开发智能家禽养殖场中相机应用的目标检测模型

Stevan Cakic, Tomo Popović, S. Krco, Daliborka Nedic, Dejan Babic
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引用次数: 1

摘要

本文提出使用高性能计算和深度学习来创建预测模型,这些模型可以作为家禽业智能农业解决方案的一部分进行部署。这个想法是创建物体检测模型,可以移植到配备摄像头传感器的边缘设备上,用于家禽农场的物联网系统。物体检测预测模型可以用来制造智能相机传感器,这些传感器可以进化成数鸡或检测死鸡的传感器。这种相机传感器套件可能很快成为数字家禽养殖场管理系统的一部分。本文讨论了该过程所需的机器学习和计算工具的开发和选择方法。基于使用Faster R-CNN网络和高性能计算的初步结果,以及评估过程中使用的指标。所获得的精度令人满意,并且可以方便地计数鸡。在网络模型选择和训练配置方面需要进行更多的实验,以提高准确性,并使预测对开发死鸡检测器有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing Object Detection Models for Camera Applications in Smart Poultry Farms
This paper proposes the use of high-performance computing and deep learning to create prediction models that can be deployed as a part of smart agriculture solutions in the poultry sector. The idea is to create object detection models that can be ported onto edge devices equipped with camera sensors for the use in Internet of Things systems for poultry farms. The object detection prediction models could be used to create smart camera sensors that could evolve into sensors for counting chickens or detecting dead ones. Such camera sensor kits could become a part of digital poultry farm management systems in shortly. The paper discusses the approach to the development and selection of machine learning and computational tools needed for this process. Initial results, based on the use of Faster R-CNN network and high-performance computing are presented together with the metrics used in the evaluation process. The achieved accuracy is satisfactory and allows for easy counting of chickens. More experimentation is needed with network model selection and training configurations to increase the accuracy and make the prediction useful for developing a dead chicken detector.
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