2021
DOI: 10.48550/arxiv.2103.09577
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Theoretical bounds on data requirements for the ray-based classification

Brian J. Weber,
Sandesh S. Kalantre,
Thomas McJunkin
et al.

Abstract: The problem of classifying high-dimensional shapes in real-world data grows in complexity as the dimension of the space increases. For the case of identifying convex shapes of different geometries, a new classification framework has recently been proposed in which the intersections of a set of one-dimensional representations, called rays, with the boundaries of the shape are used to identify the specific geometry. This ray-based classification (RBC) has been empirically verified using a synthetic dataset of tw… Show more

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