Multi-function radars (MFRs) are sophisticated types of sensors with the
capabilities of complex agile inter-pulse modulation implementation and dynamic
work mode scheduling. The developments in MFRs pose great challenges to modern
electronic reconnaissance systems or radar warning receivers for recognition
and inference of MFR work modes. To address this issue, this paper proposes an
online processing framework for parameter estimation and change point detection
of MFR work modes. At first, this paper designed a fully-conjugate Bayesian
non-parametric hidden Markov model with a designed prior distribution (agile
BNP-HMM) to represent the MFR pulse agility characteristics. The proposed model
allows fully-variational Bayesian inference. Then, the proposed framework is
constructed by two main parts. The first part is the agile BNP-HMM model for
automatically inferring the number of HMM hidden states and emission
distribution of the corresponding hidden states. An estimation error lower
bound on performance is derived and the proposed algorithm is shown to be close
to the bound. The second part utilizes the streaming Bayesian updating to
facilitate computation, and designed an online work mode change detection
framework based upon a weighted sequential probability ratio test. We
demonstrate that the proposed framework is consistently highly effective and
robust to baseline methods on diverse simulated data-sets.Comment: 15 pages, 10 figures, submitted to IEEE transactions on signal
processin