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Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures

SIMPLE SUMMARY: This study employs Fully Convolutional Regression Networks (FCRN) and U-Shaped Convolutional Network for Image Segmentation (U-Net) architectures tailored to the dataset containing dropping images of dairy cows collected from three different private dairy farms in Nigde. The main pur...

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Autores principales: Özden, Cevher, Bulut, Mutlu, Çanga Boğa, Demet, Boğa, Mustafa
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9866369/
https://www.ncbi.nlm.nih.gov/pubmed/36669033
http://dx.doi.org/10.3390/vetsci10010032
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author Özden, Cevher
Bulut, Mutlu
Çanga Boğa, Demet
Boğa, Mustafa
author_facet Özden, Cevher
Bulut, Mutlu
Çanga Boğa, Demet
Boğa, Mustafa
author_sort Özden, Cevher
collection PubMed
description SIMPLE SUMMARY: This study employs Fully Convolutional Regression Networks (FCRN) and U-Shaped Convolutional Network for Image Segmentation (U-Net) architectures tailored to the dataset containing dropping images of dairy cows collected from three different private dairy farms in Nigde. The main purpose of this study is to detect the number of undigested grains in dropping images in order to give some useful feedback to raiser. It is a novel study that uses two different regression neural networks on object counting in dropping images. To our knowledge, it is the first study that counts objects in dropping images and provides information of how effectively dairy cows digest their daily rations. ABSTRACT: Deep learning algorithms can now be used to identify, locate, and count items in an image thanks to advancements in image processing technology. The successful application of image processing technology in different fields has attracted much attention in the field of agriculture in recent years. This research was done to ascertain the number of indigestible cereal grains in animal feces using an image processing method. In this study, a regression-based way of object counting was used to predict the number of cereal grains in the feces. For this purpose, we have developed two different neural network architectures based upon Fully Convolutional Regression Networks (FCRN) and U-Net. The images used in the study were obtained from three different dairy cows enterprises operating in Nigde Province. The dataset consists of the 277 distinct dropping images of dairy cows in the farm. According to findings of the study, both models yielded quite acceptable prediction accuracy with U-Net providing slightly better prediction with a MAE value of 16.69 in the best case, compared to 23.65 MAE value of FCRN with the same batch.
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spelling pubmed-98663692023-01-22 Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures Özden, Cevher Bulut, Mutlu Çanga Boğa, Demet Boğa, Mustafa Vet Sci Article SIMPLE SUMMARY: This study employs Fully Convolutional Regression Networks (FCRN) and U-Shaped Convolutional Network for Image Segmentation (U-Net) architectures tailored to the dataset containing dropping images of dairy cows collected from three different private dairy farms in Nigde. The main purpose of this study is to detect the number of undigested grains in dropping images in order to give some useful feedback to raiser. It is a novel study that uses two different regression neural networks on object counting in dropping images. To our knowledge, it is the first study that counts objects in dropping images and provides information of how effectively dairy cows digest their daily rations. ABSTRACT: Deep learning algorithms can now be used to identify, locate, and count items in an image thanks to advancements in image processing technology. The successful application of image processing technology in different fields has attracted much attention in the field of agriculture in recent years. This research was done to ascertain the number of indigestible cereal grains in animal feces using an image processing method. In this study, a regression-based way of object counting was used to predict the number of cereal grains in the feces. For this purpose, we have developed two different neural network architectures based upon Fully Convolutional Regression Networks (FCRN) and U-Net. The images used in the study were obtained from three different dairy cows enterprises operating in Nigde Province. The dataset consists of the 277 distinct dropping images of dairy cows in the farm. According to findings of the study, both models yielded quite acceptable prediction accuracy with U-Net providing slightly better prediction with a MAE value of 16.69 in the best case, compared to 23.65 MAE value of FCRN with the same batch. MDPI 2023-01-01 /pmc/articles/PMC9866369/ /pubmed/36669033 http://dx.doi.org/10.3390/vetsci10010032 Text en © 2023 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
Özden, Cevher
Bulut, Mutlu
Çanga Boğa, Demet
Boğa, Mustafa
Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures
title Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures
title_full Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures
title_fullStr Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures
title_full_unstemmed Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures
title_short Determination of Non-Digestible Parts in Dairy Cattle Feces Using U-NET and F-CRN Architectures
title_sort determination of non-digestible parts in dairy cattle feces using u-net and f-crn architectures
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9866369/
https://www.ncbi.nlm.nih.gov/pubmed/36669033
http://dx.doi.org/10.3390/vetsci10010032
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