Master thesis project

6 Minutes ago • All levels
Editorial

Job Description

This Master thesis project focuses on radar data compression using model-based deep learning. Automotive radar sensors generate vast amounts of data due to high update rates and resolution, leading to increased memory and data transfer costs. The project aims to develop enhanced deep learning methods for encoding and decoding radar data, considering real-time and memory constraints. Students will explore various data compression approaches, exploiting application-specific features and radar-specific characteristics to reduce data rates.
Must Have:
  • Develop enhanced deep learning methods for encoding and decoding radar data
  • Exploit radar-specific features for data rate reduction
  • Adhere to real-time and memory constraints
Perks:
  • Online and offline learning opportunities
  • Career development at NXP

Add these skills to join the top 1% applicants for this job

game-texts
deep-learning
angular

Radar Data Compression through Model-based Deep Learning

Introduction

Automotive radar sensors are required to adhere to the functional and safety standards, meaning that these sensors are required to operate with high update rates (>25 Hz) and high resolution in range, Doppler, and angular domains. The significant dynamic range of radar signals promotes the use of high-performance analog-to-digital converters (ADCs). All these factors lead to an enormous amount of data collection for a single radar frame, i.e., generally tens of gigabits per second (Gb/s). This increases both the on-chip memory and data transfer expenses. The student will look into enhanced deep learning methods that can encode and decode radar data, having real-time and memory constraints.

Scope

Data compression is being applied in a broad range of applications. Each application may use different approaches to compress data by exploiting application-specific features in the data. In contrast, JPEG for RGB images use, for example, down-sampling, block splitting, and a discrete cosine transform to enable a lossy compression. Deep learning is commonly applied nowadays and has shown outstanding performance in some tasks; hence, also in the context of data compression in the following domains: communications [1], medical imaging [2], seismic sensing [3], and SAR imaging [4]. Likewise, in automotive radar sensing, similar and more sophisticated/pruned methods can be applied. The student is free to define the architecture of the encoding and decoding model and exploit radar-specific features to further reduce the data rate.

Set alerts for more jobs like Master thesis project
Set alerts for new jobs by NXP
Set alerts for new Editorial jobs in Netherlands
Set alerts for new jobs in Netherlands
Set alerts for Editorial (Remote) jobs

Contact Us
hello@outscal.com
Made in INDIA 💛💙