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tinyML Vision Challenge - Himax & Edge Impulse

The WE-I Plus EVB is the perfect solution for tinyML, computer vision and AI endpoint. It is a versatile board with a low-power monochrome camera, a microphone and an accelerometer. The built-in WE-I Plus ASIC (HX6537-A) combines a Synopsys ARC EM9D DSP running at 400 MHz and 2 MB internal SRAM and 2 MB Flash. This chip is fast - you can classify a single image at 96x96 pixels in just over 100 ms.

Together with Edge Impulse, the WE-I Plus EVB can now quickly collect real-world sensor data, train ML models on this data in the cloud, and then deploy the model back to this powerful Himax hardware.

Join us for a live session, by Edge Impulse’s user success engineer David Schwarz, to learn how to build enterprise-grade embedded machine learning models, using the WE-I Plus EVB.

Add sight to your sensors - build a system that can recognize objects through a camera (image classification)
Build a continuous motion recognition system - build a gesture recognition system
Recognize sounds from audio - recognize when a particular sound is happening (audio classification)
Respond to your voice - recognize audible events, particularly your voice (audio classification).

Видео tinyML Vision Challenge - Himax & Edge Impulse канала The tinyML Foundation
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Информация о видео
6 июля 2021 г. 18:49:23
01:00:58
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