GPU-based Exact Closest/Furthest Pair Search
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Updated
Jun 6, 2021 - Cuda
GPU-based Exact Closest/Furthest Pair Search
Code for the paper E. Raninen, D. E. Tyler and E. Ollila, "Linear pooling of sample covariance matrices," in IEEE Transactions on Signal Processing, Vol 70, pp. 659-672, 2022, doi: 10.1109/TSP.2021.3139207.
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