基于深度学习的低成本牲畜分拣信息管理系统

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY
Yuanzhi Pan , Yuzhen Zhang , Xiaoping Wang , Xiang Xiang Gao , Zhongyu Hou
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引用次数: 2

摘要

现代养猪业在效率方面还有很多不足之处,因为这些系统主要依靠机电控制,只能根据猪的重量对其进行分类。这种方法不仅效率低下,而且会增加劳动力支出,加剧人畜共患疾病的威胁。此外,将猪大规模圈养会加剧感染的传播,并使对患病猪的监测和护理复杂化。这项研究进行了一项实验,构建了一种深度学习排序机制,利用了一个数据集,该数据集融合了24个月来收集的关键指标和繁殖图像。本研究集成了一种基于卡尔曼滤波器的算法,以提高动态排序操作的精度。这项研究实验展示了一种由深度学习驱动的开创性机器视觉分类系统,该系统擅长处理多方面识别目标的实时图像。基于残差神经网络(ResNet)的个体识别模型监测牲畜体重以进行持续的数据预测,而Wasserstein生成对抗性网络(WGAN)图像增强算法在不同的环境中增强了识别,增强了模型的弹性。值得注意的是,该系统可以通过不规则的身体外观来确定表现出潜在疾病迹象的牲畜,并将其隔离以确保安全。实验结果验证了该系统相对于传统系统的优越性。它不仅最大限度地减少了人工干预和数据维护费用,还提高了牲畜识别的准确性并优化了数据使用。这一发现反映了牲畜ID识别的成功率为89%,模糊图像识别的成功度激增32%,牲畜分类准确率跃升95%,识别不适猪图像的成功率高达98%。从本质上讲,这项研究提高了识别效率,减少了运营费用,并为疾病监测提供了增强的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-cost livestock sorting information management system based on deep learning

Modern pig farming leaves much to be desired in terms of efficiency, as these systems rely mainly on electromechanical controls and can only categorize pigs according to their weight. This method is not only inefficient but also escalates labor expenses and heightens the threat of zoonotic diseases. Furthermore, confining pigs in large groups can exacerbate the spread of infections and complicate the monitoring and care of ill pigs. This research executed an experiment to construct a deep-learning sorting mechanism, leveraging a dataset infused with pivotal metrics and breeding imagery gathered over 24 months. This research integrated a Kalman filter-based algorithm to augment the precision of the dynamic sorting operation. This research experiment unveiled a pioneering machine vision sorting system powered by deep learning, adept at handling live imagery for multifaceted recognition objectives. The Individual recognition model based on Residual Neural Network (ResNet) monitors livestock weight for sustained data forecasting, whereas the Wasserstein Generative Adversarial Nets (WGAN) image enhancement algorithm bolsters recognition in distinct settings, fortifying the model's resilience. Notably, system can pinpoint livestock exhibiting signs of potential illness via irregular body appearances and isolate them for safety. Experimental outcomes validate the superiority of this proposed system over traditional counterparts. It not only minimizes manual interventions and data upkeep expenses but also heightens the accuracy of livestock identification and optimizes data usage. This findings reflect an 89% success rate in livestock ID recognition, a 32% surge in obscured image recognition, a 95% leap in livestock categorization accuracy, and a remarkable 98% success rate in discerning images of unwell pigs. In essence, this research augments identification efficiency, curtails operational expenses, and provides enhanced tools for disease monitoring.

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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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