Javascript must be enabled to continue!
MorphoNeural CFAR: Interpretable Deep Refinement of Morphological Detection for Radar Range-Doppler Maps
View through CrossRef
Constant false alarm rate (CFAR) detection degrades severely in nonuniform clutter, which is common in radar range-Doppler (RD) maps. This letter presents a morphological CFAR detector (MNWTH) that replaces statistical background modeling with a ring-shaped morphological opening to obtain structure-preserving background estimates. A refinement CNN is further introduced in the logit domain to adaptively suppress residual clutter while preserving interpretability. Experiments on real bistatic radar data show that the refined MNWTH improves the AUC from 0.7496 to 0.8263 and achieves 2-3× higher partial AUC under low false-alarm rates compared with CA-/GOCA-/SOCA-CFAR and median CFAR. The proposed framework offers a simple, robust, and computationally efficient solution for radar small-target detection in remote sensing applications.
Institute of Electrical and Electronics Engineers (IEEE)
Title: MorphoNeural CFAR: Interpretable Deep Refinement of Morphological Detection for Radar Range-Doppler Maps
Description:
Constant false alarm rate (CFAR) detection degrades severely in nonuniform clutter, which is common in radar range-Doppler (RD) maps.
This letter presents a morphological CFAR detector (MNWTH) that replaces statistical background modeling with a ring-shaped morphological opening to obtain structure-preserving background estimates.
A refinement CNN is further introduced in the logit domain to adaptively suppress residual clutter while preserving interpretability.
Experiments on real bistatic radar data show that the refined MNWTH improves the AUC from 0.
7496 to 0.
8263 and achieves 2-3× higher partial AUC under low false-alarm rates compared with CA-/GOCA-/SOCA-CFAR and median CFAR.
The proposed framework offers a simple, robust, and computationally efficient solution for radar small-target detection in remote sensing applications.
Related Results
Vibration detection method for optical fibre pre‐warning system
Vibration detection method for optical fibre pre‐warning system
The measurement of optical fibre vibration is a key part of optic fibre pre‐warning system, which has gradually focused on phase‐sensitive optical time‐domain reflectometer. Howeve...
A New CFAR Detection Algorithm Based on Sorting Selection for Vehicle Millimeter Wave Radar
A New CFAR Detection Algorithm Based on Sorting Selection for Vehicle Millimeter Wave Radar
<div class="section abstract"><div class="htmlview paragraph">In this paper, a CFAR detection algorithm based on sorting selection is proposed for the vehicle millimete...
MorphoNeural CFAR: Interpretable Deep Refinement of Morphological Detection for Radar Range-Doppler Maps
MorphoNeural CFAR: Interpretable Deep Refinement of Morphological Detection for Radar Range-Doppler Maps
Constant false alarm rate (CFAR) detection degrades severely in nonuniform clutter, which is common in radar range-Doppler (RD) maps. This letter presents a morphological CFAR dete...
A New Adaptive CFAR Detector
A New Adaptive CFAR Detector
A new CFAR detector based on Grubbs statistic called G-CFAR detector is proposed and its detection architecture is given.in this paper. Also the values of the threshold in differen...
CFAR detection algorithm for objects in sonar images
CFAR detection algorithm for objects in sonar images
The authors introduce a constant false alarm rate (CFAR) detection algorithm, called K‐CFAR, for automatic detection of underwater objects in sonar imagery. The K‐CFAR adopts the K...
Improving aerial target detection for 3D radar based on a two-stage CFAR method with adaptive clutter distribution estimation
Improving aerial target detection for 3D radar based on a two-stage CFAR method with adaptive clutter distribution estimation
This study deals with the problem of enhancing aerial target detection for 3D radar. A novel approach which incorporates both signal and data processing is introduced. In order to ...
Modified rank sum nonparametric CFAR to combat clutter edge
Modified rank sum nonparametric CFAR to combat clutter edge
AbstractThe classical rank sum (RS) nonparametric constant false alarm rate (CFAR) detector plays an important role in the theoretical study and practical application of radar targ...
Metallized Plastic Waveguide Antenna Solutions for Next-Generation Automotive Radar Systems
Metallized Plastic Waveguide Antenna Solutions for Next-Generation Automotive Radar Systems
The automotive industry has significantly focused on developing reliable driving assistance systems, with radar sensors emerging as key components for autonomous driving, thanks to...

