Lunar is a neural network aimbot that uses real-time object detection accelerated with CUDA on Nvidia GPUs.

Overview

Lunar

Lunar is a neural network aimbot that uses real-time object detection accelerated with CUDA on Nvidia GPUs.

About

Lunar can be modified to work with a variety of FPS games; however, it is currently configured for Fortnite. Besides being general purpose, the main advantage of using Lunar is that it is virtually undetectable by anti-cheat software (no memory is meddled with).

The basis of Lunar's player detection is the YOLOv5 architecture written in the PyTorch framework.

A demo video (outdated) can be found here.

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Installation

  1. Install a version of Python 3.8 or later.

  2. Navigate to the root directory. Use the package manager pip to install the necessary dependencies.

pip install -r requirements.txt

Usage

python lunar.py

To update sensitivity settings:

python lunar.py setup

To collect image data for annotating and training:

python lunar.py collect_data

Issues

  • The method of mouse movement (SendInput) is slow. For this reason, the crosshair often lags behind a moving detection. This problem can be lessened by increasing the pixel_increment (e.g. to 4) so fewer calls to that function are made.
  • The model is trained on a dataset of Fortnite players, and it will not work well for other games. False positives can also happen under certain lighting conditions.
  • There is a known issue that occurs with PyTorch and the GeForce 16 series GPUs on Windows. Unfortunately, if you are using one of these GPUs, the aimbot will not work for you.

Contributing

Pull requests are welcome. If you have any suggestions, questions, or find any issues, please open an issue and provide some detail. If you find this project interesting or helpful, please star the repository.

License

This project is distributed under GNU General Public License v3.0 license.

Owner
Zeyad Mansour
Always open to collaborate on interesting projects!
Zeyad Mansour
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