Difference between revisions of "2021SummerTeam6"

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= '''Mechanical Design''' =
= '''Team 6 Members''' =


[[File:p1.jpg|700px]]


[[File:C1.jpg|500px|thumb|left|alt text]]
 
'''Configurations'''
From Left to Right
 
Kevin Bishara (MAE) | William Lynch (ECE) | Anwar Hsu (ECE)
 
= '''Robot & 3D Modeling Designs''' =
 
 
'''Our Robot'''
 
[[File:p2.png|350px]]
 
'''Electronics Plate'''
 
[[File:cad1.png|250px]]
 
'''Camera Mount'''
 
[[File:cad4.png|350px]]
[[File:cad5.png|350px]]
 
'''Jetson Nano Case'''
 
[[File:cad2.png|350px]]
[[File:cad3.png|350px]]
 
= '''Autonomous Laps''' =
 
    '''DonkeyCar Laps'''
 
Our [https://www.youtube.com/watch?v=nPVh0jeVX9o&ab autonomous laps for DonkeyCar] can be found here.
 
    '''OpenCV/ROS Laps'''
 
Our [https://www.youtube.com/watch?v=R92musCCoJM&ab OpenCV/ROS autonomous laps ] can be found here.
 
= '''Final Project Overview''' =
We wanted to implement a speech to text method to control the car. We tried using pico voice API however, had no luck as the documentation was vague to understand in the short couple day time span summer had to offer. If we had more time with this approach we would implement a voice node for ROS and make sure the topics are correctly link to allow the speech to work. Rather for a quick demo solution we decided to use IBM cloud Watson software which constantly hears and translate. This issue with this approach is that it reads all the noise so having a car running would not make this API ideal.
 
== '''Our Python Code!''' ==
 
<nowiki>
# -*- coding: utf-8 -*-
"""
Created on Mon Mar 29 14:31:14 2021
 
@author: Anwar
"""
## You need to install pyaudio to run this example
# pip install pyaudio
 
# When using a microphone, the AudioSource `input` parameter would be
# initialised as a queue. The pyaudio stream would be continuosly adding
# recordings to the queue, and the websocket client would be sending the
# recordings to the speech to text service
 
 
import pyaudio
from ibm_watson import SpeechToTextV1
from ibm_watson.websocket import RecognizeCallback, AudioSource
from threading import Thread
from ibm_cloud_sdk_core.authenticators import IAMAuthenticator
 
try:
    from Queue import Queue, Full
except ImportError:
    from queue import Queue, Full
 
###############################################
#### Initalize queue to store the recordings ##
###############################################
CHUNK = 1024
# Note: It will discard if the websocket client can't consumme fast enough
# So, increase the max size as per your choice
BUF_MAX_SIZE = CHUNK * 10
# Buffer to store audio
q = Queue(maxsize=int(round(BUF_MAX_SIZE / CHUNK)))
 
# Create an instance of AudioSource
audio_source = AudioSource(q, True, True)
 
###############################################
#### Prepare Speech to Text Service ########
###############################################
 
# initialize speech to text service
authenticator = IAMAuthenticator('your API key')
speech_to_text = SpeechToTextV1(authenticator=authenticator)
 
# define callback for the speech to text service
class MyRecognizeCallback(RecognizeCallback):
    def __init__(self):
        RecognizeCallback.__init__(self)
 
    def on_transcription(self, transcript):
        print(transcript)
 
    def on_connected(self):
        print('Connection was successful')
 
    def on_error(self, error):
        print('Error received: {}'.format(error))
 
    def on_inactivity_timeout(self, error):
        print('Inactivity timeout: {}'.format(error))
 
    def on_listening(self):
        print('Service is listening')
 
    def on_hypothesis(self, hypothesis):
        print(hypothesis)
 
    def on_data(self, data):
        print(data)
 
    def on_close(self):
        print("Connection closed")
 
# this function will initiate the recognize service and pass in the AudioSource
def recognize_using_weboscket(*args):
    mycallback = MyRecognizeCallback()
    speech_to_text.recognize_using_websocket(audio=audio_source,
                                            content_type='audio/l16; rate=44100',
                                            recognize_callback=mycallback,
                                            interim_results=True)
 
###############################################
#### Prepare the for recording using Pyaudio ##
###############################################
 
# Variables for recording the speech
FORMAT = pyaudio.paInt16
CHANNELS = 1
RATE = 44100
 
# define callback for pyaudio to store the recording in queue
def pyaudio_callback(in_data, frame_count, time_info, status):
    try:
        q.put(in_data)
    except Full:
        pass # discard
    return (None, pyaudio.paContinue)
 
# instantiate pyaudio
audio = pyaudio.PyAudio()
 
# open stream using callback
stream = audio.open(
    format=FORMAT,
    channels=CHANNELS,
    rate=RATE,
    input=True,
    frames_per_buffer=CHUNK,
    stream_callback=pyaudio_callback,
    start=False
)
 
