Smart Camera Accelerated Application

by: AMD

This UltraHD smart camera implements face detection with network and display functionality. It comes with built-in machine learning for applications such as pedestrian detection, face detection, and people counting with local display and RTSP streaming.

Smart Camera Accelerated Application Block Diagram


  • 4K resolution with H.264/H.265 encode​
  • HDMI or DisplayPort out​
  • Face detect/ Pedestrian detect​
  • User programmable Deep learning models​
  • Complete application including HW design ​
Frequently Asked Questions

No, the app does not require any experience in FPGA design.

This app is free of charge from AMD.

Most USB cameras are expected to work but AMD has primarily tested the app with Logitech Brio and recommends its use for best performance.

The Smart Camera application has been primarily designed and tested with onsemi’s AR1335 image sensor. You will have to update the design and application if adding another MIPI sensor.

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