SAI-BOTS: Scripted Artificial Intelligent Basic Online Tank Simulator
نویسندگان
چکیده
This paper presents details of the specification, design and functionality of the Scripted Artificial Intelligent Basic Online Tank Simulator (SAI-BOTS), an interactive virtual environment that allows users to script tanks to fight each other. SAI-BOTS provides a 3D environment and allows the user to play with other people and learn basic programming and AI Scripting. The users can navigate through the 3D world using a first-person view, third-person view, or its “Blind Mode.” As this project is in its development phase, the current status and future work are included.
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