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tinyML Hackathon Challenge 2023 - Infineon XENSIV 60GHz Radar Sensor and devkit explanation

tinyML Hackathon Challenge 2023 - Pedestrian Detection

You'll learn about the Infineon XENSIV 60 GHz radar sensor.

Summary of Features
DEMO BGT60TR13C Board
* Digital interface for configuration and data transfer to an MCU
* Optimized for fast prototyping designs and system integrations
* 64 mm x 25.4 mm size
* Can perform radar data processing or forward the sensor data to a USB interface or an Arduino MKR interface
* Hi-Speed USB 2.0 interface
* Operates with Radar Fusion GUI
DEMO BGT60TR13C Board

Summary of Features
KIT_CSK_BGT60TR13C Board
* Rapid Iot connect developer board with low power dual core PSoC™ 6 MCU and WiFi/Bluetooth 5.0- compliant combo module
* Adafruit feather compatible design – Wing board with BGT60TR13C radar and DPS368 pressure sensor
* Small form-factor (22.5 mm x 63 mm x 30 mm)
* Seamless integration into ModusToolbox™
* Interchangeable sensor wings
* Rapid development and deployment via code examples in ModusToolbox™ for presence detection & entrance counter. Enabler for multi-sensor data fusion.

Видео tinyML Hackathon Challenge 2023 - Infineon XENSIV 60GHz Radar Sensor and devkit explanation канала The tinyML Foundation
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Информация о видео
11 мая 2023 г. 1:20:29
00:52:18
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