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Improving Intramuscular Fat Assessment in Pork by Synergy Between Spectral and Spatial Features in Hyperspectral Image

机译:通过高光谱图像光谱和空间特征的协同作用改善猪肉肌内脂肪评估

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摘要

Meat is a complex matrix of structural features exhibiting physical and chemical variations. The duality of the spatial and spectral information in the hyperspectral image of meat provides complementary information, and a synergistic fusion of the information will allow for the development of a rapid and non-invasive system based on hyperspectral imaging for assessment of a chemical component in meat. Intramuscular fat (IMF) is a critical factor in meat purchase decision making. Traditional techniques for IMF measurement are time-consuming destructive and laborious. This study investigated the use of data fusion techniques to fuse spectral and image data obtained from hyperspectral images of pork samples for the purpose of developing a technique for rapid and non-destructive prediction of IMF in pork. Following the acquisition of the images, image processing was conducted to create the region of interest. The mean spectral and the textural information data were obtained from the region of interest by spectra averaging and the use of Gabor filter and gray-level co-occurrence matrix techniques for image pattern recognition. These features were systematically fused using low-level, mid-level, and high-level data fusion techniques. The fused data were inputted into partial least square, and support vector machines to developed prediction models for IMF in pork. The result showed that the data fusion resulted in a higher prediction of IMF than the use of either spectral or textural information in isolation.
机译:肉类是一种复杂的结构特征基质,表现出物理和化学变化。肉类高光谱图像中空间和光谱信息的二元性提供了互补信息,信息的协同融合将允许开发基于高光谱成像的快速和非侵入性系统,以评估肉类中的化学成分。肌内脂肪 (IMF) 是肉类购买决策的关键因素。传统的IMF计量技术耗时、破坏性和费力。本研究探讨了使用数据融合技术融合从猪肉样品的高光谱图像中获得的光谱和图像数据,以开发一种快速、无损预测猪肉中 IMF 的技术。采集图像后,进行图像处理以创建感兴趣的区域。通过光谱平均以及使用Gabor滤波器和灰度共生矩阵技术进行图像模式识别,从感兴趣区域获得平均光谱和纹理信息数据。这些特征使用低级、中级和高级数据融合技术进行系统融合。将融合后的数据输入到偏最小二乘和支持向量机中,以开发猪肉中IMF的预测模型。结果表明,与单独使用光谱或纹理信息相比,数据融合导致对IMF的预测更高。

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