@inproceedings{64949d4519704e48a7552bfd552e5091,
title = "Naive Bayes nearest neighbor classification of ground moving targets",
abstract = "This work addresses the problem of automatic target recognition (ATR) using micro-Doppler information obtained by a low-resolution ground surveillance radar. An improved Naive Bayes nearest neighbor approach denoted as O 2NBNN that was recently introduced for image classification, is adapted here to the radar target recognition problem. The original O 2NBNN is further modified here by using a K-local hyperplane distance nearest neighbor (HKNN) instead of the plain nearest neighbor (1-NN) method. The proposed classifier outperforms minimum divergence (MD) based approaches with Gaussian mixture model (GMM). Performance of the proposed modified O 2NBNN classifier was analyzed using collected radar measurements for variety of signal-to-noise (SNR) levels and sizes of training data.",
author = "Aharon Bar-Hillel and Igal Bilik and Ron Hecht",
year = "2013",
month = oct,
day = "7",
doi = "10.1109/RADAR.2013.6586125",
language = "American English",
isbn = "9781467357920",
series = "IEEE National Radar Conference - Proceedings",
booktitle = "IEEE Radar Conference 2013",
note = "2013 IEEE Radar Conference: {"}The Arctic - The New Frontier{"}, RadarCon 2013 ; Conference date: 29-04-2013 Through 03-05-2013",
}