audio
audioduration (s)
0.15
194
transcription
stringclasses
967 values
speech_status
stringclasses
2 values
gender
stringclasses
2 values
duration
float64
0.15
194
alpha
healthy
female
3.3
the
healthy
female
3.45
Except in the winter when the ooze or snow or ice prevents
healthy
female
7.2
raid
healthy
female
3.6
read
healthy
female
3.45
stubble
healthy
female
4.5
ate
healthy
female
2.4
store
healthy
female
3.6
sip
healthy
female
3
wish
healthy
female
3.9
slay
healthy
female
3.3
sigh
healthy
female
3.3
jagged
healthy
female
3.45
up
healthy
female
3
chair
healthy
female
3.6
one
healthy
female
3.15
Don't ask me to carry an oily rag like that
healthy
female
5.25
rock
healthy
female
3.3
double
healthy
female
3.45
form
healthy
female
3.3
We have often urged him to walk more and smoke less
healthy
female
6.75
warm
healthy
female
3.3
white
healthy
female
3.3
giving those who observe him a pronounced feeling of the utmost respect
healthy
female
6.45
car
healthy
female
3.45
When he speaks his voice is just a bit cracked and quivers a trifle
healthy
female
6
bubble
healthy
female
3.3
born
healthy
female
3.6
troop
healthy
female
3
play
healthy
female
3.3
Nothing is as offensive as innocence
healthy
female
4.8
goat
healthy
female
3
slip
healthy
female
3
whoop
healthy
female
3.75
sticks
healthy
female
3.6
gadget
healthy
female
3.15
pat
healthy
female
2.55
air
healthy
female
3.9
two
healthy
female
2.85
storm
healthy
female
3.9
hear
healthy
female
3.3
fair
healthy
female
3.45
corn
healthy
female
3.45
galore
healthy
female
3.75
rocks
healthy
female
3
dark
healthy
female
2.7
range
healthy
female
3.6
farm
healthy
female
3
feed
healthy
female
3.45
air
healthy
female
3.3
urgent
healthy
female
3.15
grow
healthy
female
3.3
but he always answers Banana oil
healthy
female
5.4
tip
healthy
female
3.15
rake
healthy
female
3.6
tear
healthy
female
3.45
ate
healthy
female
3.3
steer
healthy
female
3.6
I just try to do my best
healthy
female
4.05
left
healthy
female
3.6
We gathered shells on the beach
healthy
female
4.65
knew
healthy
female
3.45
for
healthy
female
3.6
write
healthy
female
3.45
Well he is nearly ninetythree years old
healthy
female
5.7
bat
healthy
female
3.6
horn
healthy
female
2.85
rate
healthy
female
3.3
boot
healthy
female
3.15
usually minus several buttons
healthy
female
4.35
stick
healthy
female
4.05
he slowly takes a short walk in the open air each day
healthy
female
5.7
knew
healthy
female
3.3
You wished to know all about my grandfather
healthy
female
5.7
suit
healthy
female
2.55
spark
healthy
female
3.3
beta
healthy
female
3.75
swore
healthy
female
3.6
swarm
healthy
female
3.15
Twice each day he plays skillfully and with zest upon our small organ
healthy
female
7.35
dug
healthy
female
2.25
knee
healthy
female
3.3
but he always answers Banana oil
healthy
female
3.75
race
healthy
female
3.3
beat
healthy
female
3
swarm
healthy
female
3.45
storm
healthy
female
3.9
meat
healthy
female
3.6
sleep
healthy
female
3.15
ship
healthy
female
3
prior
healthy
female
3.3
sip
healthy
female
3
usually minus several buttons
healthy
female
4.2
deer
healthy
female
3
jacket
healthy
female
3.3
rain
healthy
female
3
fee
healthy
female
3.45
feet
healthy
female
3.6
trace
healthy
female
3.6
down
healthy
female
3.45

The TORGO Database: Acoustic and articulatory speech from speakers with dysarthria

Dataset Summary

  • This database only includes the short words and restricted sentence portion of the TORGO dataset.
  • For the full dataset which also includes non-words and unrestricted sentences please see: https://www.cs.toronto.edu/~complingweb/data/TORGO/torgo.html.
  • Transcripts have been normalized to remove punctuation but casing has been left. Few transcripts only had 'xxx' as text, these were removed.
  • About 5.5 hours of dysarthric speech data and 8 hours of healthy speech.

