My minimalistic social robot: a Nexus 9 tablet on Bontend stand displaying the demo page on Chrome browser

Programming a social robot using Cycle.js

Michael Jae-Yoon Chung
12 min readNov 3, 2018

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Note: Check out other posts on programming a social robot using Cycle.js too:
1. Programming a social robot using Cycle.js
2. Implementing a finite state machine in Cycle.js

In this post, I’ll show you how to program a social robot using Cycle.js. I assume you are familiar with reactive programming. If you are not, check out The introduction to Reactive Programming you’ve been missing. If you are eager to get your hands dirty, jump to the Implementing “travel personality test” section.

What is a social robot?

Wikipedia introduces it as:

A social robot is an autonomous robot that interacts and communicates with humans or other autonomous physical agents by following social behaviors and rules attached to its role.

Cynthia Breazel, the mother of social robots, once said:

In short, a socialable robot is socially intelligent in a human-like way, and interacting with it is like interacting with another person. At the pinnacle of achievement, they could befriend us, as we could them.

I see social robots as embodied agents whose main task is to communicate with humans to help humans. So, interactive robots for education or eldercare fit my definition the best.

Programming social robots is similar to programming web applications. In both cases, programmers write code for handling inputs, e.g., a button click or sensor reading, and outputting data accordingly, e.g., displaying information on screen or sending control signals to motors. The major difference is programming social robots involves working with multi-modal inputs and soutputs, e.g., speech and motion, to interact with humans instead of solely using a screen interface.

In this post, I’ll use a tablet-face robot for demonstration purposes. The tablet-face robot is just a web application running on a tablet, but we’ll make it speak, listen, and see you to make it more like a “social robot”.

What is Cycle.js?

Cycle.js is a functional and reactive JavaScript framework. It is an abstraction that separates all side effect producing code into drivers so the core application logic code remains pure in one “main” function. The author of Cycle.js describes a web application as a dialogue between a human and a computer. If we assume both are functions, the human as y = driver(x) and the computer as x = main(y) where x and y are streams in the context of reactive programming, then the dialogue is simply two functions that react to each other via their input stream, which is an output of the another function.

Why Cycle.js for social robots?

To me, Cycle.js essentially enforces functional reactive programming, e.g., using streams, and ports and adapters architecture, e.g., separating side effects, to make it easy to create and understand complex and concurrent interactive programs — beyond web applications. This is why I chose Cycle.js for programming a social robot. I believe the patterns enforced by Cycle.js will help programmers to battle the concurrency problems originated from supporting multi-modal interactions and stay in control when complexity of the desired robot behavior grows. In fact, you don’t need to use Cycle.js if you can enforce the patterns yourself. For example, you could use Yampa with reactimate, Flapjax, or one of ReactiveX stream libraries to do this in a language in which your robot’s API is available.

Implementing “travel personality test”

Enough backgrounds, we’ll now create a robot program that tests your travel personality. Specifically, we’ll make the robot

  1. look at you while you are interacting with the robot and
  2. ask questions as shown in this flowchart.

If you are curious, check out the complete code and the demo at Stackblitz.

IMPORTANT!! For now, the cycle-robot-drivers/run package we use in this post and in the Stackblitz demo only work on Chrome browsers (>= 65.0.3325.181).

The code examples in this post assume you are familiar with JavaScript ES6. To build code, I use browserify and Babel here, but feel free to use a build tool and a transpiler you prefer. If you are not familiar with them, just try hacking the Stackblitz demo codewhile following this post!

Let’s set up a Cycle.js application. Create a folder:

mkdir my-robot-program
cd my-robot-program

Then download package.json, .babelrc, index.html and create an empty index.js file in the folder. Run npm installto install the required npm packages. After installing, you can run npm start to build and start the web application that does nothing.

Now add the following code in index.js:

import xs from 'xstream';
import {runRobotProgram} from '@cycle-robot-drivers/run';
function main(sources) { }runRobotProgram(main);

Then run this application, e.g., by running npm start. It should load a robot face on your browser.

We just successfully set up and ran a Cycle.js application!

Robot, look at a face!

We’ll now focus on implementing the first feature — looking at a face.

