TU4.R13.5
ON THE IMPACT OF LOGARITHMIC PROCESSING AND NORMALIZATION ON AUTOENCODER-BASED ANOMALY DETECTION IN HYPERSPECTRAL SATELLITE RADIANCE DATA
Alper Koz, Middle East Technical University
Session:
TU4.R13: Hyperspectral Image Detection Oral
Track:
Theory and Techniques
Location:
Georgetown West
Presentation Time:
Tuesday, 11 August, 17:15 - 17:30
Session Co-Chairs:
Emmett J. Ientilucci, Rochester Institute of Technology and Alper Koz, Middle East Technical University
Presentation
Discussion
Resources
No resources available.
Session TU4.R13
TU4.R13.1: Temporal-Spatial-Spectral Deep Background Reconstruction Model for Anomaly Detection in Hyperspectral Image Sequences
Qiang Ling, National University of Defense Technology; Xu He, Information Support Force Engineering University; Kun Li, Guizhou University; Yihang Luo, National University of Defense Technology
TU4.R13.2: A Tail-Energy Perturbed Black-Box Adversarial Attack for Anti-Detection of Hyperspectral Anomaly
Si-Sheng Young, Chia-Hsiang Lin, Shih-Min Hsu, National Cheng Kung University
TU4.R13.3: BENCHMARKING DEEP LEARNING AND STATISTICAL TARGET DETECTION METHODS FOR PFM-1 LANDMINE DETECTION IN UAV HYPERSPECTRAL IMAGERY
Sagar Lekhak, Prasanna Reddy Pulakurthi, Ramesh Bhatta, Emmett J. Ientilucci, Rochester Institute of Technology
TU4.R13.4: AN ALGORITHM FOR SUBPIXEL TARGET DETECTION USING A DEEP NEURAL NETWORK WITH ENCODER
Edisanter Lo, Susquehanna University; ,
TU4.R13.5: ON THE IMPACT OF LOGARITHMIC PROCESSING AND NORMALIZATION ON AUTOENCODER-BASED ANOMALY DETECTION IN HYPERSPECTRAL SATELLITE RADIANCE DATA
Alper Koz, Middle East Technical University
Resources
No resources available.