Short words
These are useful for studying speech acoustics without the need for word boundary detection. This category includes the following:

  • Repetitions of the English digits, 'yes', 'no', 'up', 'down', 'left', 'right', 'forward', 'back', 'select', 'menu', and the international radio alphabet (e.g., 'alpha', 'bravo', 'charlie'). These words are useful for hypothetical command software for accessibility.
  • 50 words from the the word intelligibility section of the Frenchay Dysarthria Assessment (Enderby, 1983).
  • 360 words from the word intelligibility section of the Yorkston-Beukelman Assessment of Intelligibility of Dysarthric Speech (Yorkston and Beukelman, 1981).
  • The 10 most common words in the British National Corpus.

Restricted sentences
In order to utilize lexical, syntactic, and semantic processing in ASR, full and syntactically correct sentences are recorded. These include the following:

  • Preselected phoneme-rich sentences such as "The quick brown fox jumps over the lazy dog", "She had your dark suit in greasy wash water all year", and "Don't ask me to carry an oily rag like that."
  • The Grandfather passage.
  • 162 sentences from the sentence intelligibility section of the Yorkston-Beukelman Assessment of Intelligibility of Dysarthric Speech (Yorkston and Beukelman, 1981).
  • The 460 TIMIT-derived sentences used as prompts in the MOCHA-TIMIT database (Wrench, 1999; Zue et al, 1989).

Dataset Structure

  • Data points comprise the path to the audio file and its transcription.
  • Additional fields include gender, speech status (dysarthria or healthy), and duration
  • No dev/test split is provided as there is no standard split for this dataset.
  • Filenames are as follows:
    • speakerNumber_sessionNumber_micType_utteranceNumber.wav
      • Speaker number has the format of gender-speechStatus-speakerNumber (e.g. FC01 = Female control #1, M04 = Male dysarthric #4)
from datasets import load_dataset

dataset = load_dataset("abnerh/TORGO-database")
print(dataset) 
DatasetDict({
    train: Dataset({
        features: ['audio', 'transcription', 'speech_status', 'gender', 'duration'],
        num_rows: 16552
    })
})
dataset = load_dataset("abnerh/TORGO-database")
print(dataset['train'][0]) 
{'audio': {'path': 'FC01_1_arrayMic_0066.wav',
  'array': array([ 0.00125122,  0.00387573,  0.00115967, ...,  0.00149536,
         -0.00326538,  0.00027466]),
  'sampling_rate': 16000},
 'transcription': 'alpha',
 'speech_status': 'healthy',
 'gender': 'female',
 'duration': 3.3}
print(dataset['train'][12200]) 
{'audio': {'path': 'M02_1_headMic_0066.wav',
  'array': array([ 0.00115967,  0.00106812,  0.00091553, ..., -0.00073242,
         -0.00082397, -0.00054932]),
  'sampling_rate': 16000},
 'transcription': 'yet he still thinks as swiftly as ever',
 'speech_status': 'dysarthria',
 'gender': 'male',
 'duration': 7.605}

Use of this database is free for academic (non-profit) purposes. If you use these data in any publication, you must reference at least one of the following papers:

  • Rudzicz, F., Hirst, G., Van Lieshout, P. (2012) Vocal tract representation in the recognition of cerebral palsied speech. The Journal of Speech, Language, and Hearing Research, 55(4):1190-1207, August.
  • Rudzicz, F., Namasivayam, A.K., Wolff, T. (2012) The TORGO database of acoustic and articulatory speech from speakers with dysarthria. Language Resources and Evaluation, 46(4), pages 523--541. This may be the most informative of the database itself.
  • Rudzicz, F.(2012) Using articulatory likelihoods in the recognition of dysarthric speech. Speech Communication, 54(3), March, pages 430--444.
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