首页> 外文期刊>Journal of animal science >A novel automated system to acquire biometric and morphological measurements and predict body weight of pigs via 3D computer vision
【24h】

A novel automated system to acquire biometric and morphological measurements and predict body weight of pigs via 3D computer vision

机译:一种新颖的自动化系统,可通过3D计算机视觉获取生物特征和形态学测量结果并预测猪的体重

获取原文
           

摘要

Computer vision applications in livestock are appealing since they enable measurement of traits of interest without the need to directly interact with the animals. This allows the possibility of multiple measurements of traits of interest with minimal animal stress. In the current study, an automated computer vision system was devised and evaluated for extraction of features of interest, as body measurements and shape descriptors, and prediction of body weight in pigs. From the 655 pigs that had data collected 580 had more than 5 frames recorded and were used for development of the predictive models. The cross-validation for the models developed with data from nursery and finishing pigs presented an R2 ranging from 0.86 (random selected image) to 0.94 (median of images truncated on the third quartile), whereas with the dataset without nursery pigs, the R2 estimates ranged from 0.70 (random selected image) to 0.84 (median of images truncated on the third quartile). However, overall the mean absolute error was lower for the models fitted without data on nursery animals. From the body measures extracted from the image, body volume, area, and length were the most informative for prediction of body weight. The inclusion of the remaining body measurements (width and heights) or shape descriptors to the model promoted significant improvement of the predictions, whereas the further inclusion of sex and line effects were not significant.
机译:牲畜中的计算机视觉应用很有吸引力,因为它们可以测量感兴趣的性状,而无需直接与动物互动。这允许以最小的动物压力对感兴趣的性状进行多次测量的可能性。在当前的研究中,设计并评估了一个自动计算机视觉系统,用于提取感兴趣的特征,如身体测量和形状描述,以及预测猪的体重。在收集到数据的655头猪中,有580头记录了5帧以上,并用于建立预测模型。使用保育和育肥猪的数据开发的模型的交叉验证的R2范围为0.86(随机选择的图像)至0.94(在第三个四分位数处截断的图像的中位数),而对于没有保育猪的数据集,R2估计范围从0.70(随机选择的图像)到0.84(在第三个四分位数处被截断的图像的中位数)。然而,总体而言,对于没有苗圃数据的模型,平均绝对误差较低。从图像中提取的人体测量值,体重,面积和长度是预测体重最有用的信息。将剩余的身体测量值(宽度和高度)或形状描述符包含到模型中,可以大大改善预测结果,而进一步包含性别和线条效果并不明显。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号