Li Siyuan, Liu Yuan, Zeng Jiafu, Liu Yepeng, Li Yue, Xie Qingsong
School of Computer Science and Technology, Shandong Technology and Business University, Yantai, 264005, China.
Shandong Future Intelligent Financial Engineering Laboratory, Yantai, 264005, China.
Sci Rep. 2024 Jul 2;14(1):15152. doi: 10.1038/s41598-024-65886-5.
Removing texture while preserving the main structure of an image is a challenging task. To address this, this paper propose an image smoothing method based on global gradient sparsity and local relative gradient constraints optimization. To reduce the interference of complex texture details, adopting a multi-directional difference constrained global gradient sparsity decomposition method, which provides a guidance image with weaker texture detail gradients. Meanwhile, using the luminance channel as a reference, edge-aware operator is constructed based on local gradient constraints. This operator weakens the gradients of repetitive and similar texture details, enabling it to obtain more accurate structural information for guiding global optimization of the image. By projecting multi-directional differences onto the horizontal and vertical directions, a mapping from multi-directional differences to bi-directional gradients is achieved. Additionally, to ensure the consistency of measurement results, a multi-directional gradient normalization method is designed. Through experiments, we demonstrate that our method exhibits significant advantages in preserving image edges compared to current advanced smoothing methods.
在保留图像主要结构的同时去除纹理是一项具有挑战性的任务。为了解决这个问题,本文提出了一种基于全局梯度稀疏性和局部相对梯度约束优化的图像平滑方法。为了减少复杂纹理细节的干扰,采用多方向差分约束的全局梯度稀疏分解方法,该方法提供了一个纹理细节梯度较弱的引导图像。同时,以亮度通道为参考,基于局部梯度约束构建边缘感知算子。该算子削弱了重复和相似纹理细节的梯度,使其能够获得更准确的结构信息来指导图像的全局优化。通过将多方向差分投影到水平和垂直方向,实现了从多方向差分到双向梯度的映射。此外,为了确保测量结果的一致性,设计了一种多方向梯度归一化方法。通过实验,我们证明了与当前先进的平滑方法相比,我们的方法在保留图像边缘方面具有显著优势。