From Human-Designed Convolutional Neural Networks Towards Robust Neural Architecture Search
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Acoustic modeling based on deep architectures has recently gained remarkable success, with substantial improvement of speech recognition accuracy in several automatic speech recognition (ASR) tasks. For distant speech recognition, the multi-channel deep ne ...