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dc.contributor.authorTrifa, V. M.en
dc.contributor.authorKirschel, A. N. G.en
dc.contributor.authorTaylor, C. E.en
dc.contributor.authorVallejo, E. E.en
dc.creatorTrifa, V. M.en
dc.creatorKirschel, A. N. G.en
dc.creatorTaylor, C. E.en
dc.creatorVallejo, E. E.en
dc.date.accessioned2019-11-04T12:52:47Z
dc.date.available2019-11-04T12:52:47Z
dc.date.issued2008
dc.identifier.urihttp://gnosis.library.ucy.ac.cy/handle/7/53422
dc.description.abstractBehavioral and ecological studies would benefit from the ability to automatically identify species from acoustic recordings. The work presented in this article explores the ability of hidden Markov models to distinguish songs from five species of antbirds that share the same territory in a rainforest environment in Mexico. When only clean recordings were used, species recognition was nearly perfect, 99.5%. With noisy recordings, performance was lower but generally exceeding 90%. Besides the quality of the recordings, performance has been found to be heavily influenced by a multitude of factors, such as the size of the training set, the feature extraction method used, and number of states in the Markov model. In general, training with noisier data also improved recognition in test recordings, because of an increased ability to generalize. Considerations for improving performance, including beamforming with sensor arrays and design of preprocessing methods particularly suited for bird songs, are discussed. Combining sensor network technology with effective event detection and species identification algorithms will enable observation of species interactions at a spatial and temporal resolution that is simply impossible with current tools. Analysis of animal behavior through real-time tracking of individuals and recording of large amounts of data with embedded devices in remote locations is thus a realistic goal. © 2008 Acoustical Society of America.en
dc.sourceJournal of the Acoustical Society of Americaen
dc.source.urihttps://www.scopus.com/inward/record.uri?eid=2-s2.0-41849146757&doi=10.1121%2f1.2839017&partnerID=40&md5=3941881004f3c52f6091dfbdf6b7e179
dc.subjectEcologyen
dc.subjectmodelen
dc.subjectarticleen
dc.subjectalgorithmen
dc.subjectpriority journalen
dc.subjectnonhumanen
dc.subjectAnimalsen
dc.subjectHidden Markov modelsen
dc.subjectForestryen
dc.subjectmathematical computingen
dc.subjecttechniqueen
dc.subjectNoiseen
dc.subjectmeasurementen
dc.subjecttechnologyen
dc.subjectMexicoen
dc.subjectTreesen
dc.subjectBehavior, Animalen
dc.subjectbirden
dc.subjectBirdsen
dc.subjectSpecies recognitionen
dc.subjectanimal behavioren
dc.subjectrain foresten
dc.subjectspecies identificationen
dc.subjectSound Spectrographyen
dc.subjectAcoustic Insulationen
dc.subjectAcoustic intensityen
dc.subjectAntbirdsen
dc.subjectauditory discriminationen
dc.subjectAuditory Perceptionen
dc.subjectAutomatic Data Processingen
dc.subjectautomationen
dc.subjectEcholocationen
dc.subjectMarkov Chainsen
dc.subjectparameteren
dc.subjectRainforestsen
dc.subjectRecognition (Psychology)en
dc.subjectSpeech recognitionen
dc.titleAutomated species recognition of antbirds in a Mexican rainforest using hidden Markov modelsen
dc.typeinfo:eu-repo/semantics/article
dc.identifier.doi10.1121/1.2839017
dc.description.volume123
dc.description.startingpage2424
dc.description.endingpage2431
dc.author.facultyΣχολή Θετικών και Εφαρμοσμένων Επιστημών / Faculty of Pure and Applied Sciences
dc.author.departmentΤμήμα Βιολογικών Επιστημών / Department of Biological Sciences
dc.type.uhtypeArticleen
dc.description.notes<p>Cited By :87</p>en
dc.source.abbreviationJ.Acoust.Soc.Am.en
dc.contributor.orcidKirschel, A. N. G. [0000-0003-4379-7956]
dc.gnosis.orcid0000-0003-4379-7956


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