RAP opportunity at Naval Research Laboratory NRL
Machine-Aided Radar Inverse Scattering for Improving Target Imaging and Recognition
Location
Naval Research Laboratory, DC, Radar
opportunity |
location |
|
64.15.55.C0772 |
Washington, DC 203755321 |
Advisers
name |
email |
phone |
|
Hatim Farouq Alqadah |
hatim.f.alqadah.civ@us.navy.mil |
202 641 8184 |
Description
Our group is focused on the development of robust and stable radar image formation algorithms for synthetic aperture radar (SAR), inverse synthetic aperture radar (ISAR), and other distributed sensing configurations. The aim is to fundamentally improve imaging fidelity and spatial resolution through novel and computationally feasible approaches that go beyond the conventional point-scatterer model. Of interest are physics-based 2D/3D inversion algorithms that work in conjunction with techniques from deep learning, artificial intelligence, and non-linear optimization. Other efforts of the group include reconstruction and generative techniques to support large-scale synthetic image generation to improve training of deep learning classification models.
We seek postdoctoral candidates with a strong background in inverse problem theory, electromagnetic scattering, machine learning, array processing, and optimization. Strong software development skills in languages such as MATLAB, Python, C/C++ as well as knowledge of relevant frameworks such as TensorFlow is desired.
key words
Radar Imaging; Inverse Scattering; Deep Learning; Distributed Sensing; Physics-Based Machine Learning
Eligibility
Citizenship:
Open to U.S. citizens and permanent residents
Level:
Open to Postdoctoral applicants
Stipend
Base Stipend |
Travel Allotment |
Supplementation |
|
$99,200.00 |
$3,000.00 |
|
|