A high-quality orthographic transcript is the basis for all types of analyses of spoken language data. However, transcribing speech is a time-consuming and tedious task. But automatic speech recognition as well as NLP and text annotation tools can make this task much quicker and save you a lot of time and frustration. In this first of a series of SSHOC webinars, organised by the consortium partner CLARIN ERIC, we will discuss the theoretical basis and the technology available for transcribing spoken language. In particular, we will focus on the role of automatic speech recognition – what are the opportunities, what are the pitfalls and to where can it be applied successfully. ABOUT THE WEBINAR Introduction to working with interview data....
The corpus consists of recordings from the Chamber of Deputies of the Parliament of the Czech Republ...
Currently, the entire process for a single interview takes between 10 and 15 hours to complete. The ...
Contains fulltext : 41404.pdf (publisher's version ) (Open Access)Each time a word...
This deliverable is the first associated with Task 4.4. Voice recorded interviews and audio analysis...
In Munich, from 19 to 21 September 2018, a group of speech technologists, social scientists, linguis...
This deliverable is the first associated with Task 4.4. Voice recorded interviews and audio analysis...
Transcribing interview data is a time-consuming task that most qualitative researchers dislike. Tran...
Webcasts are an emerging technology enabled by the expanding availability and capacity of the World ...
textabstractThis book chapter presents an overview of the techniques from the field of automatic spe...
This book chapter presents an overview of the techniques from the field of automatic speech recognit...
Transcribing lectures is a challenging task, both in acoustic and in language modeling. In this work...
Survey Infrastructures systematically interview tens of thousands of individuals across Europe each ...
This paper describes a new Slovak speech recognition dedicated corpus built from TEDx talks and Jump...
The study outlined in this paper addresses the question: Does the use of speech recognition software...
Abstract — Natural Language Processing is a technique where machine can become more human and thereb...
The corpus consists of recordings from the Chamber of Deputies of the Parliament of the Czech Republ...
Currently, the entire process for a single interview takes between 10 and 15 hours to complete. The ...
Contains fulltext : 41404.pdf (publisher's version ) (Open Access)Each time a word...
This deliverable is the first associated with Task 4.4. Voice recorded interviews and audio analysis...
In Munich, from 19 to 21 September 2018, a group of speech technologists, social scientists, linguis...
This deliverable is the first associated with Task 4.4. Voice recorded interviews and audio analysis...
Transcribing interview data is a time-consuming task that most qualitative researchers dislike. Tran...
Webcasts are an emerging technology enabled by the expanding availability and capacity of the World ...
textabstractThis book chapter presents an overview of the techniques from the field of automatic spe...
This book chapter presents an overview of the techniques from the field of automatic speech recognit...
Transcribing lectures is a challenging task, both in acoustic and in language modeling. In this work...
Survey Infrastructures systematically interview tens of thousands of individuals across Europe each ...
This paper describes a new Slovak speech recognition dedicated corpus built from TEDx talks and Jump...
The study outlined in this paper addresses the question: Does the use of speech recognition software...
Abstract — Natural Language Processing is a technique where machine can become more human and thereb...
The corpus consists of recordings from the Chamber of Deputies of the Parliament of the Czech Republ...
Currently, the entire process for a single interview takes between 10 and 15 hours to complete. The ...
Contains fulltext : 41404.pdf (publisher's version ) (Open Access)Each time a word...