#########################################################################
#### Start the recording and start service to recognize the stream ######
#########################################################################
 
print("Enter CTRL+C to end recording...")
stream.start_stream()
 
try:
    recognize_thread = Thread(target=recognize_using_weboscket, args=())
    recognize_thread.start()
 
    while True:
        pass
except KeyboardInterrupt:
    # stop recording
    stream.stop_stream()
    stream.close()
    audio.terminate()
    audio_source.completed_recording()
 
</nowiki>

Latest revision as of 05:49, 6 September 2021

Team 6 Members

P1.jpg


From Left to Right

Kevin Bishara (MAE) | William Lynch (ECE) | Anwar Hsu (ECE)

Robot & 3D Modeling Designs

Our Robot

P2.png

Electronics Plate

Cad1.png

Camera Mount

Cad4.png Cad5.png

Jetson Nano Case

Cad2.png Cad3.png

Autonomous Laps

    DonkeyCar Laps

Our autonomous laps for DonkeyCar can be found here.

    OpenCV/ROS Laps

Our OpenCV/ROS autonomous laps can be found here.

Final Project Overview

We wanted to implement a speech to text method to control the car. We tried using pico voice API however, had no luck as the documentation was vague to understand in the short couple day time span summer had to offer. If we had more time with this approach we would implement a voice node for ROS and make sure the topics are correctly link to allow the speech to work. Rather for a quick demo solution we decided to use IBM cloud Watson software which constantly hears and translate. This issue with this approach is that it reads all the noise so having a car running would not make this API ideal.

Our Python Code!

# -*- coding: utf-8 -*-
"""
Created on Mon Mar 29 14:31:14 2021

@author: Anwar
"""
## You need to install pyaudio to run this example
# pip install pyaudio

# When using a microphone, the AudioSource `input` parameter would be
# initialised as a queue. The pyaudio stream would be continuosly adding
# recordings to the queue, and the websocket client would be sending the
# recordings to the speech to text service


import pyaudio
from ibm_watson import SpeechToTextV1
from ibm_watson.websocket import RecognizeCallback, AudioSource
from threading import Thread
from ibm_cloud_sdk_core.authenticators import IAMAuthenticator

try:
    from Queue import Queue, Full
except ImportError:
    from queue import Queue, Full

###############################################
#### Initalize queue to store the recordings ##
###############################################
CHUNK = 1024
# Note: It will discard if the websocket client can't consumme fast enough
# So, increase the max size as per your choice
BUF_MAX_SIZE = CHUNK * 10
# Buffer to store audio
q = Queue(maxsize=int(round(BUF_MAX_SIZE / CHUNK)))

# Create an instance of AudioSource
audio_source = AudioSource(q, True, True)

###############################################
#### Prepare Speech to Text Service ########
###############################################

# initialize speech to text service
authenticator = IAMAuthenticator('your API key')
speech_to_text = SpeechToTextV1(authenticator=authenticator)

# define callback for the speech to text service
class MyRecognizeCallback(RecognizeCallback):
    def __init__(self):
        RecognizeCallback.__init__(self)

    def on_transcription(self, transcript):
        print(transcript)

    def on_connected(self):
        print('Connection was successful')

    def on_error(self, error):
        print('Error received: {}'.format(error))

    def on_inactivity_timeout(self, error):
        print('Inactivity timeout: {}'.format(error))

    def on_listening(self):
        print('Service is listening')

    def on_hypothesis(self, hypothesis):
        print(hypothesis)

    def on_data(self, data):
        print(data)

    def on_close(self):
        print("Connection closed")

# this function will initiate the recognize service and pass in the AudioSource
def recognize_using_weboscket(*args):
    mycallback = MyRecognizeCallback()
    speech_to_text.recognize_using_websocket(audio=audio_source,
                                             content_type='audio/l16; rate=44100',
                                             recognize_callback=mycallback,
                                             interim_results=True)

###############################################
#### Prepare the for recording using Pyaudio ##
###############################################

# Variables for recording the speech
FORMAT = pyaudio.paInt16
CHANNELS = 1
RATE = 44100

# define callback for pyaudio to store the recording in queue
def pyaudio_callback(in_data, frame_count, time_info, status):
    try:
        q.put(in_data)
    except Full:
        pass # discard
    return (None, pyaudio.paContinue)

# instantiate pyaudio
audio = pyaudio.PyAudio()

# open stream using callback
stream = audio.open(
    format=FORMAT,
    channels=CHANNELS,
    rate=RATE,
    input=True,
    frames_per_buffer=CHUNK,
    stream_callback=pyaudio_callback,
    start=False
)

#########################################################################
#### Start the recording and start service to recognize the stream ######
#########################################################################

print("Enter CTRL+C to end recording...")
stream.start_stream()

try:
    recognize_thread = Thread(target=recognize_using_weboscket, args=())
    recognize_thread.start()

    while True:
        pass
except KeyboardInterrupt:
    # stop recording
    stream.stop_stream()
    stream.close()
    audio.terminate()
    audio_source.completed_recording()