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Automatic recording of individual oestrus vocalisation in group-housed dairy cattle: development of a cattle call monitor

Published online by Cambridge University Press:  01 August 2019

V. Röttgen
Affiliation:
Institute of Behavioural Physiology, Leibniz Institute for Farm Animal Biology (FBN), Wilhelm-Stahl-Allee 2, D-18196 Dummerstorf, Germany Institute of Reproductive Biology, Leibniz Institute for Farm Animal Biology (FBN), Wilhelm-Stahl-Allee 2, D-18196 Dummerstorf, Germany
P. C. Schön
Affiliation:
Institute of Behavioural Physiology, Leibniz Institute for Farm Animal Biology (FBN), Wilhelm-Stahl-Allee 2, D-18196 Dummerstorf, Germany
F. Becker
Affiliation:
Institute of Reproductive Biology, Leibniz Institute for Farm Animal Biology (FBN), Wilhelm-Stahl-Allee 2, D-18196 Dummerstorf, Germany
A. Tuchscherer
Affiliation:
Institute of Genetics and Biometry, Leibniz Institute for Farm Animal Biology (FBN), Wilhelm-Stahl-Allee 2, D-18196 Dummerstorf, Germany
C. Wrenzycki
Affiliation:
Clinic for Veterinary Obstetrics, Gynecology and Andrology, Faculty of Veterinary Medicine, Justus-Liebig-University Giessen, Frankfurter Straße 106, D-35392 Giessen, Germany
S. Düpjan*
Affiliation:
Institute of Behavioural Physiology, Leibniz Institute for Farm Animal Biology (FBN), Wilhelm-Stahl-Allee 2, D-18196 Dummerstorf, Germany
B. Puppe
Affiliation:
Institute of Behavioural Physiology, Leibniz Institute for Farm Animal Biology (FBN), Wilhelm-Stahl-Allee 2, D-18196 Dummerstorf, Germany Behavioural Sciences, Faculty of Agricultural and Environmental Sciences, University of Rostock, Justus-von-Liebig-Weg 7, D-18059 Rostock, Germany

Abstract

Oestrus detection remains a problem in the dairy cattle industry. Therefore, automatic detection systems have been developed to detect specific behavioural changes at oestrus. Vocal behaviour has not been considered in such automatic oestrus detection systems in cattle, though the vocalisation rate is known to increase during oestrus. The main challenge in using vocalisation to detect oestrus is correctly identifying the calling individual when animals are moving freely in large groups, as oestrus needs to be detected at an individual level. Therefore, we aimed to automate vocalisation recording and caller identification in group-housed dairy cows. This paper first presents the details of such a system and then presents the results of a pilot study validating its functionality, in which the automatic detection of calls from individual heifers was compared to video-based assessment of these calls by a trained human observer, a technique that has, until now, been considered the ‘gold standard’. We developed a collar-based cattle call monitor (CCM) with structure-borne and airborne sound microphones and a recording unit and developed a postprocessing algorithm to identify the caller by matching the information from both microphones. Five group-housed heifers, each in the perioestrus or oestrus period, were equipped with a CCM prototype for 5 days. The recorded audio data were subsequently analysed and compared with audiovisual recordings. Overall, 1404 vocalisations from the focus heifers and 721 vocalisations from group mates were obtained. Vocalisations during collar changes or malfunctions of the CCM were omitted from the evaluation. The results showed that the CCM had a sensitivity of 87% and a specificity of 94%. The negative and positive predictive values were 80% and 96%, respectively. These results show that the detection of individual vocalisations and the correct identification of callers are possible, even in freely moving group-housed cattle. The results are promising for the future use of vocalisation in automatic oestrus detection systems.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s) 2019
Figure 0

Figure 1 Picture of the collar-based cattle call monitor (CCM). The essential components and their location at the collar are marked either with arrows or written on the component itself.

Figure 1

Figure 2 Process of call recording. Program flow chart of the developed algorithm for caller identification in dairy cattle (Bos taurus).

Figure 2

Figure 3 Visualisation of caller identification. The picture shows the time signals of the airborne sound microphone (ABM, top row) and the structure-borne sound microphone (SBM, bottom row) for three possible scenarios in dairy cattle (Bos taurus): (a) a correctly detected call of the focus animal (match of ABM and SBM), (b) a correctly undetected call emitted by a group mate (mismatch of ABM and SBM) and (c) noise (correctly undetected; mismatch of ABM and SBM).

Figure 3

Table 1 Total number of vocalisations. Overview of the number of calls detected in dairy cattle (Bos taurus) by video observation and cattle call monitor (CCM) across subjects and the derived indices

Figure 4

Table 2. Individual detection rates and main detection errors. Individual call numbers, detection rates and the main detection errors (percentages unless indicated otherwise) of the five focus heifers (Bos taurus)

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