Abstract :
B. Kamgar-Parsi applies iterative closest contour point (ICCP) algorithm into underwater gravity matching, in which simplex algorithm is used to estimate the optimal trace of vehicle. However, simplex algorithm is usually convergent to the local optimization so that there is mismatching or even diverging. In this paper, the rule of mismatching judgment for ICCP is established to reduce mismatching probability. At present, the well used mismatching judgment rule, M/N method, has several shortcomings, including matching several times before location, much large matching error, and difficult to decide parameters. In this paper, the rule of mismatching judgment for ICCP is established by probability data association filter (PDAF). Simulation shows that PDAF improves the convergence and precision compared with the ICCP algorithm without mismatching judgment, and its mismatching probability decreases 35 percent compared with M/N method. The PDAF method for mismatching judgment increases the ICCPpsilas precision and stabilization.
Keywords :
image matching; iterative methods; matched filters; optimisation; ICCP algorithm; iterative closest contour point; mismatching judgment; probability data association filter; simplex algorithm; underwater gravity matching; Convergence; Equations; Extraterrestrial measurements; Filters; Gravity; Information geometry; Iterative algorithms; Personal digital assistants; Robustness; Underwater vehicles; ICCP algorithm; mismatching; probability data association filter; simplex optimization; terrain aided navigation;