Let’s make the robot just move its eyes by adding the following code in main:

// ...// "sources" is a Cycle.js term for the input of "main" / the output of "drivers"
function main(sources) {
// "const" (and "let") is a javascript ES6 feature
const sinks = {
TabletFace: xs.periodic(1000).map(i => ({
x: i % 2 === 0 ? 0 : 1, // horizontal left or right
y: 0.5 // vertical center
})).map(position => ({
type: 'SET_STATE',
value: {
leftEye: position,
rightEye: position
}
}))
};
// "sinks" is a Cycle.js term for the output of "main" / the input of "drivers"
return sinks;
}
// ...

Here we are sending commands to the TabletFace driver by returning the sink.TabletFace stream from main. The periodic xstream factory creates a stream emitting an incremental number every second and the map xstream operator create a new stream that turns the emitted numbers into positions and another new stream that turns the emitted positions into control commands. If you run the updated application, the robot should look left and right repeatedly.

Let’s now work on detecting a face by adding more code in main:

// ...function main(sources) {
sources.PoseDetection.poses.addListener({
next: (poses) => console.log('poses', poses)
});
// ...
}
// ...

Here we use the addListener xstream operator to add a callback function that prints the detected pose data to the posesstream, the stream returned from the PoseDetection driver.

When you run the application you should see arrays of objects printed to your browser’s console. If you don’t see them, make sure you are visible to the camera and being detected via the pose visualizer located below the robot face (try scroll down). Each array represents detected poses at current moment, which has the following format:

const poses = [
// the first detected person
{
"score": 0.32371445304906,
"keypoints": [
{
"part": "nose",
"position": {
"x": 253.36747741699,
"y": 76.291801452637
},
"score": 0.99539834260941
},
{
"part": "leftEye",
"position": {
"x": 253.54365539551,
"y": 71.10383605957
},
"score": 0.98781454563141
},
// ...
},
// the second detected person if there is one
{
"score": 0.22838506316132706,
"keypoints": [
{
"part": "nose",
"position": {
"x": 236.58547523373466,
"y": 360.03672892252604
},
"score": 0.9979155659675598
},
// ...
]
},
// ...
]

While the application is running, try disappearing from the camera. You should see one less object in the poses array. Also try hiding one of your ears by turning your head left or right. You should not see an object that has a string nose for its part field in the keypoints array.

Now that we know how to move the robot’s eyes and retrieve detected face data, let’s put them together to make the robot look at a face. Concretely, we’ll make the robot’s eyes follow a detected person’s nose. Update main as follows:

// ...function main(sources) {
const sinks = {
TabletFace: sources.PoseDetection.poses
.filter(poses =>
// must see one person
poses.length === 1
// must see the nose
&& poses[0].keypoints.filter(kpt => kpt.part === 'nose').length === 1
).map(poses => {
const nose = poses[0].keypoints.filter(kpt => kpt.part === 'nose')[0];
return {
x: nose.position.x / 640, // max value of position.x is 640
y: nose.position.y / 480 // max value of position.y is 480
};
}).map(position => ({
type: 'SET_STATE',
value: {
leftEye: position,
rightEye: position
}
}))
};
return sinks;
}
// ...

Here we are sending commands to the TabletDriver by using the stream created from the output stream of the PoseDetection driver (sources.PoseDetection.poses). To convert pose data into control commands, we use the filterxstream operator to filter pose data to the ones containing only one person whose nose is visible. Then we use the map xstream operator twice to convert the detected nose positions into eye positions and turn the eye positions into control commands.

We have made the robot look at a face!

Exercise ideas:

  • Make the robot look at one of your hands instead of your nose?
  • Make the robot smile (happy expression) when you are looking away from the camera?

Taking a closer look at runRobotProgram

While following code examples above, you may have wondered:

  1. when and where is the TabletFace driver created
  2. how and when a driver produces side effects

Here is the answer to the first question: the two drivers we used in the example code, TabletFace and PoseDetection, are created in runRobotProgram. Normally when you program a Cycle.js app, you need to create drivers explicitly and pass them to the Cycle.js run function. We skipped this step because we used runRobotProgram that creates the required drivers for programming a tablet-face robot and calls Cycle.js run for us. The runRobotProgram function is a wrapper function for Cycle.js run that

  1. creates five drivers, AudioPlayer, SpeechSynthesis, SpeechRecognition, TabletFace, PoseDetection
  2. creates and sets up five action components FacialExpressionAction, AudioPlayerAction, TwoSpeechbubblesAction, SpeechSynthesisAction, SpeechRecognitionAction to allow programmers to use them as drivers, and
  3. calls Cycle.js run with the created drivers and actions.

