Deep learning aided computer vision system for automated linear type trait evaluation in dairy cows

IF 6.3 Q1 AGRICULTURAL ENGINEERING
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Abstract

The assessment of traits is important in determining production potential, reproductive performance, and overall health of dairy cows. The assessment of these traits typically involves visual inspection and manual measurement, which can be time-consuming, subject to bias, and potentially distressing for the animals. To address these challenges, convolutional neural networks (CNNs)-aided non-invasive computer vision system was developed in the present study. This system consists of a depth camera to acquire the RGB images and depth information of cows. The DeepLabV3+ model, having the ResNet50 model as a backbone, was utilized to segment the body parts of cows from RGB images. Image processing-based algorithms were developed to extract key pixel locations for each trait from these segmented images. The system estimated trait dimensions utilizing 3D data of respective key points. The mean-IoU (intersection-over-union) values for the developed segmentation models were 93.46%, 91.25%, and 99.27% for side-view, back-view traits, and stature, respectively. Additionally, the vision system was able to estimate the trait dimensions with mean absolute percentage error (MAPE) below 6.0%. For a few traits, MAPE, however, exceeded 10.0%, indicating higher error. Inaccurate segmentation, imprecise key point extraction, visual overlaps of specific body parts, and variations in cow postures contribute to such errors. The developed system attained a Ratio of Performance to Deviation (RPD) above 1.2 for all traits, indicating its ability to estimate the dimensions of traits efficaciously. Thus, the present study demonstrated the potential of a CNN-based computer vision-based system for automating the trait measurement process in cows.

用于奶牛线型性状自动评估的深度学习辅助计算机视觉系统
性状评估对于确定奶牛的生产潜力、繁殖性能和整体健康非常重要。对这些性状的评估通常涉及目测和人工测量,这可能会耗费时间、产生偏差,并可能对动物造成伤害。为了应对这些挑战,本研究开发了卷积神经网络(CNN)辅助的无创计算机视觉系统。该系统由一个深度摄像头组成,用于获取奶牛的 RGB 图像和深度信息。以 ResNet50 模型为骨干的 DeepLabV3+ 模型用于从 RGB 图像中分割奶牛的身体部位。开发了基于图像处理的算法,以从这些分割图像中提取每个性状的关键像素位置。系统利用各关键点的三维数据估算性状尺寸。所开发的分割模型在侧视、背视特征和身材方面的平均 IoU 值分别为 93.46%、91.25% 和 99.27%。此外,视觉系统还能以低于 6.0% 的平均绝对百分比误差(MAPE)估算特征维度。然而,对于少数特征,MAPE 超过了 10.0%,表明误差较大。不准确的分割、不精确的关键点提取、特定身体部位的视觉重叠以及奶牛姿态的变化都是造成这些误差的原因。所开发的系统在所有性状上的性能与偏差比(RPD)都超过了 1.2,表明它能够有效地估计性状的尺寸。因此,本研究证明了基于 CNN 的计算机视觉系统在奶牛性状测量过程自动化方面的潜力。
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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