Title :
Classification of aircraft using micro-Doppler bicoherence-based features
Author :
Molchanov, Pavlo ; Egiazarian, Karen ; Astola, Jaakko ; Totsky, Alexander ; Leshchenko, Sergey ; Jarabo-Amores, Maria Pilar
Author_Institution :
Dept. of Signal Process., Tampere Univ. of Technol., Tampere, Finland
Abstract :
In the work presented here we propose a novel bicoherence-based method for the classification of aerial radar targets in automatic target recognition (ATR) systems. The possibility of classifying aerial targets using the micro-Doppler contributions caused by a jet engine or the rotor of a helicopter is studied. The method is based on classification features computed in the form of bicoherence estimates, as well as cepstral coefficients extracted from the micro-Doppler contribution contained in radar returns. The performance of the classification method developed is compared with the performance of common methods using high-resolution radar range profiles (HRRPs). Correct classification probability rates are computed for three different types of aerial targets. The benefits achieved by using bicoherence-based classification features are demonstrated and discussed.
Keywords :
Doppler radar; cepstral analysis; helicopters; jet engines; object recognition; radar resolution; radar target recognition; rotors (mechanical); signal classification; ATR systems; HRRP; aerial radar target classification; aircraft classification; automatic target recognition systems; bicoherence-based classification features; cepstral coefficients; classification probability rates; helicopter rotor; high-resolution radar range profiles; jet engine; microDoppler bicoherence-based features; radar returns; Blades; Feature extraction; Helicopters; Hidden Markov models; Radar; Training;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2014.120266