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Research on Inner Knuckle Pattern Recognition Method Based on Convolutional Neural Network

机译:基于卷积神经网络的内关节模式识别方法研究

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In this paper, the hand inner knuckle pattern is the research object, the hand image is preprocessed by binarization, morphological processing, contour extraction, corner positioning, finger separation and knuckle ROI extraction. Then normalize the region of interest and form a two-dimensional matrix into the convolutional neural network for feature extraction. Finally we used the fully connected layer and the Softmax for classification and recognition. And studied the learning rate, the convolution kernels number, the neurons number in the fully connected layer, the convolutional layers number in the network and the impact of different optimization algorithms on the recognition results, obtain the best network parameters. Accroding to the experimental test and analysis, the recognition rate of the inner knuckle pattern recognition method based on convolutional neural network reached 95.2%, which has good application value.
机译:在本文中,手内关节图案是研究对象,通过二值化,形态学加工,轮廓提取,角定位,手指分离和关节投资回报率来预处理。然后将感兴趣区域归一化并形成二维矩阵到卷积神经网络中以进行特征提取。最后,我们使用完全连接的图层和Softmax进行分类和识别。并研究了学习速率,卷积核数,完全连接层中的神经元数,网络中的卷积层数以及不同优化算法对识别结果的影响,获得了最佳的网络参数。对实验测试和分析的认可,基于卷积神经网络的内关节图案识别方法的识别率达到95.2%,具有良好的应用价值。

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