Enhance README with Cognitum.One reference
Some checks failed
Continuous Deployment / Pre-deployment Checks (push) Has been cancelled
Continuous Integration / Code Quality & Security (push) Has been cancelled
Continuous Integration / Tests (push) Has been cancelled
Continuous Integration / Tests-1 (push) Has been cancelled
Continuous Integration / Tests-2 (push) Has been cancelled
Security Scanning / Dependency Vulnerability Scan (push) Has been cancelled
Security Scanning / Static Application Security Testing (push) Has been cancelled
Security Scanning / Container Security Scan (push) Has been cancelled
Security Scanning / Infrastructure Security Scan (push) Has been cancelled
Security Scanning / Secret Scanning (push) Has been cancelled
Security Scanning / License Compliance Scan (push) Has been cancelled
Security Scanning / Security Policy Compliance (push) Has been cancelled
Continuous Deployment / Deploy to Staging (push) Has been cancelled
Continuous Deployment / Deploy to Production (push) Has been cancelled
Continuous Deployment / Rollback Deployment (push) Has been cancelled
Continuous Deployment / Post-deployment Monitoring (push) Has been cancelled
Continuous Deployment / Notify Deployment Status (push) Has been cancelled
Continuous Integration / Performance Tests (push) Has been cancelled
Continuous Integration / Docker Build & Test (push) Has been cancelled
Continuous Integration / API Documentation (push) Has been cancelled
Continuous Integration / Notify (push) Has been cancelled
Security Scanning / Security Report (push) Has been cancelled

Updated project description to include Cognitum.One.
This commit is contained in:
rUv 2026-03-25 21:21:58 -04:00 committed by GitHub
parent 7a13877fa3
commit e6068c5efe
No known key found for this signature in database
GPG key ID: B5690EEEBB952194

View file

@ -14,7 +14,7 @@
Instead of relying on cameras or cloud models, it observes whatever signals exist in a space such as WiFi, radio waves across the spectrum, motion patterns, vibration, sound, or other sensory inputs and builds an understanding of what is happening locally.
Built on top of [RuVector](https://github.com/ruvnet/ruvector/), the project became widely known for its implementation of WiFi DensePose — a sensing technique first explored in academic research such as Carnegie Mellon University's *DensePose From WiFi* work. That research demonstrated that WiFi signals can be used to reconstruct human pose.
Built on top of [RuVector](https://github.com/ruvnet/ruvector/) Self Learning Vector Memory system and [Cognitum.One](https://Cognitum.One) , the project became widely known for its implementation of WiFi DensePose — a sensing technique first explored in academic research such as Carnegie Mellon University's *DensePose From WiFi* work. That research demonstrated that WiFi signals can be used to reconstruct human pose.
RuView extends that concept into a practical edge system. By analyzing Channel State Information (CSI) disturbances caused by human movement, RuView reconstructs body position, breathing rate, heart rate, and presence in real time using physics-based signal processing and machine learning.