针对红外图像成像质量不高、分辨率低的问题,提出稀疏表示超分辨率重建技术.选用不同方向的Sobel算子对样本低分辨率图像进行特征提取,利用提取的特征图像训练高、低分辨率字典.使用同样的方法获得低分辨率目标图像的特征图像,结合低分辨率字典求得目标图像的稀疏系数.依据高、低分辨率图像的结构相似性,通过稀疏系数和高分辨率字典得到重建的高分辨率图像.经过实验验证,该方法能取得较好的超分辨率重建效果.%To solve the problems of low quality and poor resolution of infrared images, super-resolution reconstruction based on sparse representation is put forward. First of all, Sobel operators of different directions are applied to extract the feature of low-resolution images, and the high and low-resolution dictionaries are trained by using the extracted feature images. Then the same way is used to obtain the feature image of low-resolution target image. The sparse coefficient of the target image is obtained through low-resolution dictionary and the feature image. Finally, according to the structural similarity between high and low-resolution images, the high-resolution image can be reconstructed by using the sparse coefficient and high-resolution dictionary. The experiments prove that this method can get a better super-resolution reconstruction effect.
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