The dialogflow
service enables the use of the Google Dialogflow platform within your application.
Dialogflow is used to translate human speech into intents (intent classification). In other words, not only does it (try to) convert an audio stream into readable text, it also classifies this text into an intent and extracts additional parameters called entities from the text, if specified. For example, an audio stream can be transcribed to the string "I am 15 years old", and classified as the intent 'answer_age' with entity 'age=15'.
In order to create a Dialogflow agent, visit https://dialogflow.cloud.google.com and log-in with a Google account of choice. Use the 'Create Agent' button at the left top to start your first project. For our framework to be able to communicate with this agent, the project ID and a keyfile are required. Press the settings icon next to your agent's name at the left top to see the Project ID. Click on the Project ID itself in order to generate the project, and then, in order to get the corresponding JSON keyfile, follow the steps given here.
The main items of interest are the Intents and the Entities. An intent is something you want to recognize from an end-user; here we will show you an example of an intent that is aimed at recognizing someone’s name.
When creating an intent, you can name it anything you like; we go with 'answer_name' here. Below 'Action and parameters', you should give the name of the intent that will actually be used in your program. Here, we also set that to 'answer_name'. Moreover, it is useful to set a context for the intent. A context is set by the requester in order to indicate that we only want to recognize this specific intent, and not another one. Usually, in a social robotics application, the kind of answer we want to get is known. We match the name of the (input)context with the name of the intent, and thus make it 'answer_name' as well. By default, Dialogflow makes the context 'stick' for 5 answers; we can fix this by changing the 5 (at the output context) to a 0. Now we arrive at the most important aspect of the intent: the training phrases. Here, you can give the kinds of input strings you would expect; from these, Dialogflow learns the model it will eventually use. You can identify part of the phrase as a parameter by double-clicking on the relevant word and selecting the appropriate entity from the list. It will then automatically appear below ‘Action and parameters' as well; the ‘parameter name’ there will be passed in the result (we use ‘name’ here). The system has many built-in entities (like 'given name'), but you can define your own entities as well (even through importing CSV files). Our complete intent example thus looks like this (note: using sys.given-name
is usually preferred):
Using the Dialogflow service
Let's create a simple demo that prints the transcript and the intent detected by Dialogflow.
Start by importing the necessary SIC functionality.
from sic_framework.devices import Nao from sic_framework.devices.nao import NaoqiTextToSpeechRequest from sic_framework.services.dialogflow.dialogflow import (DialogflowConf, GetIntentRequest, RecognitionResult, QueryResult, Dialogflow)
First, we create a connection to the Nao robot to be able to access its microphone. In order to use this intent we created earlier in an application, we need to set the keyfile and the sample rate. To do this, we create the Dialogflow configuration object. Make sure you read the documentation at the start of this page to obtain the key file for your Dialogflow project.
# connect to the robot nao = Nao(ip='192.168.178.45') # load the key json file keyfile_json = json.load(open("../../../dialogflow-tutorial.json")) # set up the config conf = DialogflowConf(keyfile_json=keyfile_json, sample_rate_hertz=16000)
Having done this setup, we can initate the Dialogflow object and connect the output of NaoqiMicrophone
as the input of Dialogflow. The parameters ip='localhost'
and conf=conf
pass the ip adress of the device the DialogflowComponent
is running on and our configuration to be able to authenticate to Dialogflow.
# initiate Dialogflow object dialogflow = Dialogflow(ip='localhost', conf=conf) # connect the output of NaoqiMicrophone as the input of DialogflowComponent dialogflow.connect(nao.mic)
Finally, we need to register a callback function to act whenever Dialogflow output is available. Whenever Dialogflow detects a new word, we will receive a RecognitionResult
message. The, on_dialog
function simply prints the detected speech when it’s considered final
.
# register a callback function to act upon arrival of recognition_result dialogflow.register_callback(on_dialog)
Now we can start actually getting intents from the user! We need to set a chat ID, with which Dialogflow identifies the conversation. This can be a random number (or the same one if you want to continue a conversation). Then, we request Dialogflow to get an intent. It will start sending the Nao’s microphone audio to Dialogflow. As you start talking, the on_dialog
should print final transcripts.
Whenever you are done, and if Dialogflow successfully detected your intent, it should print it on screen! The Dialogflow agent’s response should also be printed.
x = np.random.randint(10000) for i in range(25): print(" ----- Conversation turn", i) reply = dialogflow.request(GetIntentRequest(x)) print(reply.intent) if reply.fulfillment_message: text = reply.fulfillment_message print("Reply:", text) nao.tts.request(NaoqiTextToSpeechRequest(text))
Here is the definition for on_dialog
def on_dialog(message): if message.response: if message.response.recognition_result.is_final: print("Transcript:", message.response.recognition_result.transcript)
And that's it! You should now be able to talk to your robot. See also https://bitbucket.org/socialroboticshub/framework/src/master/sic_framework/tests/demo_dialogflow.py for a more complete example. Make sure to set your own keyfile path!