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Easy and Fast Facial Emotion Monitoring

Project description

Fast Facial Emotion Monitoring (FFEM)

This package provides a simple and efficient way to perform Facial Emotion Recognition (FER). It leverages advanced techniques and algorithms to detect and classify emotions from facial expressions.

Main Function

  • MonitorEmotion_From_Video(video_path: str | int, output_path:str) -> None This function takes a video file or a webcam feed as input and performs FER. The results are saved to the specified output path.

Main Class

  • FaceEmotion_Detection() This class is the backbone of the FER process. It performs face detection and emotion recognition using DeepFace and MediaPipe. The MonitorEmotion_From_Video function utilizes this class to carry out its operations.

This package is designed with user-friendliness in mind, making the complex task of FER accessible and straightforward for users. Whether you’re a researcher, a developer, or someone interested in FER, this package can be a valuable tool for your projects.

!!About FFEM

Use only FEEM version >= 0.3, previous versions had requiriments issues.

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