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Millimeter Wave RADAR Power-Range Spectra Interpretation    93

                                 (b)  30


                                    20


                                    10
                                                 3s bound
                                   Error (dB)  0












                                      0   20   40   60   80   100  120  140  160  180  200
                                                           Range (m)

                              FIGURE 2.30 Continued.

                              2.10 CONCLUSIONS

                              This chapter describes a new approach in predicting RADAR range bins which
                              is essential for SLAM with MMW RADAR.
                                 A noise analysis during signal absence and presence was carried out. This
                              is to understand the MMW RADAR range spectrum and to predict it accur-
                              ately as it is necessary to know the power and range noise distributions in the
                              RADAR power–range spectra. RADAR range bins are then simulated using
                              the RADAR range equation and the noise statistics, which are then compared
                              with real results in controlled environments. In this chapter, it is demonstrated
                              that it is possible to provide realistic predicted RADAR power/range spectra,
                              for multiple targets down-range.
                                 Feature detection based on target presence probability was also introduced.
                              Resultsare shown which compare probability-based feature detection with other
                              feature extraction techniques such as constant threshold on raw data and CFAR
                              techniques. A difficult compromise in the CA-CFAR method is the choice of
                              the window size which results in a play-off between false alarms and missed
                              detections. Variants of the CFAR method exist, which can be tuned to overcome
                              the problem of missed detections, but the problem of false alarms remains
                              inherent to these methods.
                                 The target presence probability algorithm presented here does not rely on
                              adaptive threshold techniques, but estimates the probability of target presence




                              © 2006 by Taylor & Francis Group, LLC



                                 FRANKL: “dk6033_c002” — 2006/3/31 — 17:29 — page 93 — #53
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