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In this work, we show that by using a recursive random forest together with an alpha beta filter classifier it is possible to classify radar tracks from the tracks’ kinematic data. The kinematic data is from a 2D scanning radar without Doppler or height information. We use random forest as this classifier implicit handles the uncertainty in the position measurements. As stationary targets can have an apparently high speed because of the measurement uncertainty, we use an alpha beta filter classifier to classify stationary targets from moving targets. We show an overall classification rate from simulated data at 82.6 % and from real world data 79.7 %. Additional to the confusion matrix we also show recordings of real world data.
|Number of pages||17|
|Journal||EURASIP Journal on Advances in Signal Processing|
|Publication status||Accepted/In press - 5 Jul 2016|
- random forest
- alpha beta filter
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- 1 Finished
Clemente, C. & Soraghan, J.
1/04/13 → 31/03/18