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Kernel density estimation on spaces of Gaussian distributions and symmetric positive definite matrices

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Academic year: 2021

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Figure 1: Let X be a random variable valued in [1, 2]. The blue curve is the density of µ X with respect to the Lebesgue measure of R restricted to [1, 2]
Figure 2: Riemannian space.
Figure 3: Exponential map.
Figure 4: Hyperbolic tilings
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