Title :
Morphological Operators for Polarimetric Anomaly Detection
Author :
Romano, Joseph M. ; Rosario, Denis ; Niver, Edip
Author_Institution :
Armaments, Res., Dev., & Eng. (ARDEC), U.S. Army, Picatinny Arsenal, NJ, USA
Abstract :
We introduce an algorithm of morphological filters and propose its use to classic polarization metrics for applications requiring passive longwave-infrared, polarimetric remote sensing and real-time anomaly detection. The approach significantly augments the daytime and nighttime detectability of weak-signal manmade objects immersed in a predominant natural background scene. A tailored sequence of signal-enhancing filters is featured, consisting of basic and higher level morphological operators to achieve a desired goal. Qualitatively, the goal is to effectively squeeze the variance of pixel values representing the natural clutter background, while simultaneously spreading the pixel variance within the manmade object class and separating the pixel mean averages between the two classes of objects. Using real data, the approach persistently detected with a high confidence level three mobile military howitzer surrogates (targets) from natural clutter, during a 72-h coverage. Targets were posed at three aspect angles (range 557 m), yielding a negligible false alarm rate. Performance was invariant to diurnal cycle and mild atmospheric changes.
Keywords :
geophysical image processing; infrared imaging; object detection; polarimetry; real-time systems; remote sensing; weapons; manmade object detection; mobile military howitzer surrogates; morphological filters; morphological operators; natural clutter background; passive longwave-infrared detection; pixel variance; polarimetric anomaly detection; polarimetric remote sensing; polarization metrics; real-time anomaly detection; signal-enhancing filters; Clutter; Hyperspectral sensors; Image edge detection; Measurement; Sensors; Stokes parameters; Anomaly detection; longwave infrared (LWIR); morphology; polarization; spectral polarimetric imagery collection experimentation (SPICE); termal;
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
DOI :
10.1109/JSTARS.2013.2271896