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Structure Preserving Non-Photorealistic Rendering Framework for Image Abstraction and Stylization of Low-Illuminated and Underexposed Images

机译:保持非黑色拟理渲染框架的结构,用于图像抽象和低发出的曝光和曝光图像的程式化

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摘要

The proposed abstraction framework manipulates the visual-features from low-illuminated and underexposed images while retaining the prominent structural, medium scale details, tonal information, and suppresses the superfluous details like noise, complexity, and irregular gradient. The significant image features are refined at every stage of the work by comprehensively integrating a series of AnshuTMO and NPR filters through rigorous experiments. The work effectively preserves the structural features in the foreground of an image and diminishes the background content of an image. Effectiveness of the work has been validated by conducting experiments on the standard datasets such as Mould, Wang, and many other interesting datasets and the obtained results are compared with similar contemporary work cited in the literature. In addition, user visual feedback and the quality assessment techniques were used to evaluate the work. Image abstraction and stylization applications, constraints, challenges, and future work in the fields of NPR domain are also envisaged in this paper.
机译:所提出的抽象框架从低发光和曝光图像的图像操纵视觉特征,同时保留突出的结构,中尺度细节,色调信息,并抑制噪声,复杂性和不规则梯度等多余细节。通过通过严格的实验全面集成一系列Anshutmo和NPR滤波器,在工作的每个阶段都精制了显着的图像特征。该工作有效地保留了图像前景中的结构特征,并减小了图像的背景内容。通过对模具,王和许多其他有趣的数据集进行的标准数据集进行实验来验证工作的有效性并将获得的结果与文献中引用的类似当代工作进行比较。此外,使用用户视觉反馈和质量评估技术来评估工作。在本文中还设想了图像抽象和程式化应用,限制,挑战和未来工作,在NPR域的字段中也是如此。

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