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首页> 外文期刊>Journal of food engineering >Predicting mechanical properties of fried chicken nuggets using image processing and neural network techniques
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Predicting mechanical properties of fried chicken nuggets using image processing and neural network techniques

机译:使用图像处理和神经网络技术预测炸鸡块的机械性能

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摘要

Typical approaches for measuring mechanical properties of fried food products are mostly destructive techniques. In this study, a non-destructive, image-based method was evaluated for predicting mechanical properties of fried, breaded chicken nuggets. The textural parameters of interest, namely maximum load, energy to break point, and toughness of fried chicken nuggets were measured. Values of the parameters changed over frying time. Images of the chicken nuggets were collected at different frying stages and five image texture indices were extracted using co-occurrence matrix. A multiple-layer feed-forward neural network was established to predict the three mechanical parameters. The correlation coefficients of the predicted results with those from mechanical tests were above 0.84.
机译:测量油炸食品机械性能的典型方法主要是破坏性技术。在这项研究中,评估了一种基于图像的非破坏性方法来预测油炸面包面包鸡块的机械性能。测量了感兴趣的纹理参数,即最大载荷,断点能量和炸鸡块的韧性。参数值随油炸时间而变化。在不同油炸阶段收集鸡块图像,并使用共现矩阵提取五个图像纹理指数。建立了多层前馈神经网络来预测三个机械参数。预测结果与机械测试的相关系数在0.84以上。

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