ai-posture-monitor


Nameai-posture-monitor JSON
Version 0.0.16 PyPI version JSON
download
home_pageNone
SummaryA package designed to predict static pose and detect falls with 2D RGB Camera in well lit indoor environments.
upload_time2024-12-16 09:08:14
maintainerNone
docs_urlNone
authorPatrick Ogbuitepu
requires_pythonNone
licenseNone
keywords fall detection human motion classification pose estimation elderly care computer vision machine learning real-time monitoring occlusion handling finite state machine activity recognition elderly care technology pose estimation models real-time motion tracking occlusion handling static pose classification fuzzy logic systems temporal pose analysis human pose detection motion detection algorithms inactivity monitoring rehabilitation monitoring bounding box analysis multi-camera systems pose transition detection computational intelligence applications human-centric ai assistive technologies vision-based health monitoring sensorless activity recognition human-computer interaction (hci) machine learning in elderly care ai for healthcare monitoring zero false alarm systems dim light pose recognition occlusion robustness home monitoring systems
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requirements No requirements were recorded.
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coveralls test coverage No coveralls.
            # AI Posture Monitor
This project introduces an innovative, cost-effective solution for real-time activity monitoring of elderly individuals. By leveraging the MediaPipe pose estimation model, fuzzy logic, and finite state machines, the system can reliably track individuals, recognize static postures (standing, sitting, lying), and detect transitions, particularly focusing on falls. 

## GITHUB: https://github.com/pat2echo/

## Features
- **Real-Time Activity Monitoring**: Tracks and analyzes movements continuously.
- **Pose Detection**: Identifies key postures**: standing, sitting, and lying down.
- **Fall Detection**: Detects falls with minimal false alarms.
- **Fuzzy Logic Analysis**: Utilizes fuzzy logic for accurate movement interpretation.
- **User-Centric Design**: Tailored for elderly individuals living alone.
- **Environmental Adaptability**: Functions effectively in well-lit indoor settings.
- **Scalable and Cost-Effective**: Affordable solution for diverse applications.

            

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