Page 15 - Classification Parameter Estimation & State Estimation An Engg Approach Using MATLAB
P. 15

4                                                 INTRODUCTION

            fingerprint recognition or face recognition. A third problem that can be
            solved by classification-like techniques is retrieval from a database, e.g.
            finding an image in an image database by specifying image features.




            1.1.2  Parameter estimation

            In parameter estimation, one tries to derive a parametric description for
            an object, a physical process, or an event. For example, in a beacon-
            based position measurement system (Figure 1.2), the goal is to find the
            position of an object, e.g. a ship or a mobile robot. In the two-
            dimensional case, two beacons with known reference positions suffice.
            The sensory system provides two measurements: the distances from the
            beacons to the object, r 1 and r 2 . Since the position of the object involves
            two parameters, the estimation seems to boil down to solving two
            equations with two unknowns. However, the situation is more complex
            because measurements always come with uncertainties. Usually, the
            application not only requires an estimate of the parameters, but also
            an assessment of the uncertainty of that estimate. The situation is even
            more complicated because some prior knowledge about the position
            must be used to resolve the ambiguity of the solution. The prior know-
            ledge can also be used to reduce the uncertainty of the final estimate.
              In order to improve the accuracy of the estimate the engineer can
            increase the number of (independent) measurements to obtain an over-
            determined system of equations. In order to reduce the cost of the
            sensory system, the engineer can also decrease the number of measure-
            ments leaving us with fewer measurements than parameters. The system



                               beacon 1



                             r r r 1
                                              prior
                                            knowledge
                                                       beacon 2

                                                r r r 2
                              object


            Figure 1.2 Position measurement: a parameter estimation problem handling uncer-
            tainties
   10   11   12   13   14   15   16   17   18   19   20