'houston, we have a solution': a case study of the analysis of astronaut speech during NASA apollo 11 for long-term speaker modeling
نویسندگان
چکیده
Speech and language processing technology has the potential of playing an important role in future deep space missions. To be able to replicate the success of speech technologies from ground to space, it is important to understand how astronaut’s speech production mechanism changes when they are in space. In this study, we investigate the variations of astronaut’s voice characteristic during NASA Apollo 11 mission. While the focus is constrained to analysis of the three astronauts voices who participated in the Apollo 11 mission, it is the first step towards our long term objective of automating large components of space missions with speech and language technology. The result of this study is also significant from an historical point of view as it provides a new perspective of understanding the key moment of human history landing a man on the moon, as well as employed for future advancement in speech and language technology in “non-neutral”conditions.
منابع مشابه
'houston, we have a solution': using NASA apollo program to advance speech and language processing technology
NASA’s Apollo program stands as one of mankind’s greatest achievements in the 20th century. During a span of 4 years (from 1968 to 1972), a total of 9 lunar missions were launched and 12 astronauts walked on the surface of the moon. It was one the most complex operations executed from scientific, technological and operational perspectives. In this paper, we describe our recent efforts in gather...
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