regional sub-neural networks can be trained and performed in parallel and independently, therefore a high speed can be achieved. We prove theoretically in this paper, using a simple model, that a districted neural network is actually more stable than an undistricted neural network in noisy environments. We conjecture that the result is valid for all neural networks. This theory is verified by experiments involving gender classification and human face recognition. We conclude that a districted neural network is highly recommended for neural network applications in recognition or classification of 2-dimensional array patterns in highly noisy environments.
机译:在人工神经网络的许多模式分类/识别应用中,要分类的对象由固定大小的统一类型的二维数组表示,该数组对应于相同大小的二维网格的像元。将此类数组中的所有元素作为输入的通用神经网络结构(称为无界神经网络)可用于解决此类问题。但是,可以使用分区神经网络来减少训练的复杂性。分区神经网络通常包含两个级别的亚神经网络。每个较低层的神经网络(称为区域亚神经网络)都将数组区域中的元素作为其输入,并期望根据神经网络的部分信息来输出称为个人意见的临时类别标签。整个数组。更高级别的神经网络,称为组装亚神经网络,使用区域亚神经网络的输出(观点)作为输入,并通过协商一致得出对象的标签决策。每个亚神经网络都可以分别进行训练,因此训练成本较低。可以并行且独立地训练和执行区域亚神经网络,因此可以实现较高的速度。我们在本文中使用一个简单的模型从理论上证明,在嘈杂的环境中,分区神经网络实际上比无分区神经网络更稳定。我们推测结果对于所有神经网络都是有效的。涉及性别分类和人脸识别的实验验证了这一理论。我们得出结论,强烈建议在神经网络应用中在高噪声环境中识别或分类二维阵列模式时使用分区神经网络。

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