Vehicle Tracking and Speed Estimation in Aerial Footage

Name
Jorgen Juurik
Abstract
The field of object detection and object tracking has seen great improvements over the last few years with the innovation of modern machine learning algorithms and neural network models. Object tracking models can be utilized in many subjects, such as autonomous driving and surveillance. The goal of this thesis is to explore modern object detection and object tracking methods to construct a model which is able to track vehicles in top-down aerial footage. The YOLO method is used for creating the object detection model while a simple object tracking approach with Kalman Filtering is implemented.
Graduation Thesis language
English
Graduation Thesis type
Bachelor - Computer Science
Supervisor(s)
Amnir Hadachi
Defence year
2020
 
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