Deep learning–based speech recognition applications have made great strides in the past decade. Deep learning–based systems have evolved to achieve higher accuracy while using simpler end-to-end architectures, compared to their predecessor hybrid architectures. Most of these state-of-the-art systems run on backend servers with large amounts of memory and CPU/GPU resources. The major disadvantage of server-based speech recognition is the lack of privacy and security for user speech data. Additionally, because of network dependency, this server-based architecture cannot always be reliable, performant and available. Nevertheless, offline speech recognition on client devices overcomes these issues. However, resource constraints on smaller edge ...
Emotion recognition, among other natural language processing tasks, has greatly benefited from the u...
© 2017 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Edge accelerator is a class of brand-new purpose-built System On a Chip (SoC) for running deep learn...
This master thesis characterizes the performance and energy bottlenecks of speech recognition system...
Despite their resource- and power-constrained nature, edge devices also exhibit an increase in the a...
This paper presents a low-latency streaming on-device automatic speech recognition system for infere...
Deep Neural Network based wake word (such as Hi Alexa or Hey Siri) systems allow increasingly accura...
INST: L_042Edge computing is an essential technology to enable machine learning capabilities on IoT ...
Speech recognition is the task where a machine processes human speech into a written format. Groundb...
We propose a system architecture for real-time hardware speech recognition on low-cost, power-constr...
Speech recognition has progressed tremendously in the area of artificial intelligence (AI). However,...
The introduction of artificial neural networks (ANNs) to speech recognition applications has sparked...
With the advent and breakthrough of interaction between humans and electronic devices using speech i...
The use of deep learning models within scientific experimental facilities frequently requires low-la...
Emotion recognition, among other natural language processing tasks, has greatly benefited from the u...
Emotion recognition, among other natural language processing tasks, has greatly benefited from the u...
© 2017 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Edge accelerator is a class of brand-new purpose-built System On a Chip (SoC) for running deep learn...
This master thesis characterizes the performance and energy bottlenecks of speech recognition system...
Despite their resource- and power-constrained nature, edge devices also exhibit an increase in the a...
This paper presents a low-latency streaming on-device automatic speech recognition system for infere...
Deep Neural Network based wake word (such as Hi Alexa or Hey Siri) systems allow increasingly accura...
INST: L_042Edge computing is an essential technology to enable machine learning capabilities on IoT ...
Speech recognition is the task where a machine processes human speech into a written format. Groundb...
We propose a system architecture for real-time hardware speech recognition on low-cost, power-constr...
Speech recognition has progressed tremendously in the area of artificial intelligence (AI). However,...
The introduction of artificial neural networks (ANNs) to speech recognition applications has sparked...
With the advent and breakthrough of interaction between humans and electronic devices using speech i...
The use of deep learning models within scientific experimental facilities frequently requires low-la...
Emotion recognition, among other natural language processing tasks, has greatly benefited from the u...
Emotion recognition, among other natural language processing tasks, has greatly benefited from the u...
© 2017 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Edge accelerator is a class of brand-new purpose-built System On a Chip (SoC) for running deep learn...