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Digital Image Aesthetic Composition Optimization Based on Perspective Tilt Correction

机译:基于透视倾斜校正的数字图像美学组成优化

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In the field of the digital image intelligent aesthetic, many efforts have been made in automatic aesthetic assessment and composition optimization. Comparatively, few studies focus on image tilt correction. In this paper, we propose a novel method for automatically correct image tilt and optimize image visual balance. In our method, the perspective transformation based on Cartesian coordinates is innovatively used to improve the visual balance of the flat image. Meanwhile, in feature extraction, learning-based algorithm is employed as the backbone. In order to further boost the robustness of our method, a novel line segment clustering detection algorithm (LSCD) is proposed to detect line features. Then, the line features are used to calculate the tilt compensation angle. The LSCD algorithm can effectively make up for the defects of the traditional Hough transform line detection algorithm. We perform multiple experiments using images to qualitatively and quantitative verify the scientificity and validity of the proposed method. Experimental results demonstrate that the optimization performance of our method is significantly better than the state-of-the-art straight line-based and affine transformation-based correction algorithm.
机译:在数字图像智能审美的领域中,已经在自动审美评估和组成优化方面进行了许多努力。相比之下,很少有研究专注于图像倾斜校正。在本文中,我们提出了一种自动校正图像倾斜的新方法,并优化图像视觉平衡。在我们的方法中,基于笛卡尔坐标的透视变换是创新的,用于改善平面图像的视觉平衡。同时,在特征提取中,基于学习的算法用作骨干。为了进一步提高我们方法的稳健性,提出了一种新型线段聚类检测算法(LSCD)以检测线特征。然后,线特征用于计算倾斜补偿角度。 LSCD算法可以有效地弥补传统霍夫变换线检测算法的缺陷。我们使用图像进行多次实验,以定性地和定量验证所提出的方法的科学性和有效性。实验结果表明,我们的方法的优化性能明显优于最先进的直线和基于仿射变换的校正算法。

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