照片素描:从图像推断轮廓图

Mengtian Li, Zhe L. Lin, R. Mech, Ersin Yumer, Deva Ramanan
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引用次数: 93

摘要

在计算机图形学和计算机视觉中,边缘、边界和轮廓都是重要的研究课题。一方面,它们是传递3D形状的2D元素,另一方面,它们指示遮挡事件,从而分离对象或语义概念。在本文中,我们的目标是生成轮廓图,捕获视觉场景轮廓的边界图。现有技术经常把这个问题作为边界检测。然而,边界检测输出中呈现的视觉线索集与轮廓图中呈现的线索集不同,并且忽略了艺术风格。我们通过收集新的轮廓图数据集并提出一种基于学习的方法来解决这些问题,该方法解决了标注中的多样性,并且与边界检测器不同,它可以在标注与实际地面事实不完全一致的情况下工作。我们的方法在数量和质量上都超越了以往的方法。令人惊讶的是,当我们的模型在BSDS500上进行微调时,我们在显著边界检测方面取得了最先进的性能,这表明轮廓绘制可能是边界标注的可扩展替代方案,同时对于标注者来说,轮廓绘制更容易、更有趣。
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Photo-Sketching: Inferring Contour Drawings From Images
Edges, boundaries and contours are important subjects of study in both computer graphics and computer vision. On one hand, they are the 2D elements that convey 3D shapes, on the other hand, they are indicative of occlusion events and thus separation of objects or semantic concepts. In this paper, we aim to generate contour drawings, boundary-like drawings that capture the outline of the visual scene. Prior art often cast this problem as boundary detection. However, the set of visual cues presented in the boundary detection output are different from the ones in contour drawings, and also the artistic style is ignored. We address these issues by collecting a new dataset of contour drawings and proposing a learning-based method that resolves diversity in the annotation and, unlike boundary detectors, can work with imperfect alignment of the annotation and the actual ground truth. Our method surpasses previous methods quantitatively and qualitatively. Surprisingly, when our model fine-tunes on BSDS500, we achieve the state-of-the-art performance in salient boundary detection, suggesting contour drawing might be a scalable alternative to boundary annotation, which at the same time is easier and more interesting for annotators to draw.
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