Body weight prediction in crossbred pigs from digital images using computer vision

IF 1.8 3区 农林科学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Ana Caroline Rodrigues da Cunha , Robson Carlos Antunes , Weverton Gomes da Costa , Geovanne Ferreira Rebouças , Carla Daniela Suguimoto Leite , Adriana Santana do Carmo
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Abstract

The development of technologies made it possible to capture digital images by sensors in order to obtain morphometric measurements that can be used in the development of mathematical models for the prediction of body weight (BW) in animals. The objective was to develop mathematical models to predict body weight in crossbred pigs from morphometric measurements obtained with two-dimensional digital images. Data collection was carried out in the swine sector of IF Goiano, Urutai campus, in 52 crossbred pigs housed in the finishing phase. The animals were randomly weighed and filmed by the Microsoft Kinect® v1 sensor camera in the dorsal view. Subsequently, they were conducted for the measurement of manual morphometric measurements, without restraint, being dorsal length, chest width and flank width. The morphometric measurements predicted from the dorsal images were dorsal length, chest width, flank width, dorsal area and perimeter. Through Mask R-CNN algorithm trains the network by input images, was compute the area of the evaluated object in pixels, and thus, can correlate with measures of interest. The Mask R-CNN algorithm were performed with the Collaboratory Google using Phyton 3.0. Mathematical models were developed using multiple linear regression (MLR) and support vector regression (SVR) methodologies for body weight prediction. All Pearson's correlations between real body weight and real and predicted morphometric measurements by digital images were moderate to high magnitude positive and statistically significant (P<0.05). The difference between the real and predicted BW by the SVR was -1.74 kg (R² = 91%) and -2.39 kg (R² = 88%), respectively. The MLR model with real morphometrics measurements explained 60% of BW variance and estimated a BW 18.76 kg below from the real BW mean. The MLR model with predicted measurements explained 53% of BW variance and estimated a BW 22.51 kg below from the real BW mean. The mathematical model developed from SVR has the potential to estimate the body weight of crossbred pigs using morphometric measurements predicted by digital images such as dorsal length, width, dorsal area and perimeter.

利用计算机视觉从数字图像预测杂交猪的体重
技术的发展使得通过传感器捕捉数字图像以获得形态测量值成为可能,这些测量值可用于建立预测动物体重(BW)的数学模型。我们的目标是建立数学模型,通过二维数字图像获得的形态测量数据预测杂交猪的体重。数据收集工作是在乌鲁泰校区 IF Goiano 猪场对 52 头处于育成期的杂交猪进行的。这些动物被随机称重,并用微软 Kinect® v1 传感器摄像头拍摄其背部视图。随后,在不受约束的情况下对背长、胸宽和腹宽进行人工形态测量。根据背侧图像预测的形态测量值为背长、胸宽、侧宽、背面积和周长。遮罩 R-CNN 算法通过输入图像训练网络,以像素为单位计算被评估对象的面积,从而与感兴趣的测量值相关联。使用 Phyton 3.0 在谷歌协作平台上执行了掩码 R-CNN 算法。使用多元线性回归(MLR)和支持向量回归(SVR)方法建立了体重预测数学模型。真实体重与数字图像真实形态测量值和预测形态测量值之间的皮尔逊相关性均为中度至高度正相关,且具有统计学意义(P<0.05)。SVR 预测的真实体重与预测体重之差分别为-1.74 千克(R² = 91%)和-2.39 千克(R² = 88%)。使用实际形态测量值的 MLR 模型解释了 60% 的体重变异,估计的体重比实际平均体重低 18.76 千克。使用预测测量值的 MLR 模型解释了 53% 的体重差异,估计的体重比实际平均体重低 22.51 千克。根据 SVR 建立的数学模型可以利用数字图像预测的形态测量值(如背长、背宽、背面积和周长)来估计杂交猪的体重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Livestock Science
Livestock Science 农林科学-奶制品与动物科学
CiteScore
4.30
自引率
5.60%
发文量
237
审稿时长
3 months
期刊介绍: Livestock Science promotes the sound development of the livestock sector by publishing original, peer-reviewed research and review articles covering all aspects of this broad field. The journal welcomes submissions on the avant-garde areas of animal genetics, breeding, growth, reproduction, nutrition, physiology, and behaviour in addition to genetic resources, welfare, ethics, health, management and production systems. The high-quality content of this journal reflects the truly international nature of this broad area of research.
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