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Real-Time Pig Segmentation for Individual Pig Monitoring in a Weaning Pig Room
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 Title & Authors
Real-Time Pig Segmentation for Individual Pig Monitoring in a Weaning Pig Room
Ju, Miso; Baek, Hansol; Sa, Jaewon; Kim, Heegon; Chung, Yongwha; Park, Daihee;
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 Abstract
To reduce huge losses in pig farms, weaning pigs with weak immune systems are required to be carefully supervised. Even if various researches have been performed for livestock monitoring environment, segmenting each pig from touching pigs is still entrenched as a difficult problem. In this paper, we propose a real-time segmentation method for moving pigs by using motion information in a 24-h video surveillance system. The experimental results with the videos obtained from a domestic pig farm illustrated the possibility for segmenting by using our proposed method in real-time.
 Keywords
Livestock Monitoring Environment;Video Surveillance System;Real-time Segmentation;
 Language
Korean
 Cited by
1.
오목점과 에지 정보를 이용한 돼지의 경계 구분,백한솔;정연우;주미소;정용화;박대희;김학재;

한국멀티미디어학회논문지, 2016. vol.19. 8, pp.1361-1370 crossref(new window)
1.
Pig Segmentation using Concave-Points and Edge Information, Journal of Korea Multimedia Society, 2016, 19, 8, 1361  crossref(new windwow)
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