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A data fusion detection method for fish freshness based on computer vision and near-infrared spectroscopy

机译:基于计算机视觉和近红外光谱的鱼类新鲜度数据融合检测方法

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Freshness is one of the most significant parameters of fish quality. This study aims to develop a new rapid non-destructive technique to assess fish freshness. Two different technologies including computer vision and near-infrared spectroscopy (NIR spectroscopy) were employed in the detection. Subsequently a new data fusion detection method was developed to improve the accuracy of classification by combining the inspection data of computer vision with that of NIR spectroscopy. Parabramis pekinensis bought from a local market were taken as experimental samples. The total volatile basic nitrogen (TVB-N) content of the samples was measured as an indicator of fish freshness using conventional methods. Computer vision and NIR spectroscopy were used to acquire image information for organoleptic changes and spectrum information for structural changes in the fish samples during storage, respectively. Principal component analysis (PCA) was used for data compression to reduce the dimensionality of the data set while essential information was retained, which made the analysis easier than it would have been for the original huge data set. A back propagation artificial neural network (BP-ANN) was used to build a prediction model by obtaining a non-linear relation between the fish freshness and the body changes during storage. The results showed that computer vision technology outperformed NIR spectroscopy techniques, for the BP-ANN model reached a 94.17% success rate in the training set and 90.00% in the prediction set using the computer vision technology, while the model of NIR spectroscopy reached 86.67% and 80.00% in the training set and prediction set respectively. This showed improved fish freshness classification using computer vision technology rather than the NIR spectroscopic method. Therefore, the data from the two techniques were considered simultaneously, using the classification model BP-ANN, which achieves the optimum performance of 96.67% and 93.33% corresponding to the training set and prediction set respectively using data fusion. Therefore, this demonstrated for the first time the feasibility and superiority of data fusion by integrating computer vision and NIR spectroscopy in the classification of fish freshness.
机译:新鲜度是鱼类质量的最重要参数之一。这项研究旨在开发一种新的快速非破坏性技术来评估鱼类的新鲜度。在检测中采用了两种不同的技术,包括计算机视觉和近红外光谱(NIR光谱)。随后,开发了一种新的数据融合检测方法,通过将计算机视觉的检查数据与近红外光谱的检查数据相结合来提高分类的准确性。从当地市场购得的北京金枪鱼作为实验样品。使用常规方法测量样品的总挥发性碱性氮(TVB-N)含量,作为鱼类新鲜度的指标。在存储过程中,分别使用计算机视觉和近红外光谱来获取鱼样品感官变化的图像信息和鱼体结构变化的光谱信息。主成分分析(PCA)用于数据压缩,以减少数据集的维数,同时保留必要的信息,这使分析比原始的大型数据集更容易分析。反向传播人工神经网络(BP-ANN)用于通过获取鱼的新鲜度与存储过程中的身体变化之间的非线性关系来构建预测模型。结果表明,计算机视觉技术的性能优于NIR光谱技术,对于BP-ANN模型,使用计算机视觉技术的训练集成功率达到94.17%,预测集成功率达到90.00%,而NIR光谱模型达到86.67%训练集和预测集分别为80.00%和80.00%。这表明使用计算机视觉技术而非NIR光谱法改善了鱼类的新鲜度分类。因此,使用分类模型BP-ANN同时考虑来自这两种技术的数据,使用数据融合可以分别实现与训练集和预测集相对应的96.67%和93.33%的最佳性能。因此,这首次证明了通过将计算机视觉和近红外光谱技术集成到鱼类新鲜度分类中来进行数据融合的可行性和优越性。

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