Yıl: 2022 Cilt: 8 Sayı: 1 Sayfa Aralığı: 158 - 167 Metin Dili: İngilizce DOI: 10.30855/gmbd.2022.01.15 İndeks Tarihi: 29-07-2022

Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn

Öz:
In precision livestock, there has been a growing demand for innovative tools that collect and analyze information about individual animals. For this purpose, various variables of precision livestock such as monitoring the general condition of animals, activity and health status, food intake, or estrous activity are measured by using information technology. In recent years, the requirement for sound analysis to be used in these systems has increased. Because collecting sound signals do not require animal intervention. Dairy cattle make different sounds in cases of illness, pregnancy, feeding, etc., and by using sound signals, the diagnosis and status determination of the animal can be made. The aim of this study is to record the vocalization data of a dairy cattle in a semi-open barn and to investigate its differences from other barn sounds. It has been revealed that the frequency ranges of cattle, environment, bird, and machine sounds, which are analyzed by time domain, frequency domain, and spectrogram, are different and these differences can be used in a cattle identification system.
Anahtar Kelime: spectrogram cattle vocalization sound analysis

Yarı-açık bir Ahırda Sığır Vokalizasyonunu Tanımak için Ses Analizi

Öz:
Hassas hayvancılıkta, hayvanlar hakkında bilgi toplayan ve analiz eden yenilikçi araçlara yönelik artan bir talep vardır. Bu amaçla, hayvanların genel durumlarının izlenmesi, aktivite ve sağlık durumu, gıda alımı veya kızgınlık aktivitesi gibi hassas hayvancılığın çeşitli değişkenleri bilgi teknolojileri kullanılarak ölçülür. Son yıllarda bu sistemlerde kullanılacak ses analizlerine olan ihtiyaç artmıştır. Çünkü ses sinyallerini toplamak hayvan müdahalesi gerektirmez. Süt sığırları hastalık, hamilelik, beslenme vb. durumlarda farklı sesler çıkarır ve ses sinyalleri kullanılarak hayvanın teşhis ve durum tespiti yapılabilmektedir. Bu çalışmanın amacı, ahırda bulunan bir süt sığırının vokalizasyon verilerini kayıt altına almak ve diğer ahır seslerinden farkını araştırmaktır. Zaman domeni, frekans domeni ve spektrogram ile analiz edilen sığır, ortam, kuş ve makine seslerinin frekans aralıklarının farklı olduğu ve bu farklılıkların bir sığır tanımlama sisteminde kullanılabileceği ortaya konulmuştur
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Diğer Erişim Türü: Erişime Açık
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APA ÖZMEN G, OZKAN I, INAL S, Tasdemir S, Çam M, ARSLAN E (2022). Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. , 158 - 167. 10.30855/gmbd.2022.01.15
Chicago ÖZMEN GÜZİN,OZKAN ILKER ALI,INAL SEREF,Tasdemir Sakir,Çam Mustafa,ARSLAN Emre Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. (2022): 158 - 167. 10.30855/gmbd.2022.01.15
MLA ÖZMEN GÜZİN,OZKAN ILKER ALI,INAL SEREF,Tasdemir Sakir,Çam Mustafa,ARSLAN Emre Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. , 2022, ss.158 - 167. 10.30855/gmbd.2022.01.15
AMA ÖZMEN G,OZKAN I,INAL S,Tasdemir S,Çam M,ARSLAN E Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. . 2022; 158 - 167. 10.30855/gmbd.2022.01.15
Vancouver ÖZMEN G,OZKAN I,INAL S,Tasdemir S,Çam M,ARSLAN E Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. . 2022; 158 - 167. 10.30855/gmbd.2022.01.15
IEEE ÖZMEN G,OZKAN I,INAL S,Tasdemir S,Çam M,ARSLAN E "Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn." , ss.158 - 167, 2022. 10.30855/gmbd.2022.01.15
ISNAD ÖZMEN, GÜZİN vd. "Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn". (2022), 158-167. https://doi.org/10.30855/gmbd.2022.01.15
APA ÖZMEN G, OZKAN I, INAL S, Tasdemir S, Çam M, ARSLAN E (2022). Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. Gazi Mühendislik Bilimleri Dergisi, 8(1), 158 - 167. 10.30855/gmbd.2022.01.15
Chicago ÖZMEN GÜZİN,OZKAN ILKER ALI,INAL SEREF,Tasdemir Sakir,Çam Mustafa,ARSLAN Emre Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. Gazi Mühendislik Bilimleri Dergisi 8, no.1 (2022): 158 - 167. 10.30855/gmbd.2022.01.15
MLA ÖZMEN GÜZİN,OZKAN ILKER ALI,INAL SEREF,Tasdemir Sakir,Çam Mustafa,ARSLAN Emre Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. Gazi Mühendislik Bilimleri Dergisi, vol.8, no.1, 2022, ss.158 - 167. 10.30855/gmbd.2022.01.15
AMA ÖZMEN G,OZKAN I,INAL S,Tasdemir S,Çam M,ARSLAN E Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. Gazi Mühendislik Bilimleri Dergisi. 2022; 8(1): 158 - 167. 10.30855/gmbd.2022.01.15
Vancouver ÖZMEN G,OZKAN I,INAL S,Tasdemir S,Çam M,ARSLAN E Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn. Gazi Mühendislik Bilimleri Dergisi. 2022; 8(1): 158 - 167. 10.30855/gmbd.2022.01.15
IEEE ÖZMEN G,OZKAN I,INAL S,Tasdemir S,Çam M,ARSLAN E "Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn." Gazi Mühendislik Bilimleri Dergisi, 8, ss.158 - 167, 2022. 10.30855/gmbd.2022.01.15
ISNAD ÖZMEN, GÜZİN vd. "Sound Analysis to Recognize Cattle Vocalization in a Semi-open Barn". Gazi Mühendislik Bilimleri Dergisi 8/1 (2022), 158-167. https://doi.org/10.30855/gmbd.2022.01.15