Difference between revisions of "PcDuino8 UNO get started Kit"

From LinkSprite Playgound
Jump to: navigation, search
(Introduction)
Line 1: Line 1:
 
==Introduction==
 
==Introduction==
Recently, LinkSprite released a powerful mini PC platform **pcDuino8 Uno** which is powered by Allwinner H8 SoC chip. It has 8 Cortex-A7 ARM cores whose operating frequency is up to 2.0GHz.
+
Recently, LinkSprite released a powerful mini PC platform pcDuino8 Uno which is powered by Allwinner H8 SoC chip. It has 8 Cortex-A7 ARM cores whose operating frequency is up to 2.0GHz.
  
In this user guide, we are going to introduce how to quick start OpenCV computer vision and how to use this kit to do lost of fun stuff including but not limited to the follows:
+
Base on this powerful platform, we are construct a new kit called OpenCV computer vision kit which users can use to quick start OpenCV computer vision and do lost of fun stuff including but not limited to the follows:
  
 
* Learn or teach programming
 
* Learn or teach programming

Revision as of 08:09, 22 December 2015

Introduction

Recently, LinkSprite released a powerful mini PC platform pcDuino8 Uno which is powered by Allwinner H8 SoC chip. It has 8 Cortex-A7 ARM cores whose operating frequency is up to 2.0GHz.

Base on this powerful platform, we are construct a new kit called OpenCV computer vision kit which users can use to quick start OpenCV computer vision and do lost of fun stuff including but not limited to the follows:

  • Learn or teach programming
  • Learn Ubuntu Linux
  • Work with hardware part
  • OpenCV computer vision
  • Implement a network video monitoring system
  • DIY a simple camera
  • Motion detection
  • Face detection


PcDuino8 UNO get started kit.png

Package List

1 X PcDuino8 Uno [MP_PCDUINO8_UNO] [102109008]

1 X Mini Webcam for Robot Video Real Time Video Stream V2.0 [WEBCAM_PCDUINO_V2][108202005]

1 X USB microB Cable - 6 Foot [CAB_uB][117201004]

1 X 8G TF Card

Projects

1. CameraDIY

User Guide

Demo

2. Face Detection

User Guide

Demo

3. Motion Detection

User Guide

Demo