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首页> 外文期刊>The Visual Computer >Structure revealing of low-light images using wavelet transform based on fractional-order denoising and multiscale decomposition
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Structure revealing of low-light images using wavelet transform based on fractional-order denoising and multiscale decomposition

机译:基于分数级去噪和多尺度分解,使用小波变换的低光图像的结构揭示

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摘要

Images captured in low-light environment often lower its quality due to low illumination and high noise. Hence, the low visibility of images notably degrades the overall performance of multimedia and vision systems that are typically designed for high-quality inputs. To resolve this problem, numerous algorithms have been proposed in extant literature to improve the visual quality of low-light images. However, existing approaches are not good at improving overexposed portions and produce unnecessary distortion, which leads to poor visibility in images. Therefore, in this paper, a new model is proposed to prevent overenhancement, handle uneven illumination, and suppress noise in underexposed images. Firstly, the input image is converted into HSV color space. Then, the obtained V component is decomposed into high- and low-frequency subbands using the dual-tree complex wavelet transform. Secondly, a denoised model based on fractional-order anisotropic diffusion is applied on high-pass subbands. Thirdly, multiscale decomposition is used to extract more details from low-pass subbands, and inverse transformation is performed to compute final V. Next, sigmoid function and tone mapping are used on V-channel to prevent data loss and achieve robust results. Finally, the image is reconstructed and converted to RGB color space to achieve enhanced performance. Comparative experimental statistics show that the proposed method achieves high efficacy and outperforms the traditional approaches in terms of overall performance.
机译:在低光环境中捕获的图像通常由于低的照明和高噪声而降低了其质量。因此,图像的低可见度显着降低了通常设计用于高质量输入的多媒体和视觉系统的整体性能。为了解决这个问题,已经在现存文献中提出了许多算法,以提高低光图像的视觉质量。然而,现有方法不擅长改善过度曝光的部分并产生不必要的失真,这导致图像的可见性差。因此,在本文中,提出了一种新模型来防止过度处理,处理不均匀照明,并抑制曝光图像中的噪声。首先,输入图像被转换为​​HSV颜色空间。然后,使用双树复合小波变换将所获得的V分量分解成高频和低频子带。其次,基于分数阶各向异性扩散的去噪模型应用于高通子带。第三,多尺度分解用于从低通子带中提取更多细节,并且执行逆变换以计算最终V.下一步,在V频道上使用SIGMOID函数和音调映射,以防止数据丢失并实现稳健的结果。最后,重建图像并转换为RGB颜色空间以实现增强的性能。比较实验统计表明,在整体性能方面,该方法实现了高效力,优于传统方法。

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