niyelhassan/csi-fall-dsp
A framework for fall detection with CSI Wi-Fi data
This framework helps care providers and smart home integrators set up accurate, non-invasive fall detection in homes or care facilities. By using existing Wi-Fi signals as input, it can identify falls and generate alerts without the need for wearable devices or cameras. Its primary users are professionals managing elderly care or smart home installations.
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Use this if you need a cost-effective, privacy-respecting way to detect falls using a home's existing Wi-Fi network infrastructure.
Not ideal if you need a real-time, ultra-low latency system for critical medical applications or situations where Wi-Fi signals are highly unstable.
Stars
13
Forks
5
Language
Python
License
MIT
Category
Last pushed
Jun 01, 2024
Commits (30d)
0
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