Abstract

For both pigs in commercial farms and biological experimental pigs at breeding bases, mounting behaviour is likely to cause damage such as epidermal wounds, lameness and fractures, and will no doubt reduce animal welfare. The purpose of this paper is to develop an efficient learning algorithm that is able to detect the mounting behaviour of pigs based on the data characteristics of visible light images. Four minipigs were selected as experimental subjects and were monitored for a week by a camera that overlooked the pen. The acquired videos were analysed and the frames containing mounting behaviour were intercepted as positive samples of the dataset, and the images with inter-pig adhesion and separated pigs were taken as negative samples. Pig segmentation network based on Mask Region-Convolutional Neural Networks (Mask R-CNN) was applied to extract individual pigs in the frames. The region of interest (RoI) parameters and mask coordinates of each pig, from which eigenvectors were extracted, could be obtained. Subsequently, the eigenvectors were classified with a kernel extreme learning machine (KELM) to determine whether mounting behaviour has occurred. The pig segmentation presented considerable accuracy and mean pixel accuracy (MPA) with 94.92% and 0.8383 respectively. The presented method showed high accuracy, sensitivity, specificity and Matthews correlation coefficient with 91.47%, 95.2%, 88.34% and 0.8324 respectively. This method can be an efficient way of solving the problem of segmentation difficulty caused by partial occlusion and adhesion of pig bodies, even if the pig body colour was similar to the background, in recognition of mounting behaviour.

Highlights

  • Intensive interaction among pigs is likely to bring negative effects to pig health as well reduce animal welfare

  • We proposed a new algorithm for mounting behaviour recognition of pigs based on deep learning

  • The pig segmentation network based on Mask R-CNN was applied and evaluated

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Summary

Introduction

Intensive interaction among pigs is likely to bring negative effects to pig health as well reduce animal welfare. Lameness and leg fractures are due to mounting behaviour [3] and those injuries will lead to serious economic losses in livestock farming. Timely detection and intervention of mounting behaviour will be able to increase animal welfare and further ensure pig health. Traditional monitoring methods of animal behaviour rely mainly on human eye observation which consumes a lot of labour and involves subjective errors. With the development of image and video processing technology, automated video recognition techniques are increasingly applied to pig breeding enterprises. Optical flow vector [4] and fitted ellipse features in consecutive frames [5] were applied to monitoring of the locomotion of pigs by using a charge-coupled device (CCD) camera

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