Jake Carns


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2020

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Evaluating and Improving Child-Directed Automatic Speech Recognition
Eric Booth | Jake Carns | Casey Kennington | Nader Rafla
Proceedings of the Twelfth Language Resources and Evaluation Conference

Speech recognition has seen dramatic improvements in the last decade, though those improvements have focused primarily on adult speech. In this paper, we assess child-directed speech recognition and leverage a transfer learning approach to improve child-directed speech recognition by training the recent DeepSpeech2 model on adult data, then apply additional tuning to varied amounts of child speech data. We evaluate our model using the CMU Kids dataset as well as our own recordings of child-directed prompts. The results from our experiment show that even a small amount of child audio data improves significantly over a baseline of adult-only or child-only trained models. We report a final general Word-Error-Rate of 29% over a baseline of 62% that uses the adult-trained model. Our analyses show that our model adapts quickly using a small amount of data and that the general child model works better than school grade-specific models. We make available our trained model and our data collection tool.

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rrSDS: Towards a Robot-ready Spoken Dialogue System
Casey Kennington | Daniele Moro | Lucas Marchand | Jake Carns | David McNeill
Proceedings of the 21th Annual Meeting of the Special Interest Group on Discourse and Dialogue

Spoken interaction with a physical robot requires a dialogue system that is modular, multimodal, distributive, incremental and temporally aligned. In this demo paper, we make significant contributions towards fulfilling these requirements by expanding upon the ReTiCo incremental framework. We outline the incremental and multimodal modules and how their computation can be distributed. We demonstrate the power and flexibility of our robot-ready spoken dialogue system to be integrated with almost any robot.