Recognizing a particular command or a keyword, keyword spotting has been widely used in many voice interfaces such as Amazon's Alexa and Google Home. In order to recognize a set of keywords, most of the recent deep learning based approaches use a neural network trained with a large number of samples to identify certain pre-defined keywords. This restricts the system from recognizing new, user-defined keywords. Therefore, we first formulate this problem as a few-shot keyword spotting and approach it using metric learning. To enable this research, we also synthesize and publish a Few-shot Google Speech Commands dataset. We then propose a solution to the few-shot keyword spotting problem using temporal and dilated convolutions on prototypical ...
Keyword Spotting (KWS) systems allow detecting a set of spoken (pre-defined) keywords. Open-vocabula...
Voice user interfaces have been growing in popularity and with them an interest for open vocabulary ...
We present a novel approach to query-by-example keyword spotting (KWS) using a long short-term memor...
For training a few-shot keyword spotting (FS-KWS) model, a large labeled dataset containing massive ...
This study presents a novel zero-shot user-defined keyword spotting model that utilizes the audio-ph...
In recent years, the development of accurate deep keyword spotting (KWS) models has resulted in KWS ...
User-defined keyword spotting is a task to detect new spoken terms defined by users. This can be vie...
Our application requires a keyword spotting system with a small memory footprint, low computational ...
In the context of keyword spotting (KWS), the replacement of handcrafted speech features by learnabl...
This paper describes an end-to-end approach to perform keyword spotting with a pre-trained acoustic ...
Building a small memory footprint keyword spotting model is important as it typically runs on mobil...
Keyword spotting has been widely used in smart homes and mobile devices, where the goal is to achiev...
International audienceLong Short-Term Memory (LSTM) neural networks offer state-of-the-art results t...
Models based on attention mechanisms have shown unprecedented speech recognition performance. Howeve...
\u3cp\u3eWith the increasing demand on voice recognition services, more attention is paid to simpler...
Keyword Spotting (KWS) systems allow detecting a set of spoken (pre-defined) keywords. Open-vocabula...
Voice user interfaces have been growing in popularity and with them an interest for open vocabulary ...
We present a novel approach to query-by-example keyword spotting (KWS) using a long short-term memor...
For training a few-shot keyword spotting (FS-KWS) model, a large labeled dataset containing massive ...
This study presents a novel zero-shot user-defined keyword spotting model that utilizes the audio-ph...
In recent years, the development of accurate deep keyword spotting (KWS) models has resulted in KWS ...
User-defined keyword spotting is a task to detect new spoken terms defined by users. This can be vie...
Our application requires a keyword spotting system with a small memory footprint, low computational ...
In the context of keyword spotting (KWS), the replacement of handcrafted speech features by learnabl...
This paper describes an end-to-end approach to perform keyword spotting with a pre-trained acoustic ...
Building a small memory footprint keyword spotting model is important as it typically runs on mobil...
Keyword spotting has been widely used in smart homes and mobile devices, where the goal is to achiev...
International audienceLong Short-Term Memory (LSTM) neural networks offer state-of-the-art results t...
Models based on attention mechanisms have shown unprecedented speech recognition performance. Howeve...
\u3cp\u3eWith the increasing demand on voice recognition services, more attention is paid to simpler...
Keyword Spotting (KWS) systems allow detecting a set of spoken (pre-defined) keywords. Open-vocabula...
Voice user interfaces have been growing in popularity and with them an interest for open vocabulary ...
We present a novel approach to query-by-example keyword spotting (KWS) using a long short-term memor...