OPTIMIZATION METHOD FOR INTEGRATION OF CONVOLUTIONAL AND RECURRENT NEURAL NETWORK

K.N. Kassylkassova, Zhanna Yessengaliyeva, G. Urazboev, Ayman Kassylkassova
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Abstract

Abstract In recent years, convolutional neural networks have been widely used in image processing and have shown good results. Particularly useful was their ability to automatically extract image features (textures and shapes of objects). The article proposes a method that improves the accuracy and speed of recognition of an ultra-precise neural network based on image recognition of people’s faces. At first, a recurrent neural network is introduced into the convolutional neural network, thereby studying the characteristics of the image more deeply. Deep image characteristics are studied in parallel using a convolutional and recurrent neural network. In line with the idea of skipping the ResNet convolution layer, a new ShortCut3- ResNet residual module is built. A double optimization model is created to fully optimize the convolution process. A study of the influence of various parameters of a convolutional neural network on network performance is demonstrated, also analyzed using simulation experiments. As a result, the optimal parameters of the convolutional neural network are established. Ex- periments show that the method presented in this paper can study various images of people’s faces regardless of age, gender, and also improves the accuracy of feature extraction and image recognition ability.
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卷积神经网络与循环神经网络集成的优化方法
近年来,卷积神经网络在图像处理中得到了广泛的应用,并取得了良好的效果。特别有用的是它们自动提取图像特征(物体的纹理和形状)的能力。本文提出了一种基于人脸图像识别的超精密神经网络提高识别精度和速度的方法。首先,在卷积神经网络中引入递归神经网络,从而更深入地研究图像的特征。利用卷积神经网络和递归神经网络并行研究深度图像特征。根据跳过ResNet卷积层的想法,构建了一个新的ShortCut3- ResNet残差模块。为了充分优化卷积过程,建立了双优化模型。研究了卷积神经网络的各种参数对网络性能的影响,并通过仿真实验进行了分析。最终确定了卷积神经网络的最优参数。实验表明,本文提出的方法可以对不同年龄、性别的人脸图像进行研究,提高了特征提取的准确性和图像识别能力。
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