In fact, if you are comfortable with Cycle.js, you could use Cycle.js run instead of runRobotProgram to have more control over drivers and actions. You could also create a new runRobotProgram function that provides drivers for your own robot that is not a tablet-face robot!

Regarding the second question, check out this page from the Cycle.js website.

Robot, ask questions!

We’ll now focus on implementing the second feature — asking the travel personality quiz questions.

First, we’ll represent the quiz flowchart as a dictionary of dictionaries for convenience. Add the following code:

// ...
import {runRobotProgram} from '@cycle-robot-drivers/run';
const Question = {
CAREER: 'Is reaching your full career potential important to you?',
ONLINE: 'Can you see yourself working online?',
FAMILY: 'Do you have to be near my family/friends/pets?',
TRIPS: 'Do you think short trips are awesome?',
HOME: 'Do you want to have a home and nice things?',
ROUTINE: 'Do you think a routine gives your life structure?',
JOB: 'Do you need a secure job and a stable income?',
VACATIONER: 'You are a vacationer!',
EXPAT: 'You are an expat!',
NOMAD: 'You are a nomad!'
};
const Response = {
YES: 'yes',
NO: 'no'
};
const transitionTable = {
[Question.CAREER]: {
[Response.YES]: Question.ONLINE,
[Response.NO]: Question.FAMILY,
},
[Question.ONLINE]: {
[Response.YES]: Question.NOMAD,
[Response.NO]: Question.VACATIONER,
},
[Question.FAMILY]: {
[Response.YES]: Question.VACATIONER,
[Response.NO]: Question.TRIPS,
},
[Question.TRIPS]: {
[Response.YES]: Question.VACATIONER,
[Response.NO]: Question.HOME,
},
[Question.HOME]: {
[Response.YES]: Question.EXPAT,
[Response.NO]: Question.ROUTINE,
},
[Question.ROUTINE]: {
[Response.YES]: Question.EXPAT,
[Response.NO]: Question.JOB,
},
[Question.JOB]: {
[Response.YES]: Question.ONLINE,
[Response.NO]: Question.NOMAD,
}
};
function main(sources) {
// ...

Notice that I modified the quiz questions to change all response choices to “yes” and “no”.

Let’s now make the robot ask questions and take your verbal responses. First, we’ll make the robot to just say the first question on start, i.e., on loading the robot’s face, and start listening after saying something:

// ...
function main(sources) {
sources.SpeechRecognitionAction.result.addListener({
next: (result) => console.log('result', result)
});
// ...
const sinks = {
TabletFace: sources.PoseDetection.poses
.filter(poses =>
// ...
SpeechSynthesisAction: sources.TabletFace.load.mapTo(Question.CAREER),
SpeechRecognitionAction: sources.SpeechSynthesisAction.result.mapTo({})
};
return sinks;
}
// ...

Here we are sending commands to the SpeechSynthesisAction driver and the SpeechRecognitionAction driver by returning the created streams via sink.SpeechSynthesisAction and sink.SpeechRecognitionAction from main. The input stream for the SpeechSynthesisAction driver emits Question.Career on the tablet-face-loaded event emitted in the sources.TabletFace.load stream. The input stream for the SpeechRecognitionAction driver emits an empty object ({}) on finishing the speech synthesis action event emitted in the sources.SpeechSynthesisAction.result stream. Both streams are created using the mapTo xstream operator. We also print out events emitted in the sources.SpeechRecognitionAction.result stream using the addListener xstream operator.

When you run the application, you should hear the robot saying “Is reaching your full career potential important to you?” and see the output of the SpeechRecognitionAction printed to your browser's console. The output has the following format:

const result = {
"result": "yes", // transcribed texts
"status": {
"goal_id": { // a unique id for the executed action
"stamp": "Mon Oct 01 2018 21:49:00 GMT-0700 (PDT)", // "Date" object
"id": "h0fogq2x0zo-1538455335646"
},
"status": "SUCCEEDED" // "SUCCEEDED", "PREEMPTED", or "ABORTED"
}
}

Try saying something and see how well it hears you.

