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MGB2

The Multi-Dialect Broadcast News Arabic Speech Recognition (MGB-2): The second edition of the Multi-Genre Broadcast (MGB-2) Challenge is an evaluation of speech recognition and lightly supervised alignment using TV recordings in Arabic. The speech data is broad and multi-genre, spanning the whole range of TV output, and represents a challenging task for speech technology. In 2016, the challenge featured two new Arabic tracks based on TV data from Aljazeera. It was an official challenge at the 2016 IEEE Workshop on Spoken Language Technology. The 1,200 hours MGB-2: from Aljazeera TV programs have been manually captioned with no timing information. QCRI Arabic ASR system has been used to recognize all programs. The ASR output was used to align the manual captioning and produce speech segments for training speech recognition. More than 20 hours from 2015 programs have been transcribed verbatim and manually segmented. This data is split into a development set of 10 hours, and a similar evaluation set of 10 hours. Both the development and evaluation data have been released in the 2016 MGB challenge

Official reference:

Ali, Ahmed, et al. "The MGB-2 challenge: Arabic multi-dialect broadcast media recognition." 2016 IEEE Spoken Language Technology Workshop (SLT). IEEE, 2016.

IEEE link: https://ieeexplore.ieee.org/abstract/document/7846277

Stateless Pruned Transducer Performance Record (after 30 epochs)

dev test comment
greedy search 15.52 15.28 --epoch 18, --avg 5, --max-duration 200
modified beam search 13.88 13.7 --epoch 18, --avg 5, --max-duration 200
fast beam search 14.62 14.36 --epoch 18, --avg 5, --max-duration 200

Conformer-CTC Performance Record (after 40 epochs)

Decoding method dev WER test WER
attention-decoder 15.62 15.01
whole-lattice-rescoring 15.89 15.08

See RESULTS for details.