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arxiv: 1804.11284 · v3 · pith:YNO6LI7Snew · submitted 2018-04-30 · 💻 cs.CG · cs.LG

Simple Distances for Trajectories via Landmarks

classification 💻 cs.CG cs.LG
keywords distancessimpletrajectoriescasecommonlandmarksmetricsobjects
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We develop a new class of distances for objects including lines, hyperplanes, and trajectories, based on the distance to a set of landmarks. These distances easily and interpretably map objects to a Euclidean space, are simple to compute, and perform well in data analysis tasks. For trajectories, they match and in some cases significantly out-perform all state-of-the-art other metrics, can effortlessly be used in k-means clustering, and directly plugged into approximate nearest neighbor approaches which immediately out-perform the best recent advances in trajectory similarity search by several orders of magnitude. These distances do not require a geometry distorting dual (common in the line or halfspace case) or complicated alignment (common in trajectory case). We show reasonable and often simple conditions under which these distances are metrics.

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  1. Sketched MinDist

    cs.CG 2019-07 unverdicted novelty 6.0

    MinDist sketches using O(d/ε²) points preserve relative error for hyperplanes and Õ((L/ρ)·1/ε²) points for 2D shapes with min-distance ρ in domain L, with k³ factors and exact reconstruction for k-piece trajectories.