用于农业产量预测的对抗性自编码器

IF 0.5 Q4 FOOD SCIENCE & TECHNOLOGY
Y. Say, M. W. Kei-Fong, E. N. Yin-Kwee
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引用次数: 0

摘要

可持续粮食生产。在农业方面,作物产量越来越受到气温升高的影响,气候变化引起的虫害增加了农业损失。增加本地生产对于减少我们对进口食品的依赖至关重要,并在供应中断(如新冠肺炎疫情造成的供应中断)的情况下提供缓冲。为了提高粮食安全,重要的是优化农业产量,尽管补充喂养、害虫控制措施或运营成本等因素会带来高昂的成本。我们提出了一种带有对抗性自动编码器(AAE)的机器视觉方法(MV),作为作物产量优化的一种方法。预测的叶面积是从最初发芽到早期营养阶段的预测。对生成机器学习模型进行分析,以确定用于作物产量预测的合适架构。使用在不同条件(例如光强度)下随时间生长的莴苣的图像作为数据集。初步结果表明,所创建的模型能够基于单个条件以足够的精度预测图像。使用我们的方法,可以尽早采取纠正措施,并从最初低于平均值的值中恢复产量。可以做进一步的工作,将模型扩展到其他条件,如湿度、可用阳光强度或土壤养分含量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ADVERSARIAL AUTOENCODERS FOR AGRICULTURE YIELD FORECASTING
For sustainable food production. In agriculture, crop yields are increasingly affected by warmer temperatures, and pest infestations caused by climate change have increased agricultural losses. Increasing local production is important to reduce our dependence on imported food and provide a buffer in case of supply disruptions such as those caused by the COVID-19 pandemic. To increase food security, it is important to optimize agricultural yields, despite the high costs associated with factors such as supplemental feeding, pest control measures, or operating costs. We present a Machine Vision method (MV) with Adversarial Autoencoder (AAE) as an approach to crop yield optimization. Predicted leaf area is projected from initial germination to early vegetative stages. Generative machine learning models are analyzed to determine a suitable architecture for crop yield prediction. Images of romaine lettuce grown over time under different conditions (e.g., light intensity) are used as the data set. Preliminary results show that the model created is able to predict an image with sufficient accuracy based on a single condition. With our method, corrective actions can be taken early, and yields recover from initial below-average values. Further work can be done to extend the model to other conditions such as moisture, strength of available sunlight, or soil nutrient content.
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
38
审稿时长
12 weeks
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