Physics-Guided Inverse Regression for Crop Quality Assessment

David Shulman, Assaf Israeli, Yael Botnaro, Ori Margalit, Oved Tamir, Shaul Naschitz, Dan Gamrasni, Ofer M. Shir, Itai Dattner
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Abstract

We present an innovative approach leveraging Physics-Guided Neural Networks (PGNNs) for enhancing agricultural quality assessments. Central to our methodology is the application of physics-guided inverse regression, a technique that significantly improves the model’s ability to precisely predict quality metrics of crops. This approach directly addresses the challenges of scalability, speed, and practicality that traditional assessment methods face. By integrating physical principles, notably Fick’s second law of diffusion, into neural network architectures, our developed PGNN model achieves a notable advancement in enhancing both the interpretability and accuracy of assessments. Empirical validation conducted on cucumbers and mushrooms demonstrates the superior capability of our model in outperforming conventional computer vision techniques in postharvest quality evaluation. This underscores our contribution as a scalable and efficient solution to the pressing demands of global food supply challenges.

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用于作物质量评估的物理引导反回归技术
我们提出了一种利用物理引导神经网络(PGNN)加强农业质量评估的创新方法。我们方法的核心是应用物理引导反回归技术,该技术显著提高了模型精确预测农作物质量指标的能力。这种方法直接解决了传统评估方法所面临的可扩展性、速度和实用性方面的挑战。我们开发的 PGNN 模型将物理原理(特别是费克第二扩散定律)融入神经网络架构,在提高评估的可解释性和准确性方面取得了显著进步。在黄瓜和蘑菇上进行的经验验证表明,我们的模型在收获后质量评估方面的能力优于传统的计算机视觉技术。这凸显了我们的贡献,即为应对全球食品供应挑战的迫切需求提供了可扩展的高效解决方案。
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来源期刊
CiteScore
2.70
自引率
7.10%
发文量
38
审稿时长
>12 weeks
期刊介绍: The Journal of Agricultural, Biological and Environmental Statistics (JABES) publishes papers that introduce new statistical methods to solve practical problems in the agricultural sciences, the biological sciences (including biotechnology), and the environmental sciences (including those dealing with natural resources). Papers that apply existing methods in a novel context are also encouraged. Interdisciplinary papers and papers that illustrate the application of new and important statistical methods using real data are strongly encouraged. The journal does not normally publish papers that have a primary focus on human genetics, human health, or medical statistics.
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