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SNDCNN: Self-Normalizing Deep CNNs with Scaled Exponential Linear Units for Speech Recognition

Zhen Huang, Tim Ng, Leo Liu, H. Benjamin Mason, Xiaodan Zhuang, Daben Liu

202041 citationsDOI

Abstract

Very deep CNNs achieve state-of-the-art results in both computer vision and speech recognition, but are difficult to train. The most popular way to train very deep CNNs is to use shortcut connections (SC) together with batch normalization (BN). Inspired by Self-Normalizing Neural Networks, we propose the self-normalizing deep CNN (SNDCNN) based acoustic model topology, by removing the SC/BN and replacing the typical RELU activations with scaled exponential linear unit (SELU) in ResNet-50. SELU activations make the network self-normalizing and remove the need for both shortcut connections and batch normalization. Compared to ResNet50, we can achieve the same or lower (up to 4.5% relative) word error rate (WER) while boosting both training and inference speed by 60%-80%. We also explore other model inference optimization schemes to further reduce latency for production use.

Topics & Concepts

Normalization (sociology)Computer scienceInferenceSpeech recognitionArtificial intelligenceDeep learningDeep neural networksBoosting (machine learning)Word error rateExponential functionPattern recognition (psychology)Exponential growthMathematicsMathematical analysisAnthropologySociologySpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing
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