风格化的NFT渐进神经绘画使用笔触预测

P. Ghadekar, Prapti Maheshwari, Raj Shah, Anish Shaha, Vaishnav Sonawane, Vaibhavi Shetty
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引用次数: 0

摘要

在所提出的模型中,展示了一种从图到图的翻译方法,其结果是丰富多彩的和合理的描绘。该版本可以操纵各种艺术品的时尚。该版本在矢量环境中提供了这样一种创造性的制造方法。它还提供了一系列可用于渲染的实际适用的笔画参数。以前的图片到图片翻译结构将解释表述为像素智能预测。这个创造性的版本构建了一个单一的神经渲染器,模仿矢量渲染器的行为。由于普通矢量图像难以区分,因此将脑卒中预后定义为一个因素,探索一种优化中心与绘制结果同源性的方法。在参数搜索上,定位到的感知是零梯度问题。这个版本从最有用交通工具的角度给出了答案。另外对四种特殊策略进行了比较。使用SSIM、RMSE和PSNR等指标来评估图像之间的精细度和相似性。通过这项研究产生的布局似乎是有效的,并且与管理测试一致。
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Stylized NFT Progressive Neural Paintings using Brush Stroke prediction
In the proposed model a picture-to-portray translation approach has been displayed that has consequences in colorful and sensible portrayal. The version can manipulate the fashion of various artworks. The version offers such a creative manufacturing method in a vectored environment. It additionally affords a chain of bodily applicable stroke parameters that may be used for rendering. Previous picture-to-picture translation structures have formulated the interpretation as a pixel-smart prediction. This inventive version builds a singular neural renderer that mimics the conduct of a vector renderer. Because an ordinary vector image isn't distinguishable, it defines the stroke prognosis as a factor in exploration of a method that optimizes the homology between the center and the drawing result. On parameter searching, the perception located is the zero-gradient problem. The version proposes an answer from the angle of most useful transportation. Four special strategies have additionally been compared. Metrics like SSIM, RMSE, and PSNR were used to evaluate the fineness and similarity amongst images. The layout generated via means of this research seems to be effective, and consistent with managed testing.
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