Kodogiannis Vassilis S, Alshejari Abeer
College of Design, Creative and Digital Industries, University of Westminster, London W1W 6UW, UK.
Department of Mathematical Science, Princess Nourah bint Abdulrahman University, Riyadh 11671, Saudi Arabia.
Sensors (Basel). 2025 May 19;25(10):3198. doi: 10.3390/s25103198.
Meat quality plays a significant role in the consumers' health condition; hence, the constant pursuit for techniques capable of objective and accurate quality assessment by the meat industry. Multispectral imaging and electronic noses are valuable techniques for the rapid and non-destructive detection of meat spoilage. In order to take advantage of the complementary information provided by these two different sensing devices, a high-level data fusion strategy was explored. Through this fusion scheme, the aim of this work is to estimate initially the population of total viable counts of spp., and lactic acid bacteria, and then to categorize the status of the meat samples into three classes (fresh, semi-fresh, and spoiled). The issue of small size available datasets was addressed by generating additional "virtual" sample sets, through the use of neural networks. Neuro-fuzzy based regression models were implemented and their outputs were combined in order to estimate these microbiological populations. Following the evaluation of these estimations, it can be argued that the most efficient prediction was obtained through the fusion of these sensing devices, the coefficients of determination, the residual prediction deviation, and the range error ratio exceeded the 0.98%, 5.4%, and 14.73%, respectively. In parallel, the classification rate for the grouping of the testing samples into three classes was perfect. Based on the acquired results, the proposed analytical concept could potentially provide an alternative approach towards the efficient detection of meat spoilage.
肉的品质对消费者的健康状况起着重要作用;因此,肉类行业一直在不断追求能够进行客观准确质量评估的技术。多光谱成像和电子鼻是用于快速无损检测肉类腐败的有价值技术。为了利用这两种不同传感设备提供的互补信息,探索了一种高级数据融合策略。通过这种融合方案,这项工作的目的是首先估计 spp. 和乳酸菌的总活菌数,然后将肉样的状态分为三类(新鲜、半新鲜和变质)。通过使用神经网络生成额外的“虚拟”样本集,解决了可用数据集规模小这个问题。实施了基于神经模糊的回归模型,并将其输出进行组合以估计这些微生物数量。在对这些估计进行评估之后,可以认为通过融合这些传感设备获得了最有效的预测,决定系数、残差预测偏差和范围误差率分别超过了0.98%、5.4%和14.73%。同时,将测试样本分为三类的分类率是完美的。基于所获得的结果,所提出的分析概念可能为肉类腐败的有效检测提供一种替代方法。