Untangling in Invariant Speech Recognition

NeurIPS 2019 Cory StephensonJenelle FeatherSuchismita PadhyOguz ElibolHanlin TangJosh McDermottSueYeon Chung

Encouraged by the success of deep neural networks on a variety of visual tasks, much theoretical and experimental work has been aimed at understanding and interpreting how vision networks operate. Meanwhile, deep neural networks have also achieved impressive performance in audio processing applications, both as sub-components of larger systems and as complete end-to-end systems by themselves... (read more)

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