Deep learning based style transfer for low altitude aerial imagery


Autoria(s): Pennino, Federico
Contribuinte(s)

Morigi, Serena

Hammer, Barbara

Konen, Kai

Data(s)

12/10/2022

Resumo

Unmanned Aerial Vehicle (UAVs) equipped with cameras have been fast deployed to a wide range of applications, such as smart cities, agriculture or search and rescue applications. Even though UAV datasets exist, the amount of open and quality UAV datasets is limited. So far, we want to overcome this lack of high quality annotation data by developing a simulation framework for a parametric generation of synthetic data. The framework accepts input via a serializable format. The input specifies which environment preset is used, the objects to be placed in the environment along with their position and orientation as well as additional information such as object color and size. The result is an environment that is able to produce UAV typical data: RGB image from the UAVs camera, altitude, roll, pitch and yawn of the UAV. Beyond the image generation process, we improve the resulting image data photorealism by using Synthetic-To-Real transfer learning methods. Transfer learning focuses on storing knowledge gained while solving one problem and applying it to a different - although related - problem. This approach has been widely researched in other affine fields and results demonstrate it to be an interesing area to investigate. Since simulated images are easy to create and synthetic-to-real translation has shown good quality results, we are able to generate pseudo-realistic images. Furthermore, object labels are inherently given, so we are capable of extending the already existing UAV datasets with realistic quality images and high resolution meta-data. During the development of this thesis we have been able to produce a result of 68.4% on UAVid. This can be considered a new state-of-art result on this dataset.

Formato

application/pdf

Identificador

http://amslaurea.unibo.it/26959/1/Master_Thesis-10.pdf

Pennino, Federico (2022) Deep learning based style transfer for low altitude aerial imagery. [Laurea magistrale], Università di Bologna, Corso di Studio in Informatica [LM-DM270] <http://amslaurea.unibo.it/view/cds/CDS8028/>

Idioma(s)

en

Publicador

Alma Mater Studiorum - Università di Bologna

Relação

http://amslaurea.unibo.it/26959/

Direitos

Free to read

Palavras-Chave #UAVs,GANs,Deep Learning,Semantic Segmentation,Computer Vision,Synthetic-to-Real Translation,Simulation,Domain Adaptation #Informatica [LM-DM270]
Tipo

PeerReviewed

info:eu-repo/semantics/masterThesis