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Getting Started with TensorFlow Lite on Seeed Studio XIAO nRF52840 Sense

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This wiki will demonstrate how you can use TensorFlow Lite on Seeed Studio XIAO nRF52840 Sense and detect gestures such as punching and flexing using the on-board accelerometer. Here the data training will be done on the device itself.

For embedded AI applications, we highly recommond using the "Seeed nrf52 mbed-enabled Boards Library".

Software setup

Make sure to first follow "Getting Started with Seeed Studio XIAO nRF52840 (Sense)" wiki for the initial hardware and software setup.

Now let's move on to the rest of the software setup.

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  • Step 3. Open Arduino IDE, navigate to Sketch > Include Library > Add .ZIP Library... and open both the downloaded zip files one after the other

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  • Step 4. Navigate to File > Examples > Seeeed Arduino LSM6DS3 > IMU_Capture to open IMU_Capture.ino

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  • Step 5. Upload the codes and open the Serial Monitor

Note: Once you upload the codes, it will not be executed automatically until you click Serial Monitor on the upper right corner of the Arduino window.

Train data

Punch action

While the serial monitor is open, start training data for the punch action.

  • Step 1. Grab the Seeed Studio XIAO nRF52840 Sense on your palm and start punching forward and you will see some data printed out on serial monitor

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  • Step 2. Repeat the punching action for about 10 times and you will see new data generated after each punch

  • Step 3. Copy and paste the complete serial monitor output to a text file and save the text file as punch.csv

Note: Please copy the first line as well which contains aX,aY,aZ,gX,gY,gZ

Flex action

  • Step 1. Reconnect USB cable to Seeed Studio XIAO nRF52840 Sense, open serial monitor, grab the Seeed Studio XIAO nRF52840 Sense on your palm and start flexing inwards and you will see some data printed out on serial monitor

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  • Step 2. Repeat the flexing action for about 10 times and you will see new data generated after each flex

  • Step 3. Copy and paste the complete serial monitor output to a text file and save the text file as flex.csv

Note: Please copy the first line as well which contains aX,aY,aZ,gX,gY,gZ

Generate TensorFlow Lite model file

Now we will generate a TensorFlow Lite model file (model.h), by using the punch.csv and flex.csv files that we created before.

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  • Step 2. Navigate to files tab on the left navigation panel, drag and drop punch.csv and flex.csv files inside

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  • Step 3. Inside Setup Python Environment section, change the code from pip install tensorflow==2.0.0-rc1 to pip install tensorflow

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  • Step 4. Navigate to Runtime > Run all to run all the code cells

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  • Step 5. Click Run anyway for the error message that pops up

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  • Step 6. Once all the code cells are executed, you will find a new model.h file generated under the files tab that saw before

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Note: If you cannot see the above model.h file, refresh the page.

  • Step 7. Right click on the file and click Download to download the file to your PC

Inference

Now we will use the downloaded TensorFlow Lite model file (model.h) to recognize the punch and flex actions from Seeed Studio XIAO nRF52840 Sense.

  • Step 1. Navigate to the library path of Seeed_Arduino_LSM6DS3 Library (normally under Documents > Arduino > libraries > Seeed_Arduino_LSM6DS3), and visit examples > IMU_Classifier

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  • Step 2. Replace the model.h file with the one that we downloaded before

  • Step 3. Double click IMU_Classifier.ino and upload the codes to the Seeed Studio XIAO nRF52840 Sense.

Punch action

Open serial monitor and perform a punching action. You will see that it will give a result close to 1 next to punch

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Flex action

Perform a flexing action. You will see that it will give a result close to 1 next to flex

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Resources

Tech support

Please do not hesitate to submit the issue into our forum.


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