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基于机器视觉的肉鸡地面分布监测方法。

A Machine Vision-Based Method for Monitoring Broiler Chicken Floor Distribution.

机构信息

Department of Poultry Science, College of Agricultural & Environmental Sciences, University of Georgia, Athens, GA 30602, USA.

College of Mechanical and Electronic Engineering, Northwest A&F University, Yangling, Shaanxi 712100, China.

出版信息

Sensors (Basel). 2020 Jun 3;20(11):3179. doi: 10.3390/s20113179.

Abstract

The proper spatial distribution of chickens is an indication of a healthy flock. Routine inspections of broiler chicken floor distribution are done manually in commercial grow-out houses every day, which is labor intensive and time consuming. This task requires an efficient and automatic system that can monitor the chicken's floor distributions. In the current study, a machine vision-based method was developed and tested in an experimental broiler house. For the new method to recognize bird distribution in the images, the pen floor was virtually defined/divided into drinking, feeding, and rest/exercise zones. As broiler chickens grew, the images collected each day were analyzed separately to avoid biases caused by changes of body weight/size over time. About 7000 chicken areas/profiles were extracted from images collected from 18 to 35 days of age to build a BP neural network model for floor distribution analysis, and another 200 images were used to validate the model. The results showed that the identification accuracies of bird distribution in the drinking and feeding zones were 0.9419 and 0.9544, respectively. The correlation coefficient (R), mean square error (MSE), and mean absolute error (MAE) of the BP model were 0.996, 0.038, and 0.178, respectively, in our analysis of broiler distribution. Missed detections were mainly caused by interference with the equipment (e.g., the feeder hanging chain and water line); studies are ongoing to address these issues. This study provides the basis for devising a real-time evaluation tool to detect broiler chicken floor distribution and behavior in commercial facilities.

摘要

鸡群的合理空间分布是其健康状况的一个指示。在商业养殖房中,每天都会对肉鸡的地面分布情况进行例行的人工检查,这既耗费人力又耗费时间。这项任务需要一个高效、自动化的系统来监测鸡只的地面分布情况。在当前的研究中,我们开发了一种基于机器视觉的方法,并在一个实验性的肉鸡养殖房中进行了测试。为了使新方法能够识别图像中的鸟类分布,我们将养殖笼的地面虚拟地定义/划分为饮水区、采食区和休息/运动区。随着肉鸡的生长,我们每天采集的图像会分别进行分析,以避免因体重/体型随时间变化而导致的偏差。我们从 18 日龄至 35 日龄期间采集的图像中提取了约 7000 个鸡只区域/轮廓,用于建立一个用于地面分布分析的 BP 神经网络模型,并使用另外 200 张图像对模型进行验证。结果表明,该模型对饮水区和采食区鸟类分布的识别准确率分别为 0.9419 和 0.9544。在我们对肉鸡分布的分析中,BP 模型的相关系数(R)、均方误差(MSE)和平均绝对误差(MAE)分别为 0.996、0.038 和 0.178。漏检主要是由于设备干扰(例如,料线悬挂链和水管)造成的;目前正在研究解决这些问题的方法。本研究为设计一种实时评估工具以检测商业设施中肉鸡的地面分布和行为提供了基础。

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