Cargando…

Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys

SIMPLE SUMMARY: Injurious pecking against conspecifics in turkey husbandry is a widespread, serious problem for animal welfare. Evidence suggests that bloody injuries act as a trigger mechanism to induce pecking. Thus, continuous monitoring of the herd should be ensured to allow timely intervention...

Descripción completa

Detalles Bibliográficos
Autores principales: Volkmann, Nina, Brünger, Johannes, Stracke, Jenny, Zelenka, Claudius, Koch, Reinhard, Kemper, Nicole, Spindler, Birgit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8469856/
https://www.ncbi.nlm.nih.gov/pubmed/34573621
http://dx.doi.org/10.3390/ani11092655
_version_ 1784574046673829888
author Volkmann, Nina
Brünger, Johannes
Stracke, Jenny
Zelenka, Claudius
Koch, Reinhard
Kemper, Nicole
Spindler, Birgit
author_facet Volkmann, Nina
Brünger, Johannes
Stracke, Jenny
Zelenka, Claudius
Koch, Reinhard
Kemper, Nicole
Spindler, Birgit
author_sort Volkmann, Nina
collection PubMed
description SIMPLE SUMMARY: Injurious pecking against conspecifics in turkey husbandry is a widespread, serious problem for animal welfare. Evidence suggests that bloody injuries act as a trigger mechanism to induce pecking. Thus, continuous monitoring of the herd should be ensured to allow timely intervention in this type of behavior. The aim of the present study was therefore to develop a camera-based warning system using a neural network to detect injuries in the flock. The data for the network were provided by images on which human observers marked existing pecking injuries. Then, a network was trained with these human-labeled images in order to learn to detect pecking injuries on other unknown images from the same domain. As the initial agreement on the injuries detected by human observers and the trained network was unacceptable, various work steps were initiated to improve the data that were used to train the network. Finally, the aim of this process was for the network to achieve at least a similar ability to mark injuries in the images as a trained human observer. ABSTRACT: This study aimed to develop a camera-based system using artificial intelligence for automated detection of pecking injuries in turkeys. Videos were recorded and split into individual images for further processing. Using specifically developed software, the injuries visible on these images were marked by humans, and a neural network was trained with these annotations. Due to unacceptable agreement between the annotations of humans and the network, several work steps were initiated to improve the training data. First, a costly work step was used to create high-quality annotations (HQA) for which multiple observers evaluated already annotated injuries. Therefore, each labeled detection had to be validated by three observers before it was saved as “finished”, and for each image, all detections had to be verified three times. Then, a network was trained with these HQA to assist observers in annotating more data. Finally, the benefit of the work step generating HQA was tested, and it was shown that the value of the agreement between the annotations of humans and the network could be doubled. Although the system is not yet capable of ensuring adequate detection of pecking injuries, the study demonstrated the importance of such validation steps in order to obtain good training data.
format Online
Article
Text
id pubmed-8469856
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-84698562021-09-27 Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys Volkmann, Nina Brünger, Johannes Stracke, Jenny Zelenka, Claudius Koch, Reinhard Kemper, Nicole Spindler, Birgit Animals (Basel) Article SIMPLE SUMMARY: Injurious pecking against conspecifics in turkey husbandry is a widespread, serious problem for animal welfare. Evidence suggests that bloody injuries act as a trigger mechanism to induce pecking. Thus, continuous monitoring of the herd should be ensured to allow timely intervention in this type of behavior. The aim of the present study was therefore to develop a camera-based warning system using a neural network to detect injuries in the flock. The data for the network were provided by images on which human observers marked existing pecking injuries. Then, a network was trained with these human-labeled images in order to learn to detect pecking injuries on other unknown images from the same domain. As the initial agreement on the injuries detected by human observers and the trained network was unacceptable, various work steps were initiated to improve the data that were used to train the network. Finally, the aim of this process was for the network to achieve at least a similar ability to mark injuries in the images as a trained human observer. ABSTRACT: This study aimed to develop a camera-based system using artificial intelligence for automated detection of pecking injuries in turkeys. Videos were recorded and split into individual images for further processing. Using specifically developed software, the injuries visible on these images were marked by humans, and a neural network was trained with these annotations. Due to unacceptable agreement between the annotations of humans and the network, several work steps were initiated to improve the training data. First, a costly work step was used to create high-quality annotations (HQA) for which multiple observers evaluated already annotated injuries. Therefore, each labeled detection had to be validated by three observers before it was saved as “finished”, and for each image, all detections had to be verified three times. Then, a network was trained with these HQA to assist observers in annotating more data. Finally, the benefit of the work step generating HQA was tested, and it was shown that the value of the agreement between the annotations of humans and the network could be doubled. Although the system is not yet capable of ensuring adequate detection of pecking injuries, the study demonstrated the importance of such validation steps in order to obtain good training data. MDPI 2021-09-09 /pmc/articles/PMC8469856/ /pubmed/34573621 http://dx.doi.org/10.3390/ani11092655 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Volkmann, Nina
Brünger, Johannes
Stracke, Jenny
Zelenka, Claudius
Koch, Reinhard
Kemper, Nicole
Spindler, Birgit
Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys
title Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys
title_full Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys
title_fullStr Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys
title_full_unstemmed Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys
title_short Learn to Train: Improving Training Data for a Neural Network to Detect Pecking Injuries in Turkeys
title_sort learn to train: improving training data for a neural network to detect pecking injuries in turkeys
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8469856/
https://www.ncbi.nlm.nih.gov/pubmed/34573621
http://dx.doi.org/10.3390/ani11092655
work_keys_str_mv AT volkmannnina learntotrainimprovingtrainingdataforaneuralnetworktodetectpeckinginjuriesinturkeys
AT brungerjohannes learntotrainimprovingtrainingdataforaneuralnetworktodetectpeckinginjuriesinturkeys
AT strackejenny learntotrainimprovingtrainingdataforaneuralnetworktodetectpeckinginjuriesinturkeys
AT zelenkaclaudius learntotrainimprovingtrainingdataforaneuralnetworktodetectpeckinginjuriesinturkeys
AT kochreinhard learntotrainimprovingtrainingdataforaneuralnetworktodetectpeckinginjuriesinturkeys
AT kempernicole learntotrainimprovingtrainingdataforaneuralnetworktodetectpeckinginjuriesinturkeys
AT spindlerbirgit learntotrainimprovingtrainingdataforaneuralnetworktodetectpeckinginjuriesinturkeys