A statistical aimbot detection method for online FPS games
A statistical aimbot detection method for online FPS games
First Person Shooter (FPS) is a popular genre in online gaming, unfortunately not everyone plays the game fairly, and this hinders the growth of the industry. The aiming robot (aimbot) is a common cheating mechanism employed in this genre, it differs from many other common online bots in that there is a human operating alongside the bot, and thus the in-game data exhibit both human and bot-like behaviour. The aimbot users can aim much better than the average player. However, there are also a large number of highly skilled players who can aim much better than the average player, some of these players have in the past been banned from servers due to false accusations from their peers. Therefore, it would be interesting to find out if and where the honest player's and the bot user's behaviour differ. In this paper we investigate the difference between the aiming abilities of aimbot users and honest human players. We introduce two novel features and have conducted an experiment using a modified open source FPS game. Our data shows that there is significant difference between behaviours of honest players and aimbot users. We propose a voting scheme to improve aimbot detection in FPS based on distribution matching, and have achieved approximately 93% in both True positive and True negative rates with one of our features.
Cheating Detection, Computer Games, Distribution Comparison, First Person Shooters, Game Bots, Statistical Analysis, Voting Scheme
Yu, Su Yang
bc8813ad-ba1e-47ec-b9a3-18f0aba19b78
Hammerla, Nils
702130fd-69a5-4790-9e9e-ac3eb8f874bd
Yan, Jeff
a2c03187-3722-46c8-b73b-439eb9d1a10e
Andras, Peter
e4f60324-9221-4e9a-b3d7-b9541eeb8802
2012
Yu, Su Yang
bc8813ad-ba1e-47ec-b9a3-18f0aba19b78
Hammerla, Nils
702130fd-69a5-4790-9e9e-ac3eb8f874bd
Yan, Jeff
a2c03187-3722-46c8-b73b-439eb9d1a10e
Andras, Peter
e4f60324-9221-4e9a-b3d7-b9541eeb8802
Yu, Su Yang, Hammerla, Nils, Yan, Jeff and Andras, Peter
(2012)
A statistical aimbot detection method for online FPS games.
In 2012 International Joint Conference on Neural Networks, IJCNN 2012.
(doi:10.1109/IJCNN.2012.6252489).
Record type:
Conference or Workshop Item
(Paper)
Abstract
First Person Shooter (FPS) is a popular genre in online gaming, unfortunately not everyone plays the game fairly, and this hinders the growth of the industry. The aiming robot (aimbot) is a common cheating mechanism employed in this genre, it differs from many other common online bots in that there is a human operating alongside the bot, and thus the in-game data exhibit both human and bot-like behaviour. The aimbot users can aim much better than the average player. However, there are also a large number of highly skilled players who can aim much better than the average player, some of these players have in the past been banned from servers due to false accusations from their peers. Therefore, it would be interesting to find out if and where the honest player's and the bot user's behaviour differ. In this paper we investigate the difference between the aiming abilities of aimbot users and honest human players. We introduce two novel features and have conducted an experiment using a modified open source FPS game. Our data shows that there is significant difference between behaviours of honest players and aimbot users. We propose a voting scheme to improve aimbot detection in FPS based on distribution matching, and have achieved approximately 93% in both True positive and True negative rates with one of our features.
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More information
Published date: 2012
Venue - Dates:
2012 Annual International Joint Conference on Neural Networks, IJCNN 2012, Part of the 2012 IEEE World Congress on Computational Intelligence, WCCI 2012, , Brisbane, QLD, Australia, 2012-06-10 - 2012-06-15
Keywords:
Cheating Detection, Computer Games, Distribution Comparison, First Person Shooters, Game Bots, Statistical Analysis, Voting Scheme
Identifiers
Local EPrints ID: 500835
URI: http://eprints.soton.ac.uk/id/eprint/500835
PURE UUID: 2d2f690c-9897-4ca3-bee5-b10cdfca5740
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Date deposited: 13 May 2025 17:24
Last modified: 13 May 2025 17:24
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Contributors
Author:
Su Yang Yu
Author:
Nils Hammerla
Author:
Jeff Yan
Author:
Peter Andras
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