Dataset Viewer
Full Screen Viewer
Full Screen
The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.
MegaBNSpeech Test Data
To evaluate the performance of the models, we used four test sets. Two of these were developed as part of the MegaBNSpeech corpus, while the remaining two (Fleurs and Common Voice) are commonly used test sets that are widely recognized by the speech community.
Use dataset library:
from datasets import load_dataset
dataset = load_dataset("hishab/MegaBNSpeech_Test_Data")
Reported Word error rate (WER) /character error rate (CER) on four test sets using four ASR systems
Category | Duration (hr) | Hishab BN Fastconformer | Google MMS | OOD-speech |
---|---|---|---|---|
MegaBNSpeech-YT | 8.1 | 6.4/3.39 | 28.3/18.88 | 51.1/23.49 |
MegaBNSpeech-Tel | 1.9 | ∗40.7/24.38 | ∗59/41.26 | ∗76.8/39.36 |
Reported Word error rate (WER) /character error rate (CER) on different categories present in Hishab BN FastConformer
Category | Duration (hr) | Hishab BN FastConformer | Google MMS | OOD-speech |
---|---|---|---|---|
News | 1.21 | 2.5/1.21 | 18.9/10.46 | 52.2/21.65 |
Talkshow | 1.39 | 6/3.29 | 28/18.71 | 48.8/21.5 |
Courses | 3.81 | 6.8/3.79 | 30.8/21.64 | 50.2/23.52 |
Drama | 0.03 | 10.3/7.47 | 37.3/27.43 | 64.3/32.74 |
Science | 0.26 | 5/1.92 | 20.6/11.4 | 45.3/19.93 |
Vlog | 0.18 | 11.3/6.69 | 33/22.9 | 57.9/27.18 |
Recipie | 0.58 | 7.5/3.29 | 26.4/16.6 | 53.3/26.89 |
Waz | 0.49 | 9.6/5.45 | 33.3/23.1 | 57.3/27.46 |
Movie | 0.1 | 8/4.64 | 35.2/23.88 | 64.4/34.96 |
- Downloads last month
- 45