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A Method for Improving CNN-Based Image Recognition Using DCGAN 被引量:13
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作者 Wei Fang Feihong Zhang +1 位作者 Victor S.Sheng yewen ding 《Computers, Materials & Continua》 SCIE EI 2018年第10期167-178,共12页
Image recognition has always been a hot research topic in the scientific community and industry.The emergence of convolutional neural networks(CNN)has made this technology turned into research focus on the field of co... Image recognition has always been a hot research topic in the scientific community and industry.The emergence of convolutional neural networks(CNN)has made this technology turned into research focus on the field of computer vision,especially in image recognition.But it makes the recognition result largely dependent on the number and quality of training samples.Recently,DCGAN has become a frontier method for generating images,sounds,and videos.In this paper,DCGAN is used to generate sample that is difficult to collect and proposed an efficient design method of generating model.We combine DCGAN with CNN for the second time.Use DCGAN to generate samples and training in image recognition model,which based by CNN.This method can enhance the classification model and effectively improve the accuracy of image recognition.In the experiment,we used the radar profile as dataset for 4 categories and achieved satisfactory classification performance.This paper applies image recognition technology to the meteorological field. 展开更多
关键词 DCGAN image recognition CNN SAMPLES
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A New Sequential Image Prediction Method Based on LSTM and DCGAN 被引量:5
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作者 Wei Fang Feihong Zhang +1 位作者 yewen ding Jack Sheng 《Computers, Materials & Continua》 SCIE EI 2020年第7期217-231,共15页
Image recognition technology is an important field of artificial intelligence.Combined with the development of machine learning technology in recent years,it has great researches value and commercial value.As a matter... Image recognition technology is an important field of artificial intelligence.Combined with the development of machine learning technology in recent years,it has great researches value and commercial value.As a matter of fact,a single recognition function can no longer meet people’s needs,and accurate image prediction is the trend that people pursue.This paper is based on Long Short-Term Memory(LSTM)and Deep Convolution Generative Adversarial Networks(DCGAN),studies and implements a prediction model by using radar image data.We adopt a stack cascading strategy in designing network connection which can control of parameter convergence better.This new method enables effective learning of image features and makes predictive models to have greater generalization capabilities.Experiments demonstrate that our network model is more robust and efficient in terms of timing prediction than 3DCNN and traditional ConvLSTM.The sequential image prediction model architecture proposed in this paper is theoretically applicable to all sequential images. 展开更多
关键词 Image prediction LSTM DCGAN
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