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Authors:
Kissner, Michael
Document type:
Dissertation / Thesis
Title:
A Neural-Symbolic Framework for Mental Simulation
Advisor:
Mayer, Helmut, Prof. Dr.-Ing.
Referee:
Mayer, Helmut, Prof. Dr.-Ing.; Werner, Martin, Prof. Dr. rer. nat.
Submission date:
21.02.2020
Date oral examination:
30.07.2020
Publication date:
26.10.2020
Year:
2020
Pages (Book):
91
Language:
Englisch
Subject:
Maschinelles Sehen ; Maschinelles Lernen ; Simulation ; Computerspiel ; Hochschulschrift
Keywords:
Computer Vision; Machine Learning
Abstract:
We present a neural-symbolic framework for observing the environment and continuously learning visual semantics and intuitive physics to reproduce them in an interactive simulation. The framework consists of five parts, a neural-symbolic hybrid network based on capsules for inverse graphics, an episodic memory to store observations, an interaction network for intuitive physics, a meta-learning agent that continuously improves the framework and a querying language that acts as the framework’s int...     »
DDC notation:
006.37
URN:
urn:nbn:de:bvb:706-6974
Department:
Fakultät für Informatik
Institute:
INF 4 - Institut für Angewandte Informatik
Chair:
Mayer, Helmut
Open Access yes or no?:
Ja / Yes
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