Non-Linear Stationary Subspace Analysis with Application to Video Classification
نویسندگان
چکیده
In Analytic SSA, an approximate upper bound to the logdet term in Eq. 4 is computed (Hara et al., 2012). Without re-deriving this bound entirely, we present its final steps, which we use to obtain the bounds for KSSA and NLSSA.
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