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Subjective surfaces: A method for completing missing boundaries

机译:主观表面:完成缺失边界的方法

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摘要

We present a model and algorithm for segmentation of images with missing boundaries. In many situations. the human visual system fills in missing gaps in edges and boundaries, building and completing information that is not present. This presents a considerable challenge in computer vision, since most algorithms attempt to exploit existing data. Completion models. which postulate how to construct missing data, are popular but are often trained and specific to particular images. In this paper. we take the following perspective: We consider a reference point within an image as given and then develop an algorithm that tries to build missing information on the basis of the given point of view and the available information as boundary data to the algorithm. We test the algorithm on some standard images. including the classical triangle of Kanizsa and low signaloise ratio medical images.
机译:我们提出了一种用于分割缺少边界的图像的模型和算法。在许多情况下。人类的视觉系统填补了边缘和边界中缺失的空白,建立并完善了不存在的信息。由于大多数算法都试图利用现有数据,因此这在计算机视觉方面提出了巨大挑战。完成模型。假定如何构造缺失数据的方法很流行,但通常经过培训并且特定于特定图像。在本文中。我们采取以下观点:我们考虑给定图像中的参考点,然后开发一种算法,该算法尝试根据给定的观点和作为算法边界数据的可用信息来构建缺失信息。我们在一些标准图像上测试该算法。包括Kanizsa的经典三角形和低信噪比的医学图像。

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