Teach your smartwatch to recognize different movements and motions of your watch hand.
Created By: Thomas Vikström
Public Project Link: https://studio.edgeimpulse.com/public/77262/latest
In this tutorial you will learn how to get started with Machine Learning on your Bangle.js smartwatch. Specifically you will build and train a model learning to recognize different movements of your watch hand. The steps include how to collect data, how to use Edge Impulse for the machine learning part, and how to finally upload the learned model back to the watch and utilize it there.
[Bangle JS, version 1 or 2](https://shop.espruino.com/banglejs2
Theoretically the Bangle Emulator might work as well, but you can’t of course collect real accelerometer or heart rate data with an emulator!
Computer with Bluetooth (BLE)
Get the watch up and running by following these guidelines … and connected by these guidelines
Create an Edge Impulse account for free here
used to split a file with samples into separate .CSV-files for importing into Edge Impulse
not strictly necessary, but very useful if you want to collect lots of samples
for information about how to install or use Python, check e.g. Python documentation
Notepad, Notepad++, Excel etc. can also be used to manually split files, not feasible with lots of samples
Install the app Gesture Test
on your watch from the Bangle App Loader
This part will guide you how to use your watch to collect multiple samples for one gesture type at a time.
Pair your computer with the watch using Espruino Web IDE
Paste the below Gesture collection code into the right side in Espruino Web IDE (adapted from this code)
the code will create a text file in the watch memory
Name the event you are going to collect samples for by changing the line event="left";
use e.g. event="left";
for twitching your watch hand left and later on event="right";
for the opposite direction
upload the code to RAM. Do not upload this code to flash or storage, you might in worst case need to reset the watch completely.
Perform the gesture
repeat the gesture many times, the more the merrier!
wait a second between each
the gesture collecting code will append each sample to the .CSV-file
a graph will also be shown on your watch screen
Repeat steps 3-4 above, remember to change event="<gesture>";
where <gesture>
is the hand movement you will collect
The devil is in the details, do not e.g. remove the seemingly insignificant semi-colon ;
!
This part will guide you how to transfer the .CSV-files from your watch to your computer.
In Espruino Web IDE, click the Storage icon (4 discs) in the middle of the screen
Search for your file/files, they start with the event name you provided in earlier steps e.g. left.1.csv (StorageFile)
Click on Save
(the floppy disc icon) for one file at a time and save the files to a folder of your choice, e.g. to c:\temp
This part will guide you how to split the .CSV-files you've downloaded from your watch into separate .CSV-files. The reason for this is that Edge Impulse requires one .CSV-file per sample.
Copy the below Python code (shamelessly copied from Stackoverflow) into your favourite Python editor.
Replace the path on the second line (starting with PATENTS = ...
) with the full path and filename for the first file you want to split. I.e. the file you downloaded in previous steps.
Run the code in your Python editor
The program will search for the string 'timestamp, x, y, z'
in the original file and for each time (= sample) it finds, create a new file.
If you don't use Python, you'd need to split the file for each sample using some other method, manual or automatic. Remember that the samples aren't all of the same size so the amount of rows will vary.
You should now have several .CSV-files in the folder you chose. The files will be named like left.1.csv (StorageFile)-15.csv
where -15
at the end is a running number.
Repeat steps 2-3 above for each file you downloaded from your watch.
In this part you will learn how to upload the sample files you've created earlier, create a machine learning model, train and finally analyse it. This tutorial will only cover the essential steps needed for Bangle.js. To learn more about Edge Impulse, see e.g. getting started and continuous motion recognition.
Log in to Edge Impulse, using the credentials for the free account you created in the beginning.
Create a new project and give it a name, why not Bangle.js
Select Accelerometer data
when asked for the type of data you are dealing with.
Click Let's get started
Select Data acquisition
from the left hand menu
Click on the icon labeled Upload existing data
Click on Choose files
Navigate to the folder you used to store the .CSV-files (e.g. c:\temp)
Select all the sample files that were created earlier, but not the original files you downloaded from your watch. I.e. select only the .CSV-files with a number at the end of the file name, e.g. left.1.csv (StorageFile)-0.csv
.
