>
Rising Prices and Falling Values--Inflation and Social Decay
The non-Zionist Israeli Population Could Save the Day
AfD Launches 'Knife App' As Berlin Violence Surges
Oil Prices EXPLODE After Trump Signals That US Is Moving To Wartime Economy
DARPA O-Circuit program wants drones that can smell danger...
Practical Smell-O-Vision could soon be coming to a VR headset near you
ICYMI - RAI introduces its new prototype "Roadrunner," a 33 lb bipedal wheeled robot.
Pulsar Fusion Ignites Plasma in Nuclear Rocket Test
Details of the NASA Moonbase Plans Include a Fifteen Ton Lunar Rover
THIS is the Biggest Thing Since CGI
BACK TO THE MOON: Crewed Lunar Mission Artemis II Confirmed for Wednesday...
The Secret Spy Tech Inside Every Credit Card
Red light therapy boosts retinal health in early macular degeneration

This open-source project uses Channel State Information (CSI) — the subtle disturbances your body creates in WiFi signals — and feeds them through a neural network to reconstruct full human body pose in real time.
Think of it like dropping a stone into a still lake. The ripples reveal the geometry of what disturbed the water.
What makes this different:
→ Privacy-first: captures body form only, never facial features
→ Works through walls at <50ms>50ms>
→ Tracks up to 10 people simultaneously
→ Runs on standard mesh routers you already own
The applications are staggering: fall detection for elderly care, contactless fitness tracking, intrusion detection, occupancy monitoring — all without a single camera.
Built on the DensePose From WiFi research out of Carnegie Mellon by Jiaqi Geng, Dong Huang, and Fernando De La Torre. Production-ready implementation by Reuven Cohen.
As someone working at the intersection of critical infrastructure, cyber resilience, and AI — this is exactly the kind of privacy-preserving sensing that should be embedded into smart buildings and energy systems. The surveillance paradigm is shifting.