Constrained Convolutional Sparse Coding For Parametric Based Reconstruction Of Line Drawings

2017 IEEE INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV)(2017)

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摘要
Convolutional sparse coding (CSC) plays an essential role in many computer vision applications ranging from image compression to deep learning. In this work, we spot the light on a new application where CSC can effectively serve, namely line drawing analysis. The process of drawing a line drawing 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 considers the line drawing formation process from parametric curves. These curves are learned to optimize the fit between the model and a specific set of line drawings. Parametric representation of sketches is vital in enabling automatic sketch analysis, synthesis and manipulation. A couple of sketch manipulation examples are demonstrated in this work. Consequently, our novel method is expected to provide a reliable and automatic method for parametric sketch description. Through experiments, we empirically validate the convergence of our method to a feasible solution.
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关键词
constrained convolutional sparse coding,image compression,deep learning,automatic sketch synthesis,basic strokes,automatic sketch manipulation,line drawing analysis,computer vision applications,parametric based reconstruction,parametric sketch description,automatic sketch analysis,parametric curves,nonstandard CSC model,sparse spatial localization
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