You can also upload smaller batches at a time
Automatically split between training and testing
and Infer from filename
should both be selected
Click Begin upload
- this will now quickly upload the files to your project.
The upload process is shown on the right side, if everything goes well, you should at the end see a message like this: Done. Files uploaded successful: 85. Files that failed to upload: 0. Job completed
Take a look at a sample by selecting any row
Notice that the labels (left
and right
in this example) were automatically inferred from the filenames you used.
Always strive to get a roughly similar amount of samples for each gesture. You can see the balance in the pie graph on the left.
Also notice that Edge Impulse split the sample files so that approximately 80 % will be used for training and 20 % for testing purposes.
Through the four small icons you can filter your data, select multiple items, upload more data or see a slightly more detailed list view. With the help of these you can e.g. mass delete many files at a time.
An impulse takes raw data, uses signal processing to extract features, and then uses a learning block to classify new data. These steps will create an impulse.
Click Create impulse
Change the window size and increase according to the screenshot below.
Add the Raw Data
processing block
Add the Classification (Keras)
learning block
Click Save Impulse
Note that you often need to tweak one or several of the settings, this is depending on what you want to achieve and the quality & quantity of your data.
Click Raw data
from the left hand menu
You will see a graph of one of the samples as well as the raw features.
In this case you don't need to change anything, so click Save parameters
which will take you to the second tab.
Click Generate features
This processes the samples
After a while you will see a graph in the Feature explorer
. This gives you a 3D view of how well your data can be clustered into different groups. In an ideal situation all similar samples should be clustered into same group with a clear distinction between groups. If that's not the case, no worries at this point, the neural network algorithm will in many cases still be able to do a very good job!
Here you will train the neural network and analyse its performance.
Click NN Classifier
from the left hand menu
Change the Number of training cycles
to 100. This is another parameter to tweak, the higher this number is, the longer time the training will take, but also the better the network will perform, at least until it can't improve anymore.
Click on Start training
Within a few minutes, depending on the number of labels and data quantity you have, the training will finish.
The graph shows the training performance and accuracy. While 100 % looks like a perfect score, it isn't necessary so. The reason is that the network might perform poorly in real situations when confronted with sample data not seen before.
Here you will download the trained model to your computer.
Click Dashboard
from the left hand menu
Scroll down to the section Download block output
and click on the icon next to NN Classifier model TensorFlow Lite (int8 quantized)
The float32 model might sometimes perform slightly better than the int8 model, but it requires more memory and might cause Bangle.js to crash because of this.
Save the file to a folder of your choice
Transfer the trained model to Bangle.js from your computer
This part will guide you how to transfer the model file from your computer to Bangle.js.
In Espruino Web IDE, click the Storage icon (4 discs) in the middle of the screen
Click Upload a file
Select the model file you downloaded from Edge Impulse
Change the filename to .tfmodel
and click Ok
Create a text file, e.g. with Notepad
Write the event names in alphabetical order, separated by commas, e.g. left,right
Save the file to a folder of your choice
In Espruino Web IDE, click the Storage icon (4 discs) in the middle of the screen
Select the file you just created
Change the filename to .tfnames
and click Ok
Finally you will be able to test how well the trained model performs in real life! Just a few steps left.
Paste the below code into the right side in Espruino Web IDE
Upload the code to RAM
This short program will trigger your watch to sense movements and try to recognise which movement it was.
The recognised movement, e.g. left
or right
, will be shown in the left window in Espruino Web IDE as well as on your watch display.
First of all, hopefully you with this short tutorial were successful in training and recognizing gesture events from your Bangle.js. Hopefully it also inspires you to try to improve the performance, e.g. by collecting more samples, by collecting more event types or by tweaking the different parameters and settings in Edge Impulse.