Automatic Speaker Diarization (ASD) is an enabling technology with numerous applications, which deals with recordings of multiple speakers, raising special concerns in terms of privacy. In fact, in remote settings, where recordings are shared with a server, clients relinquish not only the privacy of their conversation, but also of all the information that can be inferred from their voices. However, to the best of our knowledge, the development of privacy-preserving ASD systems has been overlooked thus far. In this work, we tackle this problem using a combination of two cryptographic techniques, Secure Multiparty Computation (SMC) and Secure Modular Hashing, and apply them to the two main steps of a cascaded ASD system: speaker embedding ext...
Abstract—Speech being a unique characteristic of an individual is widely used in speaker verificatio...
This paper presents a strategy for enabling speech recognition to be performed in the cloud whilst p...
The goal of this paper is to investigate features for speech/nonspeech detection (SND) having low li...
Voice assistive technologies have given rise to far-reaching privacy and security concerns. In this ...
The development of privacy-preserving automatic speaker verification systems has been the focus of a...
This paper investigates robust privacy-sensitive audio features for speaker diarization in multipart...
In this paper we investigate a set of privacy-sensitive audio features for speaker change detection ...
International audiencePrivacy preservation calls for speech anonymization methods which hide the spe...
Sharing real-world speech utterances is key to the training and deployment of voice-based services. ...
We present a comprehensive study of linear prediction residual for speaker diarization on single and...
Privacy preservation has long been a concern in smart acoustic monitoring systems, where speech can ...
Privacy and security are major concerns when communicating speech signals to cloud services such as ...
International audienceSharing real-world speech utterances is key to the training and deployment of ...
We present privacy-sensitive methods for (1) automatically finding multi-person conversations in spo...
This paper presents an overview of a strategy for enabling speech recognition to be performed in the...
Abstract—Speech being a unique characteristic of an individual is widely used in speaker verificatio...
This paper presents a strategy for enabling speech recognition to be performed in the cloud whilst p...
The goal of this paper is to investigate features for speech/nonspeech detection (SND) having low li...
Voice assistive technologies have given rise to far-reaching privacy and security concerns. In this ...
The development of privacy-preserving automatic speaker verification systems has been the focus of a...
This paper investigates robust privacy-sensitive audio features for speaker diarization in multipart...
In this paper we investigate a set of privacy-sensitive audio features for speaker change detection ...
International audiencePrivacy preservation calls for speech anonymization methods which hide the spe...
Sharing real-world speech utterances is key to the training and deployment of voice-based services. ...
We present a comprehensive study of linear prediction residual for speaker diarization on single and...
Privacy preservation has long been a concern in smart acoustic monitoring systems, where speech can ...
Privacy and security are major concerns when communicating speech signals to cloud services such as ...
International audienceSharing real-world speech utterances is key to the training and deployment of ...
We present privacy-sensitive methods for (1) automatically finding multi-person conversations in spo...
This paper presents an overview of a strategy for enabling speech recognition to be performed in the...
Abstract—Speech being a unique characteristic of an individual is widely used in speaker verificatio...
This paper presents a strategy for enabling speech recognition to be performed in the cloud whilst p...
The goal of this paper is to investigate features for speech/nonspeech detection (SND) having low li...