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A New Sequential Image Prediction Method Based on LSTM and DCGAN

机译:一种基于LSTM和DCAN的新的连续图像预测方法

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摘要

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.
机译:图像识别技术是人工智能的重要领域。结合近年来机器学习技术的发展,它具有很大的研究价值和商业价值。事实上,单一的识别函数不能再满足人们的需求,准确的图像预测是人们追求的趋势。本文基于长短期内存(LSTM)和深卷积生成的对冲网络(DCGAN),通过使用雷达图像数据来实现预测模型。我们在设计网络连接时采用堆栈级联策略,可以更好地控制参数收敛。这种新方法可以实现图像特征的有效学习,并使预测模型具有更大的泛化能力。实验表明,在比3DCNN和传统的CONMLSTM的定时预测方面,我们的网络模型更加强大和高效。本文提出的顺序图像预测模型架构理论上适用于所有顺序图像。

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