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使用深度图像估计成年肉牛的体重和体况评分

Estimating body weight and body condition score of mature beef cows using depth images.

作者信息

Xiong Yijie, Condotta Isabella C F S, Musgrave Jacki A, Brown-Brandl Tami M, Mulliniks J Travis

机构信息

Department of Animal Science, University of Nebraska-Lincoln, Lincoln, NE 68583, USA.

Department of Biological Systems Engineering, University of Nebraska-Lincoln, Lincoln, NE 68583, USA.

出版信息

Transl Anim Sci. 2023 Jul 24;7(1):txad085. doi: 10.1093/tas/txad085. eCollection 2023 Jan.

Abstract

Obtaining accurate body weight (BW) is crucial for management decisions yet can be a challenge for cow-calf producers. Fast-evolving technologies such as depth sensing have been identified as low-cost sensors for agricultural applications but have not been widely validated for U.S. beef cattle. This study aimed to (1) estimate the body volume of mature beef cows from depth images, (2) quantify BW and metabolic weight (MBW) from image-projected body volume, and (3) classify body condition scores (BCS) from image-obtained measurements using a machine-learning-based approach. Fifty-eight crossbred cows with a mean BW of 410.0 ± 60.3 kg and were between 4 and 6 yr of age were used for data collection between May and December 2021. A low-cost, commercially available depth sensor was used to collect top-view depth images. Images were processed to obtain cattle biometric measurements, including MBW, body length, average height, maximum body width, dorsal area, and projected body volume. The dataset was partitioned into training and testing datasets using an 80%:20% ratio. Using the training dataset, linear regression models were developed between image-projected body volume and BW measurements. Results were used to test BW predictions for the testing dataset. A machine-learning-based multivariate analysis was performed with 29 algorithms from eight classifiers to classify BCS using multiple inputs conveniently obtained from the cows and the depth images. A feature selection algorithm was performed to rank the relevance of each input to the BCS. Results demonstrated a strong positive correlation between the image-projected cow body volume and the measured BW ( = 0.9166). The regression between the cow body volume and the measured BW had a co-efficient of determination () of 0.83 and a 19.2 ± 13.50 kg mean absolute error (MAE) of prediction. When applying the regression to the testing dataset, an increase in the MAE of the predicted BW (22.7 ± 13.44 kg) but a slightly improved (0.8661) was noted. Among all algorithms, the Bagged Tree model in the Ensemble class had the best performance and was used to classify BCS. Classification results demonstrate the model failed to predict any BCS lower than 4.5, while it accurately classified the BCS with a true prediction rate of 60%, 63.6%, and 50% for BCS between 4.75 and 5, 5.25 and 5.5, and 5.75 and 6, respectively. This study validated using depth imaging to accurately predict BW and classify BCS of U.S. beef cow herds.

摘要

获取准确的体重对于管理决策至关重要,但对于肉牛养殖者来说可能是一项挑战。诸如深度感应等快速发展的技术已被确定为适用于农业应用的低成本传感器,但尚未在美国肉牛上得到广泛验证。本研究旨在:(1)从深度图像估计成年肉牛的身体体积;(2)根据图像投影的身体体积量化体重和代谢体重;(3)使用基于机器学习的方法根据图像获取的测量值对体况评分进行分类。2021年5月至12月期间,使用了58头平均体重为410.0±60.3千克、年龄在4至6岁之间的杂交母牛进行数据收集。使用一种低成本的商用深度传感器收集顶视图深度图像。对图像进行处理以获取牛的生物特征测量值,包括代谢体重、体长、平均身高、最大体宽、背部面积和投影身体体积。数据集以80%:20%的比例划分为训练数据集和测试数据集。利用训练数据集,建立了图像投影身体体积与体重测量值之间的线性回归模型。结果用于测试测试数据集的体重预测。使用来自八个分类器的29种算法进行基于机器学习的多变量分析,以便使用从牛和深度图像方便获得的多个输入对体况评分进行分类。执行特征选择算法以对每个输入与体况评分的相关性进行排名。结果表明,图像投影的牛身体体积与测量的体重之间存在很强的正相关(=0.9166)。牛身体体积与测量体重之间的回归决定系数()为0.83,预测的平均绝对误差(MAE)为19.2±13.50千克。将回归应用于测试数据集时,预测体重的MAE有所增加(22.7±13.44千克),但 略有改善(0.8661)。在所有算法中,集成类中的袋装树模型性能最佳,用于对体况评分进行分类。分类结果表明,该模型未能预测任何低于4.5的体况评分,而对于4.75至5、5.25至5.5以及5.75至6的体况评分,其准确分类的真实预测率分别为60%、63.6%和50%。本研究验证了使用深度成像来准确预测美国肉牛群的体重并对体况评分进行分类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e106/10424719/4d35413a6793/txad085_fig1.jpg

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