Abstract

Excessive inactivity in farm animals can be an early indication of illness. Traditional way for detecting excessive inactivity in pigs relies on manual inspection which can be laborious and especially time-consuming. This paper proposed a computer vision system that could detect inactivity of individual pigs housed in group pens which is potential in alarming the farmer of the animals concerned. The system recorded sequential depth images for the animals in a pen and implemented a proposed image processing and logic analysis scheme named as ‘DepInact’ to keep track of the inactive time of group-housed individual pigs over time. To verify the robustness and accuracy of the developed system, a total of 656 pairs of corresponding depth data and color images, consecutively taken 4 s apart from each other, were attained. The verification process involved manually identifying all pigs using the color images captured. The results of identification of all pigs that were inactive for more than the preset period of time by DepInact were compared to those by manual inspection through the color images captured. An accuracy of 85.7% was achieved using the verification data, thus demonstrating that the developed system is a viable alternative to manual detection of inactivity of group-housed pigs. Nevertheless, more research is still needed to improve the accuracy of the developed system. Keywords: Matlab, computer vision, sows, machine vision, depth image, pigs, inactivity DOI: 10.25165/j.ijabe.20201301.5030 Citation: Ojukwu C C, Feng Y Z, Jia G F, Zhao H T, Tan H Q. Development of a computer vision system to detect inactivity in group-housed pigs. Int J Agric & Biol Eng, 2020; 13(1): 42–46.

Highlights

  • Advancements in camera technology have triggered the extensive use of computer vision techniques in agricultural automation

  • This paper proposed a computer vision system that could detect inactivity of individual pigs housed in group pens which is potential in alarming the farmer of the animals concerned

  • Various researchers have tried to measure activity in animals by, for example, manually assigning gait scores to animals and comparing the scores to activity levels observed through image analysis[6,7], but most of these researches only consider the animal in motion[8,9] and do not factor in the length of time the animal stays immobile in a particular position

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Summary

Introduction

Advancements in camera technology have triggered the extensive use of computer vision techniques in agricultural automation. This has enabled automation in many farm operations that are labor-intensive and costly when handled manually. Computer vision techniques generally offer the advantage of being non-invasive and non-intrusive which has encouraged their application in the agricultural farming sector[1]. These applications range from weight estimation[2,3] to behavior monitoring[4], to tracking[5]. Various researchers have tried to measure activity in animals by, for example, manually assigning gait scores to animals and comparing the scores to activity levels observed through image analysis[6,7], but most of these researches only consider the animal in motion[8,9] and do not factor in the length of time the animal stays immobile in a particular position.

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