| Literature DB >> 33535390 |
Dae-Hyun Jung1, Na Yeon Kim2,3, Sang Ho Moon2, Changho Jhin1,4, Hak-Jin Kim5, Jung-Seok Yang1, Hyoung Seok Kim1, Taek Sung Lee1, Ju Young Lee1, Soo Hyun Park1.
Abstract
The priority placed on animal welfare in the meat industry is increasing the importance of understanding livestock behavior. In this study, we developed a web-based monitoring and recording system based on artificial intelligence analysis for the classification of cattle sounds. The deep learning classification model of the system is a convolutional neural network (CNN) model that takes voice information converted to Mel-frequency cepstral coefficients (MFCCs) as input. The CNN model first achieved an accuracy of 91.38% in recognizing cattle sounds. Further, short-time Fourier transform-based noise filtering was applied to remove background noise, improving the classification model accuracy to 94.18%. Categorized cattle voices were then classified into four classes, and a total of 897 classification records were acquired for the classification model development. A final accuracy of 81.96% was obtained for the model. Our proposed web-based platform that provides information obtained from a total of 12 sound sensors provides cattle vocalization monitoring in real time, enabling farm owners to determine the status of their cattle.Entities:
Keywords: MFCC; cattle vocalization; convolutional neural network; sound classification
Year: 2021 PMID: 33535390 PMCID: PMC7911430 DOI: 10.3390/ani11020357
Source DB: PubMed Journal: Animals (Basel) ISSN: 2076-2615 Impact factor: 2.752