Muzzle-Based Cattle Identification System Using Artificial Intelligence (AI)
Absence of tamper-proof cattle identification technology was a significant problem preventing insurance companies from providing livestock insurance. This lack of technology had devastating financial consequences for marginal farmers as they did not have the opportunity to claim compensation for any...
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Main Authors | , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
08.07.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Absence of tamper-proof cattle identification technology was a significant
problem preventing insurance companies from providing livestock insurance. This
lack of technology had devastating financial consequences for marginal farmers
as they did not have the opportunity to claim compensation for any unexpected
events such as the accidental death of cattle in Bangladesh. Using machine
learning and deep learning algorithms, we have solved the bottleneck of cattle
identification by developing and introducing a muzzle-based cattle
identification system. The uniqueness of cattle muzzles has been scientifically
established, which resembles human fingerprints. This is the fundamental
premise that prompted us to develop a cattle identification system that
extracts the uniqueness of cattle muzzles. For this purpose, we collected
32,374 images from 826 cattle. Contrast-limited adaptive histogram equalization
(CLAHE) with sharpening filters was applied in the preprocessing steps to
remove noise from images. We used the YOLO algorithm for cattle muzzle
detection in the image and the FaceNet architecture to learn unified embeddings
from muzzle images using squared $L_2$ distances. Our system performs with an
accuracy of $96.489\%$, $F_1$ score of $97.334\%$, and a true positive rate
(tpr) of $87.993\%$ at a remarkably low false positive rate (fpr) of $0.098\%$.
This reliable and efficient system for identifying cattle can significantly
advance livestock insurance and precision farming. |
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DOI: | 10.48550/arxiv.2407.06096 |