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Exact(15)
Performance would be affected only by using two different systems trained on two different populations, whilst one could infer a new integrated model which takes into account such regional differences and aims at the same diagnostic ability in different settings.
Hadid and twenty other officers sat in a room with some thirty closed-circuit-television systems trained on courtyards, elevators, lobbies, and playgrounds in the housing complex.
We trained a p-norm DNN-HMM acoustic model for all three ASR systems trained on the Olive, lecture, and LibriSpeech data.
However, if speaker adaptation techniques are employed, un-transcribed foreign data was not able to improve the performance of the baseline systems trained on target data only.
Consequently, the performance of speech recognition systems trained on clean data degrades severely in reverberant environments because of the mismatch between the training and the test conditions.
Experimental results on three datasets showed that the new method improved the robustness of feature, in comparison to baseline systems trained on the same speech datasets.
Similar(45)
As a critical test of the applicability of the proposed segmentation system to cry recordings irrespective of recording conditions, we show that the system trained on material recorded in one acoustic setting can be reliably adapted to perform on material recorded in an unseen acoustic setting.
Each time, the system trained on three subsets and tested on one subset.
The performance of the ASR system trained on lecture data and tested on lecture data is slightly poorer than the ASR system trained on Olive data and tested on Olive data.
The DNN-HMM system trained on the multi-condition training set achieved a conspicuously higher word accuracy compared to the MLLR-adapted GMM-HMM system trained on the same data.
These elementary AIs only know what we tell them, and if that data carries a bias of any kind, so too will the system trained on it.
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Since I tried Ludwig back in 2017, I have been constantly using it in both editing and translation. Ever since, I suggest it to my translators at ProSciEditing.

Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com