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UID:pretalx-eu-summit-2026-QBPTRZ@cfp.riscv-europe.org
DTSTART;TZID=CET:20260610T140000
DTEND;TZID=CET:20260610T143000
DESCRIPTION:This live demonstration showcases the integration of Carfield\,
  a heterogeneous automotive RISC-V SoC for mixed-criticality edge  intelli
 gence applications\, with SHIELD\, a non-intrusive\, multimodal smart stee
 ring wheel. SHIELD enables robust\, redundant acquisition of physiological
  signals to monitor the driver’s state continuously. During the demo\, d
 ry electrodes embedded within the steering wheel synchronously measure ele
 ctrocardiography (ECG)\, electrodermal activity (EDA)\, photoplethysmograp
 hy (PPG)\, and body temperature from both hands. Raw signals are transmitt
 ed via the automotive CAN-FD protocol directly to the Carfield SoC\, while
  simultaneously streaming to a PC GUI via Bluetooth Low Energy (BLE) or Wi
 Fi. The RISC-V core processes the incoming CAN-FD data stream in real time
 . It performs digital signal filtering and employs golden-standard algorit
 hms\, including the Pan-Tompkins algorithm for ECG and PPG peak detection\
 , to analyze heart rate (HR) and heart rate variability (HRV) in both the 
 time and frequency domains. In the live session\,(see Figure 1)\, a team m
 ember will use the smart steering wheel during a dynamic driving simulatio
 n using BeamNG.tech. Attendees will observe the GUI updating in real time\
 , displaying the physiological waveforms alongside the HR and HRV metrics 
 computed by Carfield.\nOverall\, this demo illustrates how heterogeneous\,
  open-source RISC-V architectures can efficiently handle vital sensor data
  acquisition and complex biosignal processing at the edge in a real-time a
 utomotive contest\, paving the road for non-intrusive\, real-time driver m
 onitoring systems in next-generation vehicles.
DTSTAMP:20260522T162358Z
LOCATION:Devzone
SUMMARY:RISC-V Edge Processing for Real-Time Unobtrusive Driver State Monit
 oring on the Automotive SoC - Massimo
URL:https://cfp.riscv-europe.org/eu-summit-2026/talk/QBPTRZ/
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