作者
Mark D Skowronski, John G Harris
发表日期
2006/3/1
期刊
The Journal of the Acoustical Society of America
卷号
119
期号
3
页码范围
1817-1833
出版商
AIP Publishing
简介
Current automatic acoustic detection and classification of microchiroptera utilize global features of individual calls (ie, duration, bandwidth, frequency extrema), an approach that stems from expert knowledge of call sonograms. This approach parallels the acoustic phonetic paradigm of human automatic speech recognition (ASR), which relied on expert knowledge to account for variations in canonical linguistic units. ASR research eventually shifted from acoustic phonetics to machine learning, primarily because of the superior ability of machine learning to account for signal variation. To compare machine learning with conventional methods of detection and classification, nearly 3000 search-phase calls were hand labeled from recordings of five species: Pipistrellus bodenheimeri, Molossus molossus, Lasiurus borealis, L. cinereus semotus, and Tadarida brasiliensis. The hand labels were used to train two machine …
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