Project Description

The goal of the project is to provide a room that is set up accordingly to the guest's taste. Guests are recognized once they enter the room. If it's a new guest the standard template is applied. If it's a known guest her preferred temperature, humidity, light color, music, etc. is set. If the air quality is low, it will open the window.

In future releases Ambrogio will be able to connect to intelligent devices and prepare your favorite cocktail or espresso. If you are a cat, it might detect you are bored and start playing using a laser pointer or feed you when you are hungry.

Goal for this Hackweek

I'll use a raspberry pi 4, a sense HAT and 3 cameras.

The goals for the hackweek are:

  • Use tensorflow to detect if there's anybody in the room and if that person/pet is known
  • Use sensehat to measure temperature/humidity, etc.
  • Use tensorflow to detect if door/window is open. This will be used in the future to modify the temperature in the most environmentally friendly way.

Resources

Raspberry Pi

SenseHat

Tensorflow

Looking for hackers with the skills:

tensorflow videoprocessing objectrecognition sensors machinelearning

This project is part of:

Hack Week 20

Activity

  • over 3 years ago: rsblendido added keyword "machinelearning" to this project.
  • over 3 years ago: rsblendido added keyword "videoprocessing" to this project.
  • over 3 years ago: rsblendido added keyword "objectrecognition" to this project.
  • over 3 years ago: rsblendido added keyword "sensors" to this project.
  • over 3 years ago: rsblendido added keyword "tensorflow" to this project.
  • over 3 years ago: rsblendido originated this project.

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