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Sketch Style Recognition, Transfer and Synthesis of Hand-Drawn Sketches

机译:手绘草图的草图样式识别,传递和合成

摘要

Humans have always used sketches to explain the visual world. It is a simple and straight- forward mean to communicate new ideas and designs. Consequently, as in almost every aspect of our modern life, the relatively recent major developments in computer science have highly contributed to enhancing individual sketching experience. The literature of sketch related research has witnessed seminal advancements and a large body of interest- ing work. Following up with this rich literature, this dissertation provides a holistic study on sketches through three proposed novel models including sketch analysis, transfer, and geometric representation.udThe first part of the dissertation targets sketch authorship recognition and analysis of sketches. It provides answers to the following questions: Are simple strokes unique to the artist or designer who renders them? If so, can this idea be used to identify authorship or to classify artistic drawings? The proposed stroke authorship recognition approach is a novel method that distinguishes the authorship of 2D digitized drawings. This method converts a drawing into a histogram of stroke attributes that is discriminative of authorship. Extensive classification experiments on a large variety of datasets are conducted to validate the ability of the proposed techniques to distinguish unique authorship of artists and designers.udThe second part of the dissertation is concerned with sketch style transfer from one free- hand drawing to another. The proposed method exploits techniques from multi-disciplinary areas including geometrical modeling and image processing. It consists of two methods of transfer: stroke-style and brush-style transfer. (1) Stroke-style transfer aims to transfer the style of the input sketch at the stroke level to the style encountered in other sketches by other artists. This is done by modifying all the parametric stroke segments in the input,udso as to minimize a global stroke-level distance between the input and target styles. (2) Brush-style transfer, on the other hand, focuses on transferring a unique brush look of a line drawing to the input sketch. In this transfer stage, we use an automatically constructed input brush dictionary to infer which sparse set of input brush elements are used at each location of the input sketch. Then, a one-to-one mapping between input and target brush elements is learned by sparsely encoding the target sketch with the input brush dictionary.udThe last part of the dissertation targets a geometric representation of sketches, which is vital in enabling automatic sketch analysis, synthesis and manipulation. It is based on utilizing the well known convolutional sparse coding (CSC) model. We observe that CSC is closely related to how line sketches are drawn. This process can be approximated as the sparse spatial localization of a number of typical basic strokes, which in turn can be cast as a non-standard CSC model that forms a line drawing from parametric curves. These curves are learned to optimize the fit between the model and a specific set of line drawings.udEach part of the dissertation shows the utility of the proposed methods through a variety of experiments, user studies, and proposed applications.
机译:人类一直使用素描来解释视觉世界。交流新的想法和设计是一种简单直接的方法。因此,就像在我们现代生活的几乎每个方面一样,计算机科学的相对较新的重大发展为增强个人素描体验做出了重要贡献。素描相关研究的文献见证了开创性的进步和大量有趣的工作。继丰富的文献资料之后,本文通过三种新颖的草图模型提供了草图的整体研究,包括草图分析,传递和几何表示。 ud本文的第一部分针对草图作者身份的识别和草图分析。它提供了以下问题的答案:简单的笔画是否是渲染它们的艺术家或设计师所独有的?如果是这样,可以将此思想用于识别作者身份或对艺术作品进行分类吗?提出的笔划作者识别方法是区分2D数字化图形作者的一种新颖方法。此方法将图形转换为笔划属性的直方图,以区分作者身份。对各种各样的数据集进行了广泛的分类实验,以验证所提出的技术区分艺术家和设计师独特作者身份的能力。 ud本论文的第二部分涉及草图样式从一个手绘图到另一个手绘图的转移。所提出的方法利用了包括几何建模和图像处理在内的多学科领域的技术。它由两种传输方法组成:笔划式和笔刷式传输。 (1)笔划样式转移旨在将笔画级别上的输入草图的样式转移为其他艺术家在其他草图中遇到的样式。这是通过修改输入中所有的参数笔画段来完成的,以使输入和目标样式之间的笔画级全局距离最小。 (2)另一方面,笔刷样式转移的重点是将线图的独特笔刷外观转移到输入草图。在此转移阶段,我们使用自动构造的输入笔刷字典来推断在输入草图的每个位置使用了哪些稀疏的输入笔刷元素集。然后,通过使用输入笔刷字典对目标草图进行稀疏编码来学习输入笔刷和目标笔刷元素之间的一对一映射。 ud本文的最后一部分将以草图的几何表示为目标,这对于启用自动草图至关重要分析,合成和处理。它基于利用众所周知的卷积稀疏编码(CSC)模型。我们观察到CSC与绘制线草图密切相关。此过程可以近似为许多典型基本笔划的稀疏空间局部化,然后可以将其转换为非标准CSC模型,该模型从参数曲线形成线图。学习这些曲线是为了优化模型与一组特定的线图之间的拟合。 ud论文的每个部分都通过各种实验,用户研究和拟议的应用展示了所提出的方法的实用性。

著录项

  • 作者

    Shaheen Sara;

  • 作者单位
  • 年度 2017
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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