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基于RFID全链溯源与多模态深度学习的香菇品质智能分选方法

Mushroom Quality Intelligent Sorting Using Full-Chain RFID Traceability and Multimodal Deep Learning

  • 摘要: 传统香菇分选主要依赖人工经验,存在效率低、主观性强、过程难以追溯等问题,难以满足现代智慧农业对高品质、高附加值农产品生产的需要。为此,该研究提出一种融合RFID全链溯源与多模态深度学习的香菇品质智能分选方法,构建“溯源-感知-推理-分选”一体化技术架构。首先通过为每批香菇赋予唯一RFID电子标识,实现从生产到分选全流程的数据绑定与溯源。其次系统利用RFID记录香菇在种植、采摘及流通环节的信息,结合传感器获取图像、温湿度及霉变气味等多模态数据。最后在边缘端部署多模态融合模型,完成香菇等级的品质识别与分类,从而实现高效、精准且可追溯的品质评估。试验结果表明,该系统识别平均精度均值(mAP@0.5)达到95.1%,推理速度提升至50 ms/样本,相较于传统人工分选方法,在识别准确率和处理效率上均有显著提升,同时能够有效追溯香菇来源与流向。该系统通过深度融合RFID全链溯源与多模态深度学习,实现了品质分选与溯源信息的一体化集成,为农产品高质量分选与全流程质量管控提供了可靠技术支持,有助于推动农业智能化与标准化发展。

     

    Abstract:
    Against the backdrop that the annual output of shiitake mushrooms in China has exceeded the 10 million-ton scale,the continuous surge in production has made quality sorting a key bottleneck restricting the cross-scale development of the industry.The traditional manual sorting mode has obvious drawbacks,including the industry pain points of low efficiency,strong subjectivity,and poor process traceability.To address the demand gap of modern smart agriculture for the production of high-quality and high-value-added agricultural products,while resolving consumers' concerns about food quality,this study aims to propose an intelligent quality evaluation scheme for shiitake mushrooms that integrates accurate sorting and full-chain traceability.An integrated information collection system of "RFID + multimodal perception + edge computing + YOLOv8" is constructed:Each batch of shiitake mushrooms is assigned a unique RFID electronic tag to bind data throughout the entire process of cultivation,harvesting,and circulation,realizing a data closed loop from the source to the supermarket shelves.Multimodal data are collected using a USB industrial camera (resolution: 4K×3K),temperature and humidity sensors,weight sensors,and odor sensors,forming a multi-dimensional data matrix of "images + sensor data + RFID".Images are labeled for front and back sides according to refined industry standards,and the dataset is augmented through affine transformation and contrast transformation.Transfer learning is conducted based on the pre-trained YOLOv8 model,with the introduction of an attention mechanism for model optimization.Meanwhile,non-image sensor data are preprocessed and encoded before undergoing feature-level + decision-level fusion with image data to achieve quality identification and classification.Verified by multiple comparative experiments,the core performance of the intelligent sorting system is excellent:①Dual breakthroughs in sorting accuracy and efficiency: The mean Average Precision (mAP@0.5) for quality identification reaches 95.1%,the inference speed per sample is improved to 50ms,and the average F1-score attains 95.3%.②Significant comparative advantages: Compared with other research methods such as Faster R-CNN,the number of parameters of the proposed system is 15.5 times fewer than that of Faster R-CNN,with a substantial improvement in inference speed.Although the improved YOLOv8-Seg achieves higher accuracy,its large number of parameters makes it unfavorable for deployment on Raspberry Pi.③Remarkable improvements over traditional manual sorting:The system achieves dual significant enhancements in recognition accuracy and processing efficiency,effectively addressing the efficiency bottleneck and subjective bias of manual sorting.④Improved traceability function:Relying on the full-chain data binding capability of RFID electronic tags,the system can accurately trace key information of each batch of shiitake mushrooms,such as origin,cultivation environment,and circulation path,realizing real-time association between the sorting process and traceability information.⑤Strong practicality in complex environments:Through multimodal data fusion technology,the limitation of single-dimensional data recognition is broken,while the accuracy remains above 89% after fusing other data.
    This study successfully realizes the integrated integration of accurate quality sorting and full-process quality traceability,further ensuring the stability and reliability of quality classification,which fully meets the technical requirements of smart agriculture for standardized sorting.

     

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