Hiperspektral Ve Lidar Verilerde Fiziksel Model Gözetilerek Hedef Tespiti
View/ Open
Date
2018Author
Oduncu, Emrah
xmlui.mirage2.itemSummaryView.MetaData
Show full item recordAbstract
Hyperspectral target detection algorithms are the primary applications used in
remote sensing. The various targets in the remote sensing images collected in
hundreds of adjacent narrow spectral bands are found using target detection
algorithms. In this thesis, target detection algorithms have been applied to fusion of
LiDAR and hyperspectral dataset in which the shadow and open area targets are
located.Target detection algorithms are applied to the radiance dataset, the
reflectance dataset and the new reflectance dataset obtained from atmospheric
correction and shadow correction in the physical model. Then, the target detection
results are compared.
Especially for the detection of targets located in the shadow area, sky view factor
and shadow density values were determined over the LiDAR dataset of the studied
area, and atmospheric transmittance, sun irradiance, sky radiance and path
radiance values are obtained by MODTRAN software with the help of atmospheric data of dataset. The obtained data are put into physical model and atmospheric
corrected and shadow corrected new reflectance dataset are obtained.
Adaptive coherence estimator (ACE), spectral angle mapper (SAM) and matched
filter (MF) are used in signature-based target detection algorithms. These algorithms
are selected to analyze the effect of correction of hyperspectral data in the shadow
area on target detection, in accordance with the target dataset. In the SHARE 2012
AVON campus dataset, twelve blue felt and ten red felt targets are located, eight
blue and eight red felt targets have different shadow illumination levels. Signaturebased
algorithms, using open area target data as a reference signature are tested
on the radiance dataset, the reflectance dataset and the new reflectance dataset
obtained by atmospheric correction and shadow correction in the physical model.
The results are analyzed over the areas under ROC curves and ROC curves.
Target detection results are grouped in the results in order to see the effects of target
illumination conditions, target background conditions and target colors on
hyperspectral target detection.
Fusion of LiDAR and hyperspectral dataset, the probability of detecting targets in
the shadow and open area has increased from 70%-90% to 100%. In the applied
algorithms, the ACE showed the best result, and the targets in the atmospheric and
shadow corrected new reflectance dataset are detected with the lowest false
positive rate according to the other reflectance and radiance dataset examined. In
the atmospheric and shadow corrected new reflectance dataset in the physical
model, SAM and MF algorithms showed higher performance than the target
detection results in the given radiance and reflectance dataset and according to
targets these performance has increased from 70% to 95% - 100%.