Now we want to improve the program to make the robot ask more than one question. For example, we can try to send questions as commands to the SpeechSynthesisAction driver whenever the robot hears an appropriate answer, i.e., "yes" or "no". Let's try to express this by updating the code above as follows:

// ...
function main(sources) {
// ...
const sinks = {
TabletFace: sources.PoseDetection.poses
.filter(poses =>
// ...
SpeechSynthesisAction: xs.merge(
sources.TabletFace.load.mapTo(Question.CAREER),
sources.SpeechRecognitionAction.result.filter(result =>
result.status.status === 'SUCCEEDED' // must succeed
&& (result.result === 'yes' || result.result === 'no') // only yes or no
).map(result => result.result).map(result => {
// Hmm...
})
),
SpeechRecognitionAction: sources.SpeechSynthesisAction.result.mapTo({})
};
return sinks;
}
// ...

Here we are merging the commands from the stream that emits the first question (sources.TabletFace.load.mapTo(Question.CAREER)) and the commands from the stream that emits a subsequent question on hearing "yes" or "no" (sources.SpeechRecognitionAction.result.filter(// ...) using the merge xstream factory.

There is one problem with this approach. We cannot figure out which question to return in the second stream since the question is dependent on the last question the robot asked, which also is dependent on the last last question and so on. In other words, we need a previous output of the current stream we are creating as a input to the current stream.

To solve this circular dependency problem, we adopt the proxy pattern by updating the main function as follows:

// ...
function main(sources) {
// ...
const lastQuestion$ = xs.create();
const question$ = xs.merge(
sources.TabletFace.load.mapTo(Question.CAREER),
sources.SpeechRecognitionAction.result.filter(result =>
result.status.status === 'SUCCEEDED' // must succeed
&& (result.result === 'yes' || result.result === 'no') // only yes or no
).map(result => result.result)
.startWith('')
.compose(sampleCombine(
lastQuestion$
)).map(([response, question]) => {
return transitionTable[question][response];
})
);
lastQuestion$.imitate(question$);
const sinks = {
TabletFace: sources.PoseDetection.poses
.filter(poses =>
// ...
SpeechSynthesisAction: question$,
SpeechRecognitionAction: sources.SpeechSynthesisAction.result.mapTo({})
};
return sinks;
}
// ...

Here we have moved creating the code for a stream for sink.SpeechSynthesisAction outside of the sink object definition. We create an empty proxy stream lastQuestion$ using the create xstream factory and use it when creating the question$stream. Then use the imitate xstream operator to connect the proxy stream, lastQuestion$, to its source stream, question$. We also use the compose and sampleCombine xstream operators to combine events from the stream originated from sources.SpeechRecognitionAction.result and the lastQuestion$ stream. Note that I add $ at the end of stream variable names to distinguish them from other variables as Cycle.js authors do. Try the updated application and see if the robot asks more than one question if you respond to it with "yes" or "no".

You may have wondered when did we update the code to send the “start listening” command ({}) after all questions. We didn’t update the code; the code we had before already works as desired since the sources.SpeechSynthesisAction.result stream emits data on finishing every synthesized speech.

One problem you may have faced is the robot failing to ask a next question when it hears an answer that is not “yes” or “no”, e.g., by mistake. In such case, the robot should start listening again to give the person a chance to correct their answer. Let’s update the code to fix the problem:

// ...
SpeechSynthesisAction: question$,
SpeechRecognitionAction: xs.merge(
sources.SpeechSynthesisAction.result,
sources.SpeechRecognitionAction.result.filter(result =>
result.status.status !== 'SUCCEEDED'
|| (result.result !== 'yes' && result.result !== 'no')
)
).mapTo({})
};
return sinks;
}
// ...

Run the updated application. You should see that the robot will continue to listen and print whatever it hears to the console until it hears “yes” or “no” before asking a next question.

We are done at this point. Try taking the travel personality quiz to find out your travel personality and enjoy!

Exercise ideas:

Please let me know if something isn’t clear, and I’d be happy to chat about your concerns. Thank you for reading!

Miscellaneous

My name is Mike Chung. I’m a graduate student interested in the field of human-robot interaction and machine learning. You can reach me on Twitter and on GitHub.

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Michael Jae-Yoon Chung
Michael Jae-Yoon Chung

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