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ASAS-NANP SYMPOSIUM: Applications of machine learning for livestock body weight prediction from digital images

机译:ASAS-NANP研讨会:机器学习在数码图像中的牲畜体重预测的应用

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Monitoring, recording, and predicting livestock body weight (BW) allows for timely intervention in diets and health, greater efficiency in genetic selection, and identification of optimal times to market animals because animals that have already reached the point of slaughter represent a burden for the feedlot. There are currently two main approaches (direct and indirect) to measure the BW in livestock. Direct approaches include partial-weight or full-weight industrial scales placed in designated locations on large farms that measure passively or dynamically the weight of livestock. While these devices are very accurate, their acquisition, intended purpose and operation size, repeated calibration and maintenance costs associated with their placement in high-temperature variability, and corrosive environments are significant and beyond the affordability and sustainability limits of small and medium size farms and even of commercial operators. As a more affordable alternative to direct weighing approaches, indirect approaches have been developed based on observed or inferred relationships between biometric and morphometric measurements of livestock and their BW. Initial indirect approaches involved manual measurements of animals using measuring tapes and tubes and the use of regression equations able to correlate such measurements with BW. While such approaches have good BW prediction accuracies, they are time consuming, require trained and skilled farm laborers, and can be stressful for both animals and handlers especially when repeated daily. With the concomitant advancement of contactless electro-optical sensors (e.g., 2D, 3D, infrared cameras), computer vision (CV) technologies, and artificial intelligence fields such as machine learning (ML) and deep learning (DL), 2D and 3D images have started to be used as biometric and morphometric proxies for BW estimations. This manuscript provides a review of CV-based and ML/DL-based BW prediction methods and discusses their strengths, weaknesses, and industry applicability potential.
机译:通过监测、记录和预测牲畜体重(BW),可以及时干预饮食和健康,提高基因选择的效率,并确定出售动物的最佳时间,因为已经达到屠宰点的动物是饲养场的负担。目前有两种主要的方法(直接和间接)来测量牲畜的体重。直接方法包括在大型农场的指定位置放置部分重量或全重量工业秤,被动或动态测量牲畜重量。虽然这些设备非常精确,但它们的获取、预期用途和操作尺寸、与它们在高温变化和腐蚀性环境中的放置相关的重复校准和维护成本非常高,超出了中小型农场甚至商业运营商的承受能力和可持续性限制。作为直接称重法的一种更经济的替代方法,间接称重法是基于对牲畜及其体重的生物特征和形态测量之间的观察或推断关系而开发的。最初的间接方法包括使用卷尺和试管对动物进行手动测量,并使用能够将此类测量与体重关联的回归方程。虽然这种方法有很好的BW预测准确性,但它们很耗时,需要训练有素的农场工人,而且对动物和操作者来说都会有压力,尤其是每天重复使用时。随着非接触式光电传感器(如2D、3D、红外摄像机)、计算机视觉(CV)技术以及机器学习(ML)和深度学习(DL)等人工智能领域的发展,2D和3D图像开始被用作生物特征和形态计量学的BW估计代理。本文回顾了基于CV和基于ML/DL的BW预测方法,并讨论了它们的优点、缺点和行业适用性潜力。

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