The Object Recognition Research Based on Convolution Neural Network

Ruhua Lu, Yalan Li, Yanwen Yan, Weiqiao Yao
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Abstract

Convolution neural networks include convolution computation and feedforward neural networks with depth structure. It is one of the most successful application fields of deep learning algorithm that can learn a lot of mapping relationship between input and output without any precise mathematical expression between input and output. The basic structure of convolutional neural network is input layer, convolution layer, pooling layer, full connection layer and output layer. Some improvements are proposed in this paper. First, a convolution layer and a pool layer are added to the original basic structure. Second, the new structure adopts hybrid pool in the pool stage. Thirdly, the maxout activation function is used in the full connection layer. Finally, based on the data set cifar-10, this paper studies the training and testing of convolutional neural networks for 10 categories of aircraft, horse, bird, ship, deer, dog, frog, automobile, cat and truck. The experimental results show that the accuracy rate of testing is 69.48%. Obviously the testing result is satisfactory.
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基于卷积神经网络的目标识别研究
卷积神经网络包括卷积计算和具有深度结构的前馈神经网络。它是深度学习算法最成功的应用领域之一,它可以学习大量的输入和输出之间的映射关系,而不需要输入和输出之间的任何精确的数学表达式。卷积神经网络的基本结构是输入层、卷积层、池化层、全连接层和输出层。本文提出了一些改进意见。首先,在原有的基本结构上增加卷积层和池层。第二,新结构在池阶段采用混合池。第三,在全连接层使用maxout激活函数。最后,基于cifar-10数据集,对飞机、马、鸟、船、鹿、狗、蛙、汽车、猫、卡车等10个类别的卷积神经网络进行了训练和测试研究。实验结果表明,测试的准确率为69.48%。显然,测试结果令人满意。
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