Automotive Radar Interference Mitigation with Unfolded Robust PCA based
on Residual Overcomplete Auto-Encoder Blocks
- URL: http://arxiv.org/abs/2010.10357v2
- Date: Sat, 17 Apr 2021 11:37:44 GMT
- Title: Automotive Radar Interference Mitigation with Unfolded Robust PCA based
on Residual Overcomplete Auto-Encoder Blocks
- Authors: Nicolae-C\u{a}t\u{a}lin Ristea, Andrei Anghel, Radu Tudor Ionescu,
Yonina C. Eldar
- Abstract summary: In autonomous driving, radar systems play an important role in detecting targets such as other vehicles on the road.
Deep learning methods for automotive radar interference mitigation can succesfully estimate the amplitude of targets, but fail to recover the phase of the respective targets.
We propose an efficient and effective technique that is able to estimate both amplitude and phase in the presence of interference.
- Score: 88.46770122522697
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In autonomous driving, radar systems play an important role in detecting
targets such as other vehicles on the road. Radars mounted on different cars
can interfere with each other, degrading the detection performance. Deep
learning methods for automotive radar interference mitigation can succesfully
estimate the amplitude of targets, but fail to recover the phase of the
respective targets. In this paper, we propose an efficient and effective
technique based on unfolded robust Principal Component Analysis (RPCA) that is
able to estimate both amplitude and phase in the presence of interference. Our
contribution consists in introducing residual overcomplete auto-encoder
(ROC-AE) blocks into the recurrent architecture of unfolded RPCA, which results
in a deeper model that significantly outperforms unfolded RPCA as well as other
deep learning models.
Related papers
- Angle of Arrival Estimation with Transformer: A Sparse and Gridless Method with Zero-Shot Capability [3.110068567404913]
This work introduces AAETR (Angle of Arrival Estimation with TRansformer) for high performance gridless AOA estimation.
Comprehensive evaluations across various signal-to-noise ratios (SNRs) and multi-target scenarios demonstrate AAETR's superior performance compared to super resolution AOA algorithms.
arXiv Detail & Related papers (2024-08-18T05:24:18Z) - Multistatic-Radar RCS-Signature Recognition of Aerial Vehicles: A Bayesian Fusion Approach [10.908489565519211]
Radar Automated Target Recognition (RATR) for Unmanned Aerial Vehicles (UAVs) involves transmitting Electromagnetic Waves (EMWs) and performing target type recognition on the received radar echo.
Previous studies highlighted the advantages of multistatic radar configurations over monostatic ones in RATR.
We propose a fully Bayesian RATR framework employing Optimal Bayesian Fusion (OBF) to aggregate classification probability vectors from multiple radars.
arXiv Detail & Related papers (2024-02-28T02:11:47Z) - Leveraging Self-Supervised Instance Contrastive Learning for Radar
Object Detection [7.728838099011661]
This paper presents RiCL, an instance contrastive learning framework to pre-train radar object detectors.
We aim to pre-train an object detector's backbone, head and neck to learn with fewer data.
arXiv Detail & Related papers (2024-02-13T12:53:33Z) - Multi-stage Learning for Radar Pulse Activity Segmentation [51.781832424705094]
Radio signal recognition is a crucial function in electronic warfare.
Precise identification and localisation of radar pulse activities are required by electronic warfare systems.
Deep learning-based radar pulse activity recognition methods have remained largely underexplored.
arXiv Detail & Related papers (2023-12-15T01:56:27Z) - DRUformer: Enhancing the driving scene Important object detection with
driving relationship self-understanding [50.81809690183755]
Traffic accidents frequently lead to fatal injuries, contributing to over 50 million deaths until 2023.
Previous research primarily assessed the importance of individual participants, treating them as independent entities.
We introduce Driving scene Relationship self-Understanding transformer (DRUformer) to enhance the important object detection task.
arXiv Detail & Related papers (2023-11-11T07:26:47Z) - Camera-Radar Perception for Autonomous Vehicles and ADAS: Concepts,
Datasets and Metrics [77.34726150561087]
This work aims to carry out a study on the current scenario of camera and radar-based perception for ADAS and autonomous vehicles.
Concepts and characteristics related to both sensors, as well as to their fusion, are presented.
We give an overview of the Deep Learning-based detection and segmentation tasks, and the main datasets, metrics, challenges, and open questions in vehicle perception.
arXiv Detail & Related papers (2023-03-08T00:48:32Z) - Certified Interpretability Robustness for Class Activation Mapping [77.58769591550225]
We present CORGI, short for Certifiably prOvable Robustness Guarantees for Interpretability mapping.
CORGI is an algorithm that takes in an input image and gives a certifiable lower bound for the robustness of its CAM interpretability map.
We show the effectiveness of CORGI via a case study on traffic sign data, certifying lower bounds on the minimum adversarial perturbation.
arXiv Detail & Related papers (2023-01-26T18:58:11Z) - Deep Instance Segmentation with High-Resolution Automotive Radar [2.167586397005864]
We propose two efficient methods for instance segmentation with radar detection points.
One is implemented in an end-to-end deep learning driven fashion using PointNet++ framework.
The other is based on clustering of the radar detection points with semantic information.
arXiv Detail & Related papers (2021-10-05T01:18:27Z) - R4Dyn: Exploring Radar for Self-Supervised Monocular Depth Estimation of
Dynamic Scenes [69.6715406227469]
Self-supervised monocular depth estimation in driving scenarios has achieved comparable performance to supervised approaches.
We present R4Dyn, a novel set of techniques to use cost-efficient radar data on top of a self-supervised depth estimation framework.
arXiv Detail & Related papers (2021-08-10T17:57:03Z) - Estimating the Magnitude and Phase of Automotive Radar Signals under
Multiple Interference Sources with Fully Convolutional Networks [22.081568892330996]
Radar sensors are gradually becoming a wide-spread equipment for road vehicles, playing a crucial role in autonomous driving and road safety.
The broad adoption of radar sensors increases the chance of interference among sensors from different vehicles, generating corrupted range profiles and range-Doppler maps.
In this paper, we propose a fully convolutional neural network for automotive radar interference mitigation.
arXiv Detail & Related papers (2020-08-11T18:50:38Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.