Characterizing the temporal and spatial variability of longwave infrared spectral images of targets and backgrounds

Following the public release of the Spectral and Polarimetric Imagery Collection Experiment (SPICE) dataset, a persistent imaging experiment dataset collected by the Army Research Laboratory (ARL), the data were analyzed and materials in the scene characterized temporally and spatially using radiance data. The noise equivalent spectral radiance provided by the sensor manufacturer was compared with instrument noise calculated from in-scene information, and found to be comparable given differences in laboratory setting and real-life conditions. The processed dataset have regular "inconsistent cubes," specifically for data collected immediately after blackbody measurements, which were automatically executed approximately at each hour mark. Omitting these erroneous data, three target detection algorithms (adaptive coherent/cosine estimator, spectral angle mapper, and spectral matched filter) were tested on the temporal data using two target spectra (noon and midnight). The spectral matched filter produced the best detection rate for both noon and midnight target spectra for a 24-hrs period.

[1]  Dalton Rosario,et al.  Spectral imagery collection experiment , 2010, Defense + Commercial Sensing.

[2]  D. Rosario,et al.  Spectral and Polarimetric Imagery Collection Experiment (SPICE) Longwave Infrared Spectral Dataset , 2014 .

[3]  Dalton Rosario,et al.  Range-invariant anomaly detection applied to imaging Fourier transform spectrometry data , 2012, Optics & Photonics - Optical Engineering + Applications.

[4]  John R. Schott,et al.  Remote Sensing: The Image Chain Approach , 1996 .

[5]  Dalton Rosario,et al.  Solid target spectral variability in LWIR , 2016, SPIE Defense + Security.

[6]  M. Eismann Hyperspectral Remote Sensing , 2012 .

[7]  Dalton Rosario,et al.  Spectral and Polarimetric Imagery Collection Experiment , 2011 .

[8]  João Marcos Travassos Romano,et al.  Data processing and temperature-emissivity separation for tower-based imaging Fourier transform spectrometer data , 2015 .

[9]  Dalton Rosario,et al.  Pattern recognition in hyperspectral persistent imaging , 2015, Defense + Security Symposium.

[10]  Fred A. Kruse,et al.  Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery XXII , 2016 .

[11]  Dalton Rosario,et al.  First observations using SPICE hyperspectral dataset , 2014, Defense + Security Symposium.

[12]  Christoph Borel-Donohue,et al.  Against conventional wisdom: Longitudinal inference for pattern recognition in remote sensing , 2014, 2014 IEEE Applied Imagery Pattern Recognition Workshop (AIPR).