This presentation shows two applications of neural networks to radar data. The first one is the detection of persons and drones with a surveillance radar. The second one is the classification of radar targets using convolutional neural networks. The latter part focuses on the robustness of these networks, i.e. which part of the input data is relevant for classification and how to avoid fooling.
Speaker:
M. Sc. Simon Wagner
Themes:
Small Target Detection
Classification of Radar Targets
Which part of the input image is used for classification
Methods to avoid fooling of neural networks
Target Group:
Customers, partners and interested parties from industry, politics, science and society
Specialists and managers, project managers and decision makers
Information on participating / attending:
Please register here:
https://www.fhr.fraunhofer.de/de/veranstaltungen/2021/radar-in-aktion---machine-...
Date:
05/04/2021 14:00 - 05/04/2021 14:30
Registration deadline:
05/03/2021
Event venue:
Online
Fraunhofer FHR Online-Vortragsreihe
Nordrhein-Westfalen
Germany
Target group:
Business and commerce, all interested persons
Email address:
Relevance:
transregional, national
Subject areas:
Electrical engineering, Information technology, Mathematics, Physics / astronomy
Types of events:
Presentation / colloquium / lecture, Seminar / workshop / discussion
Entry:
04/15/2021
Sender/author:
Jens Fiege
Department:
Interne und externe Kommunikation
Event is free:
yes
Language of the text:
English
URL of this event: http://idw-online.de/en/event68453
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