Super-Resolution Reconstruction Algorithm of Target Image Based on Learning Background

Shuning Li, Huasheng Zhu, Kaiwen Zha, Wei Li
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Abstract

In the realistic video monitoring environment, the traditional super-resolution reconstruction technique based on prior knowledge is not suitable for monitoring the super-resolution reconstruction of the image. In this paper, a super-resolution reconstruction algorithm of target image based on learning background is proposed. The first part of the algorithm is to design a non-manifolds consistency algorithm for super-resolution reconstruction of the whole video surveillance image. The second part of the algorithm, from video surveillance images in the background, to select the characteristics significantly, and the relatively fixed background. And then to study the background, study a mapping function can improve image quality. Finally, the mapping function to restoration image of interested target, so that we can better recover the structure and texture of target image details. The experimental results show that the proposed algorithm improves both the objective evaluation index and the subjective visual effect.
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基于学习背景的目标图像超分辨率重建算法
在现实的视频监控环境中,传统的基于先验知识的超分辨率重建技术不适合监控图像的超分辨率重建。本文提出了一种基于学习背景的目标图像超分辨率重建算法。算法的第一部分是设计一种非流形一致性算法,用于整个视频监控图像的超分辨率重建。算法的第二部分,从视频监控图像的背景中,选择特征显著,且背景相对固定的图像。然后对背景进行研究,研究一种可以提高图像质量的映射函数。最后,利用映射函数对感兴趣的目标图像进行恢复,从而更好地恢复目标图像的结构和纹理细节。实验结果表明,该算法既提高了客观评价指标,又提高了主观视觉效果。
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