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基于高光谱与信息融合的鳜鱼体表微生物检测方法

Method of Detecting Microorganisms on the Surface of Mandarin Fish Based on Hyperspectral and Information Fusion.

作者信息

Yuan Tao, Ma Yixiao, Guo Zuyu, Wang Yijian, Kong Liqin, Feng Yaoze, Liu Haopeng, Meng Liang

机构信息

College of Engineering, Huazhong Agricultural University, Wuhan 430070, China.

School of Electrical and Electronic Engineering, Wuhan Polytechnic University, Wuhan 430070, China.

出版信息

Foods. 2025 Apr 23;14(9):1468. doi: 10.3390/foods14091468.

Abstract

Microorganisms play a key role in fish spoilage and quality deterioration, making the development of a rapid, accurate, and efficient technique for detecting surface microbes essential for enhancing freshness and ensuring the safety of mandarin fish consumption. This study focused on the total viable count (TVC) and levels in the dorsal and ventral parts of fish, and we constructed a detection model using hyperspectral imaging and data fusion. The results showed that comprehensive and simplified models were successfully developed for quantitative detection across all wavelengths. The models performed best at predicting microbial growth on the dorsal side, with the RAW-CARS-PLSR model proving the most effective at predicting TVC and counts in that region. The RAW-PLSR model was identified as the optimal predictor of the concentration on the ventral side. A fusion model in the decision layer constructed using the Dempster-Shafer theory of evidence outperformed models relying solely on spectral or textural information, making it an optimal approach for detecting surface microbes in mandarin fish. The best prediction accuracy for dorsal TVC concentration achieved an Rp value of 0.9337, whereas that for ventral TVC concentration reached 0.8443. For the concentration, the optimal values were 0.8180 for the dorsal section and 0.8512 for separate analysis.

摘要

微生物在鱼类腐败和品质劣化过程中起着关键作用,因此开发一种快速、准确且高效的表面微生物检测技术对于提高鳜鱼的新鲜度和确保其食用安全性至关重要。本研究聚焦于鱼类背侧和腹侧的总活菌数(TVC)及 水平,并利用高光谱成像和数据融合构建了检测模型。结果表明,成功开发了适用于所有波长定量检测的综合模型和简化模型。这些模型在预测背侧微生物生长方面表现最佳,其中RAW - CARS - PLSR模型在预测该区域的TVC和 数量方面最为有效。RAW - PLSR模型被确定为腹侧 浓度的最佳预测模型。使用证据的Dempster - Shafer理论在决策层构建的融合模型优于仅依赖光谱或纹理信息的模型,使其成为检测鳜鱼表面微生物的最佳方法。背侧TVC浓度的最佳预测准确率达到Rp值0.9337,而腹侧TVC浓度的最佳预测准确率达到0.8443。对于 浓度,背侧部分的最佳 值为0.8180,单独分析时腹侧部分的最佳 值为0.8512。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0ab3/12071482/32c3bd2f9365/foods-14-01468-g001.jpg

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