TY - JOUR
T1 - Pipistrellus pipistrellus and Pipistrellus pygmaeus in the iberian peninsula
T2 - An annotated segmented dataset and a proof of concept of a classifier in a real environment
AU - Bertran, Marta
AU - Alsina-Pagès, Rosa Ma
AU - Tena, Elena
N1 - Funding Information:
Ministry of Education and Vocational Training, Obra Social La Caixa, Council for Culture, Education and Sport in the Autonomous Community in Madrid and European Social Fund. Marta Bertran Ferrer thanks the Ministry of Education and Vocational Training, and Administration of the Generalitat of Catalunya for the grant Collaboration scholarships for students in university departments for the academic year 2018-2019 (BOE núm. 194, 11.08.2018). Rosa Ma Alsina-Pagès thanks the Obra Social La Caixa for grant ref. 2018-URL-IR2nQ-038. Elena Tena would like to thank her PhD supervisors, José Luis Tellería (UCM) and óscar de Paz (UAH), and her contract by the Council for Culture, Education and Sport in the Autonomous Community of Madrid and European Social Fund. The authors would like to thank José A. Díaz (UCM), to connect the dots and introduce the two scientific teams.
Funding Information:
Acknowledgments: Marta Bertran Ferrer thanks the Ministry of Education and Vocational Training, and Administration of the Generalitat of Catalunya for the grant Collaboration scholarships for students in university departments for the academic year 2018–2019 (BOE núm. 194, 11.08.2018). Rosa Ma Alsina-Pagès thanks the Obra Social La Caixa for grant ref. 2018-URL-IR2nQ-038. Elena Tena would like to thank her PhD supervisors, José Luis Tellería (UCM) and Óscar de Paz (UAH), and her contract by the Council for Culture, Education and Sport in the Autonomous Community of Madrid and European Social Fund. The authors would like to thank José A. Díaz (UCM), to connect the dots and introduce the two scientific teams.
Publisher Copyright:
© 2019 by the authors.
PY - 2019/9/1
Y1 - 2019/9/1
N2 - Bats have an important role in the ecosystem, and therefore an effective detection of their prevalence can contribute to their conservation. At present, the most commonly methodology used in the study of bats is the analysis of echolocation calls. However, many other ultrasound signals can be simultaneously recorded, and this makes species location and identification a long and difficult task. This field of research could be greatly improved through the use of bioacoustics which provide a more accurate automated detection, identification and count of the wildlife of a particular area. We have analyzed the calls of two bat species-Pipistrellus pipistrellus and Pipistrellus pygmaeus-both of which are common types of bats frequently found in the Iberian Peninsula. These two cryptic species are difficult to identify by their morphological features, but are more easily identified by their echolocation calls. The real-life audio files have been obtained by an Echo Meter Touch Pro 1 bat detector. Time-expanded recordings of calls were first classified manually by means of their frequency, duration and interpulse interval. In this paper, we first detail the creation of a dataset with three classes, which are the two bat species but also the silent intervals. This dataset can be useful to work in mixed species environment. Afterwards, two automatic bat detection and identification machine learning approaches are described, in a laboratory environment, which represent the previous step to real-life in an urban scenario. The priority in that approaches design is the identification using short window analysis in order to detect each bat pulse. However, given that we are concerned with the risks of automatic identification, the main aim of the project is to accelerate the manual ID process for the specialists in the field. The dataset provided will help researchers develop automatic recognition systems for a more accurate identification of the bat species in a laboratory environment, and in a near future, in an urban environment, where those two bat species are common.
AB - Bats have an important role in the ecosystem, and therefore an effective detection of their prevalence can contribute to their conservation. At present, the most commonly methodology used in the study of bats is the analysis of echolocation calls. However, many other ultrasound signals can be simultaneously recorded, and this makes species location and identification a long and difficult task. This field of research could be greatly improved through the use of bioacoustics which provide a more accurate automated detection, identification and count of the wildlife of a particular area. We have analyzed the calls of two bat species-Pipistrellus pipistrellus and Pipistrellus pygmaeus-both of which are common types of bats frequently found in the Iberian Peninsula. These two cryptic species are difficult to identify by their morphological features, but are more easily identified by their echolocation calls. The real-life audio files have been obtained by an Echo Meter Touch Pro 1 bat detector. Time-expanded recordings of calls were first classified manually by means of their frequency, duration and interpulse interval. In this paper, we first detail the creation of a dataset with three classes, which are the two bat species but also the silent intervals. This dataset can be useful to work in mixed species environment. Afterwards, two automatic bat detection and identification machine learning approaches are described, in a laboratory environment, which represent the previous step to real-life in an urban scenario. The priority in that approaches design is the identification using short window analysis in order to detect each bat pulse. However, given that we are concerned with the risks of automatic identification, the main aim of the project is to accelerate the manual ID process for the specialists in the field. The dataset provided will help researchers develop automatic recognition systems for a more accurate identification of the bat species in a laboratory environment, and in a near future, in an urban environment, where those two bat species are common.
KW - Acoustic bat recognition
KW - Bat call
KW - Chiropthera
KW - Convolutional Neural Network
KW - Dataset
KW - Dataset
KW - Echolocation
KW - Feedforward Neural Network
KW - Machine learning
KW - Ultrasounds
KW - Wireless Acoustic Sensor Network
UR - http://www.scopus.com/inward/record.url?scp=85072261828&partnerID=8YFLogxK
U2 - 10.3390/app9173467
DO - 10.3390/app9173467
M3 - Article
AN - SCOPUS:85072261828
SN - 2076-3417
VL - 9
JO - Applied Sciences (Switzerland)
JF - Applied Sciences (Switzerland)
IS - 17
M1 - 3467
ER -