Henrik Ohlsson

  1. Compressive Phase Retrieval From Squared Output Measurements Via Semidefinite Programming.

    Authors: S. Shankar Sastry, Henrik Ohlsson, Allen Y. Yang, Roy Dong
    Subjects: Statistics
    Abstract

    Given a linear system in a real or complex domain, linear regression aims to
    recover the model parameters from a set of observations. Recent studies in
    compressive sensing have successfully shown that under certain conditions, a
    linear program, namely, l1-minimization, guarantees recovery of sparse
    parameter signals even when the system is underdetermined. In this paper, we
    consider a more challenging problem: when the phase of the output measurements
    from a linear system is omitted.

  2. A Probabilistic Perspective on Gaussian Filtering and Smoothing.

    Authors: Marc Peter Deisenroth, Henrik Ohlsson
    Subjects: Methodology
    Abstract

    We present a general probabilistic perspective on Gaussian filtering and
    smoothing. We show that different approaches to Gaussian filtering/smoothing
    can be distinguished solely by their methods of computing means and covariances
    of joint probabilities. New filters and smoothers can therefore be derived
    easily by providing methods for computing these moments. From the probabilistic
    perspective, we additionally derive general sufficient conditions for
    unbiasedness and optimality of Gaussian filters in linear and nonlinear dynamic
    systems.

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