Self-Similarity: Part II—Optimal Estimation of Fractal Processes
T. Blu, M. Unser
IEEE Transactions on Signal Processing, in press.
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In a companion paper we characterized the class of scale-invariant convolution operators: the generalized fractional derivatives of order γ. We used these operators to specify regularization functionals for a series of Tikhonov-like least squares data fitting problems and proved that the general solution is a fractional spline of twice the order. We investigated the deterministic properties of these smoothing splines and proposed a fast FFT-based implementation.
Here, we present an alternative stochastic formulation to further justify these fractional spline estimators. As suggested by the title, the relevant processes are those that are statistically self-similar; that is, fractional Brownian motion (fBm) and its higher order extensions. To overcome the technical difficulties due to the non-stationary character of fBm, we adopt a distributional formulation due to Gel′fand. This allows us to rigorously specify an innovation model for these fractal processes, which rests on the property that they can be whitened by suitable fractional differentiation. Using the characteristic form of the fBm, we then derive the conditional PDF, p(BH(t)|Y), where Y = {BH(k)+n[k]}k∈Z are the noisy samples of the fBm BH(t) with Hurst exponent H. We find that the conditional mean is a fractional spline of degree 2H, which proves that this class of functions is indeed optimal for the estimation of fractal-like processes. The result also yields the optimal (MMSE) parameters for the smoothing spline estimator, as well as the connection with kriging and Wiener filtering.