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Hybridizing Expressive Rendering: Stroke-Based Rendering with Classic and Neural Methods

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posted on 2025-10-14, 22:37 authored by Kapil DevKapil Dev
Non-Photorealistic Rendering (NPR) has long been used to create artistic visualizations that prioritize style over realism, enabling the depiction of a wide range of aesthetic effects, from hand-drawn sketches to painterly renderings. While classical NPR methods, such as edge detection, toon shading, and geometric abstraction, have been well-established in both research and practice, with a particular focus on stroke-based rendering, the recent rise of deep learning represents a paradigm shift. We analyze the similarities and differences between classical and neural network based NPR techniques, focusing on stroke-based rendering (SBR), highlighting their strengths and limitations. We discuss trade offs in quality and artistic control between these paradigms, propose a framework where these approaches can be combined for new possibilities in expressive rendering.<p></p>

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Journal

IEEE Computer Graphics and Applications

Start page

1

End page

9

Total pages

9

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ArXiv

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© 2025 IEEE

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Output is a pre-print and currently under review.

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