High-resolution Image Reconstruction by Neural Network and Its Application in Infrared Imaging

被引:0
|
作者
张楠
金伟其
苏秉华
机构
[1] Beijing 100081
[2] Beijing Institute of Technology
[3] China
[4] School of Information Science and Technology
关键词
high resolution; reconstruction; infrared; high frequency component; MAE(mean absolute error); MSE(mean squared error); neural network; linear interpolation; Gaussian low-pass filter;
D O I
暂无
中图分类号
TN911.73 [图像信号处理];
学科分类号
摘要
As digital image techniques have been widely used, the requirements for high-resolution images become increasingly stringent. Traditional single-frame interpolation techniques cannot add new high frequency information to the expanded images, and cannot improve resolution in deed. Multiframe-based techniques are effective ways for high-resolution image reconstruction, but their computation complexities and the difficulties in achieving image sequences limit their applications. An original method using an artificial neural network is proposed in this paper. Using the inherent merits in neural network, we can establish the mapping between high frequency components in low-resolution images and high-resolution images. Example applications and their results demonstrated the images reconstructed by our method are aesthetically and quantitatively (using the criteria of MSE and MAE) superior to the images acquired by common methods. Even for infrared images this method can give satisfactory results with high definition. In addition, a single-layer linear neural network is used in this paper, the computational complexity is very low, and this method can be realized in real time.
引用
收藏
页码:177 / 181
页数:5
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