INDEX

2D-tracking filter

A posteriori

density

distribution

particle

probability

A priori

density

distribution

information

Acceptance probability

Acceptance/rejection sampling

Acoustic communications

Adaptive processor

Akaike Information Criterion

Alignment

All-zero

All-pole

AM modulator

AM receiver

Analytic distributions

Analytic form

Anomaly

Approximate Gauss-Markov process model

Approximate Kalman filtering

AR model

ARMA

ARMAX model

Array measurements

Array theory

Artificial dynamics

Asymmetric proposals

Asymptotically

converges

distributed

efficient

Gaussian

optimal estimate

Augmented state vector

Augmenting

Automatic alignment

Autoregressive model

all-pole

with exogenous input

Auxiliary particle filter

Average

information

log-likelihood

mutual information

Background radiation noise

Backward

algorithm

operator

recursion algorithm

shift operator

Bandwidth

Batch Bayesian

importance sampling

Batch least-squares estimate

Baum-Welch

Bayes’rule

Bayes’ theorem

Bayesian

algorithms

anomaly detector

approach

constructs

decomposition

estimation

factor

filtering

framework

importance sampling

methods

model-based processors

particle filters

predictors

processing

processors

recursions

representation

sequential processor

sequential techniques

signal processing

solution

system

theory

Beam line measurements

Bearing estimates

Bearing measurements

Bearings-only

tracking problem

Best path

Best rank approximation

Bias

Bias-variance tradeoff

Biased

Bias index

Bimodal distribution

Bin size

Bin width ...

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