This thesis proposes an original video-based gait analysis technique, different from others existing in the literature. We leverage deep learning techniques to analyze video sequence packet size both in a virtual and real environment. Moreover, we address the case in which encryption mechanisms are adopted and we conclude the study proposing an incremental learning framework to render the system suitable to real life applications where training data becomes progressively available over time.
Gait analysis from encrypted video surveillance traffic
Bordin, Sara
2020/2021
Abstract
This thesis proposes an original video-based gait analysis technique, different from others existing in the literature. We leverage deep learning techniques to analyze video sequence packet size both in a virtual and real environment. Moreover, we address the case in which encryption mechanisms are adopted and we conclude the study proposing an incremental learning framework to render the system suitable to real life applications where training data becomes progressively available over time.File in questo prodotto:
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Utilizza questo identificativo per citare o creare un link a questo documento:
https://hdl.handle.net/20.500.12608/22899