基于知识精馏的畜禽饲料成分多模态预测

Owoeye Babatunde Oluwabukunmi;Akomolafe Ayobami Joseph;Miraculous Udurume;Judith Nkechinyere Njoku;Cosmas Ifeanyi Nwakanma;Senorpe Asem-Hiablie;Rammohan Mallipeddi;Tusan Park;Daniel Dooyum Uyeh
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引用次数: 0

摘要

准确分析牲畜饲料质量对于提高生产力和支持可持续农业做法至关重要。本研究探讨了红、绿、蓝(RGB)和近红外(NIR)成像模式的整合,利用它们的互补优势,RGB用于物理特性,近红外用于化学成分,以预测关键的营养指标。提出了一种新的知识蒸馏模型,将复杂的教师模型转化为简单的学生模型。该方法包括训练三种类型的模型:单通道(RGB或NIR)、双通道(RGB和NIR)和知识蒸馏模型。包括均方误差(MSE)、平均绝对误差和根MSE在内的关键评估指标验证了模型的预测准确性。实验结果表明,知识蒸馏模型显著优于单通道和双通道模型,与RGB单通道模型相比,MSE降低91.86%,与NIR单通道模型相比,MSE降低89.68%,与双通道模型相比,MSE提高63.43%。这项研究为饲料质量评估提供了一个强大、高效、经济的解决方案,突出了多模态成像和机器学习在精准农业中的变革潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced Multimodal Prediction of Components of Livestock Feed Materials Using Knowledge Distillation
Accurate analysis of livestock feed quality is critical for enhancing productivity and supporting sustainable farming practices. This study explores the integration of red, green, and blue (RGB) and near-infrared (NIR) imaging modalities, leveraging their complementary strengths, RGB for physical properties and NIR for chemical compositions, to predict key nutritional metrics. A novel knowledge distillation model was developed to transfer insights from a complex teacher model to a simpler student model. The approach involved training three types of models: single-channel (RGB or NIR), double-channel (RGB and NIR), and knowledge distillation models. Key evaluation metrics, including mean squared error (MSE), mean absolute error, and root MSE, validated the model's predictive accuracy. Experimental results demonstrated that the knowledge distillation model significantly outperformed both single- and double-channel models, achieving a 91.86% reduction in the MSE compared to RGB single-channel models, an 89.68% reduction compared to NIR single-channel models, and a 63.43% improvement over double-channel models. This study provides a robust, efficient, and cost-effective solution for feed quality assessment, highlighting the transformative potential of multimodal imaging and machine learning in precision agriculture.
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