Bus Violence: An Open Benchmark for Video Violence Detection on Public Transport
Author:
Ciampi LucaORCID, Foszner PawełORCID, Messina NicolaORCID, Staniszewski MichałORCID, Gennaro ClaudioORCID, Falchi FabrizioORCID, Serao Gianluca, Cogiel Michał, Golba Dominik, Szczęsna AgnieszkaORCID, Amato GiuseppeORCID
Abstract
The automatic detection of violent actions in public places through video analysis is difficult because the employed Artificial Intelligence-based techniques often suffer from generalization problems. Indeed, these algorithms hinge on large quantities of annotated data and usually experience a drastic drop in performance when used in scenarios never seen during the supervised learning phase. In this paper, we introduce and publicly release the Bus Violence benchmark, the first large-scale collection of video clips for violence detection on public transport, where some actors simulated violent actions inside a moving bus in changing conditions, such as the background or light. Moreover, we conduct a performance analysis of several state-of-the-art video violence detectors pre-trained with general violence detection databases on this newly established use case. The achieved moderate performances reveal the difficulties in generalizing from these popular methods, indicating the need to have this new collection of labeled data, beneficial for specializing them in this new scenario.
Funder
European Union funds awarded to Blees Sp. z o.o. the EC H2020 project “AI4media research project (RAU-6, 2020) and projects for young scientists of the Silesian University of Technology research project INAROS (INtelligenza ARtificiale per il mOnitoraggio e Supporto agli anziani), Tuscany
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
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