基于MobileNet模型的家禽鸡新发疾病检测与预测方法

T. Joel, B. S. Dharshini, D. D., Gangaaraam, Poojitha, Nandha Kumar
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引用次数: 1

摘要

鸡肉业对食品制造业有重大影响。随着需求的增加,全球对禽类质量的担忧也在增加。鸡蛋和鸡肉都得益于该行业对质量控制的承诺。由于对禽肉的需求不断增加,该行业的参与者担心鸟类的福利。由于最近的技术突破,家禽业能够更好地关注鸡的健康状况。随着基于物联网(IoT)的可穿戴传感设备(如加速度计和陀螺仪设备)的使用,现在可以通过视频监控、语音观察和粪便检查来诊断禽类疾病和鸡的健康状况。这些运动探测器被放置在鸡身上,将母鸡的日常动作发送到互联网上供检查。分析这些数据并对鸡的健康状况提供更精确的预测是一个难题。在这项研究中,我们提出了一个基于物联网的预测服务框架,可以在早期阶段识别鸡群中的疾病。MobileNet方法已被证明在理论分析和实验结果中达到97%的准确率。此外,建议的研究比较了几种分类模型的功效,以提供更精确和性能最好的分类策略。研究的主要目标是提供基于工业物联网的预测服务架构,可以更精确地实时对家禽母鸡进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Method for Detecting and Predicting Emerging Disease in Poultry Chickens Based on MobileNet Model
The chicken business has a significant impact on the food manufacturing sector. Concerns over poultry birds’ quality have increased globally as demand has risen. Chicken eggs and chicken meat are both helped along by the industry’s commitment to quality control. The industry’s players are worried about the welfare of the birds because of the rising demand for poultry meat. The poultry sector is able to keep better tabs on the well-being of its chickens thanks to recent technology breakthroughs. With the use of Internet of Things (IoT)-based wearable sensing devices like accelerometers and gyro devices, avian diseases and chicken health may now be diagnosed via video surveillance, voice observations, and feces inspections. Placed atop a chicken, these motion detectors send the hen’s daily movements to the internet for examination. It’s a difficult problem to analyze such data and provide more precise forecasts regarding chicken health. In this research, we present a framework for an Internet of Things-based prediction service that can identify illnesses in chicken flocks at an early stage. The MobileNet approach has been shown to reach a 97% accuracy in both theoretical analysis and experimental findings. In addition, the suggested research compares the efficacy of several classification models to provide a more precise and top-performing classification strategy. The primary goal of the research is to provide predictive service architecture based on Industrial IoT that can more precisely categorize poultry hens in real time.
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