摘要
传统的图像识别方法需要大量有标签样本进行训练,且模型训练难以达到稳定。针对这些问题,结合条件生成网络和信息最大化生成网络的结构优势建立了条件信息卷积生成网络(C-Info-DCGAN)。模型增加图像的类别信息和潜在信息作为输入数据,然后利用Q网络去更好地发挥类别信息和潜在信息对训练的引导作用,并且利用深度卷积网络来加强对图像特征的提取能力。实验结果表明,该方法能够加快模型训练收敛速度,并有效提高图像识别的准确率。
Traditional image recognition methods require a large number of labeled samples for training,and training model is difficult to achieve stability.Aiming at these problems,a Conditional Information Deep Convolution Generative Adversarial Network(C-Info-DCGAN)is established by combining the structural advantages of the conditional generation network and the information maximization generative adversarial network.The model adds the category information and potential information of the image as input data,and then uses the Q network to better play the guiding role of the category information and potential information on training,and uses a deep convolution network to enhance the ability to extract image features.Experimental results show that this method can accelerate the model training convergence speed and effectively improve the accuracy of image recognition.
作者
李鑫
焦斌
林蔚天
LI Xin;JIAO Bin;LIN Weitian(School of Electrical Engineering,Shanghai Dianji University,Shanghai 201306,China;School of Continuing Education,Shanghai Dianji University,Shanghai 200240,China)
出处
《计算机工程与应用》
CSCD
北大核心
2020年第14期191-198,共8页
Computer Engineering and Applications
关键词
生成对抗网络
信息最大化模型
条件模型
深度卷积网络
图像识别
generative adversarial network
information maximization model
conditional model
deep convolution network
image recognition