Distant speech recognition is being revolutionized by deep learning, that has contributed to significantly outperform previous HMM-GMM systems. A key aspect behind the rapid rise and success of DNNs is their ability to better manage large time contexts. With this regard, asymmetric context windows that embed more past than future frames have been recently used with feed-forward neural networks. This context configuration turns out to be useful not only to address low-latency speech recognition, but also to boost the recognition performance under reverberant conditions. This paper investigates on the mechanisms occurring inside DNNs, which lead to an effective application of asymmetric contexts. In particular, we propose a novel method for ...
A multi-stream framework with deep neural network (DNN) classifiers has been applied in this paper t...
A multi-stream framework with deep neural network (DNN) classifiers has been applied in this paper t...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Deep learning is an emerging technology that is considered one of the most promising directions for ...
The introduction of deep neural networks (DNNs) has advanced the performance of automatic speech rec...
The introduction of deep neural networks (DNNs) has advanced the performance of automatic speech rec...
Despite the significant progress made in the last years, state-of-the-art speech recognition technolo...
The use of context-dependent targets has become standard in hybrid DNN systems for automatic speech ...
The use of context-dependent targets has become standard in hybrid DNN systems for automatic speech ...
In many applications, speech recognition must operate in conditions where there are some distances b...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
Given binaural features as input, such as interaural level difference and interaural phase differenc...
We propose an approach to reverberant speech recognition adopt-ing deep learning in front end as wel...
Automatic speech recognition (ASR) is a key core technology for the information age. ASR systems hav...
A multi-stream framework with deep neural network (DNN) classifiers has been applied in this paper t...
A multi-stream framework with deep neural network (DNN) classifiers has been applied in this paper t...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Deep learning is an emerging technology that is considered one of the most promising directions for ...
The introduction of deep neural networks (DNNs) has advanced the performance of automatic speech rec...
The introduction of deep neural networks (DNNs) has advanced the performance of automatic speech rec...
Despite the significant progress made in the last years, state-of-the-art speech recognition technolo...
The use of context-dependent targets has become standard in hybrid DNN systems for automatic speech ...
The use of context-dependent targets has become standard in hybrid DNN systems for automatic speech ...
In many applications, speech recognition must operate in conditions where there are some distances b...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
Given binaural features as input, such as interaural level difference and interaural phase differenc...
We propose an approach to reverberant speech recognition adopt-ing deep learning in front end as wel...
Automatic speech recognition (ASR) is a key core technology for the information age. ASR systems hav...
A multi-stream framework with deep neural network (DNN) classifiers has been applied in this paper t...
A multi-stream framework with deep neural network (DNN) classifiers has been applied in this paper t...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...