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Saliency-Based Artistic Abstraction With Deep Learning and Regression Trees

机译:具有深度学习和回归树的基于显着性的艺术抽象

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摘要

The Abstraction in art often reflects human perception-areas of an artwork that hold the observer's gaze longest will generally be more detailed, while peripheral areas are abstracted, just as they are mentally abstracted by humans' physiological visual process. The authors' artistic abstraction tool, Salience Stylize, uses Deep Learning to predict the areas in an image that the observer's gaze will be drawn to, which informs the system about which areas to keep the most detail in and which to abstract most. The planar abstraction is done by a Random Forest Regressor, splitting the image into large planes and adding more detailed planes as it progresses, just as an artist starts with tonally limited masses and iterates to add fine details, then completed with our stroke engine. The authors evaluated the aesthetic appeal and effectiveness of the detail placement in the artwork produced by Salience Stylize through two user studies with 30 subjects. (C) 2017 Society for Imaging Science and Technology.
机译:艺术中的抽象通常反映出人类的感知区域,即持有观察者凝视时间最长的艺术品的区域通常会更加详细,而外围区域则被抽象化,就像它们是通过人类的生理视觉过程从精神上抽象出来的一样。作者的艺术抽象工具Salience Stylize使用深度学习来预测观察者的目光将被吸引到的图像中的区域,这将告知系统哪些区域最详细,哪些抽象最多。平面抽象是由随机森林回归器完成的,将图像分成大平面,并在进行过程中添加更详细的平面,就像艺术家从有限的质量开始,然后迭代以添加精美的细节,然后由我们的笔画引擎完成。作者通过对30个主题的两项用户研究,评估了Salience Stylize制作的艺术品中的美学吸引力和细节放置的有效性。 (C)2017年影像科学与技术学会。

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  • 来源
    《Journal of Imaging Science and Technology》 |2017年第6期|060402.1-060402.9|共9页
  • 作者单位

    Simon Fraser Univ, 250-13450 102nd Ave, Surrey, BC V3T 0A3, Canada;

    Simon Fraser Univ, 250-13450 102nd Ave, Surrey, BC V3T 0A3, Canada;

    Simon Fraser Univ, 250-13450 102nd Ave, Surrey, BC V3T 0A3, Canada;

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