|
|
@@ -6,18 +6,21 @@ Here this edge computing is brought into a practical oriented example, where a A
|
|
|
|
|
|
This projects allows you to digitalize your **analoge** water, gas, power and other meters using cheap and easily available hardware.
|
|
|
|
|
|
-All you need is an [ESP32 board with a supported camera](https://github.com/jomjol/AI-on-the-edge-device/wiki/Hardware-Compatibility) and a bit of a practical hand.
|
|
|
+All you need is an [ESP32 board with a supported camera](https://jomjol.github.io/AI-on-the-edge-device-docs/Hardware-Compatibility/) and a bit of a practical hand.
|
|
|
|
|
|
<img src="images/esp32-cam.png" width="200px">
|
|
|
|
|
|
## Key features
|
|
|
+- Tensorflow Lite (TFlite) integration - including easy to use wrapper
|
|
|
+- Inline Image processing (feature detection, alignment, ROI extraction)
|
|
|
- **Small** and **cheap** device (3x4.5x2 cm³, < 10 EUR)
|
|
|
- camera and illumination integrated
|
|
|
-- Web surface for administration and control
|
|
|
+- Web surface to administrate and control
|
|
|
- OTA-Interface to update directly through the web interface
|
|
|
-- API for easy integration
|
|
|
-- Inline Image processing (feature detection, alignment, ROI extraction)
|
|
|
-- Tensorflow Lite (TFlite) integration - including easy to use wrapper
|
|
|
+- Full integration into Homeassistant
|
|
|
+- Support for Influx DB 1
|
|
|
+- MQTT
|
|
|
+- REST API
|
|
|
|
|
|
## Workflow
|
|
|
The device takes a photo of your meter at a defined interval. It then extracts the Regions of Interest (ROI's) out of it and runs them through an artificial inteligence. As a result, you get the digitalized value of your meter.
|