School of Automation Engineering, Northeast Electric Power University, Jilin 132012, China; Bionic Sensing and Pattern Recognition Team, Northeast Electric Power University, Jilin 132012, China.
School of Bioengineering, Chongqing University, Chongqing 400044, China.
Food Chem. 2024 May 15;440:138207. doi: 10.1016/j.foodchem.2023.138207. Epub 2023 Dec 14.
The quality of soybeans is correlated with their geographical origin. It is a common phenomenon to replace low-quality soybeans from substandard origins with superior ones. This paper proposes the adaptive convolutional kernel channel attention network (AKCA-Net) combined with an electronic nose (e-nose) to achieve soybean quality traceability. First, the e-nose system is used to collect soybean gas information from different origins. Second, depending on the characteristics of the gas information, we propose the adaptive convolutional kernel channel attention (AKCA) module, which focuses on key gas channel features adaptively. Finally, the AKCA-Net is proposed, which is capable of modeling deep gas channel interdependency efficiently, realizing high-precision recognition of soybean quality. In comparative experiments with other attention mechanisms, AKCA-Net demonstrated superior performance, achieving an accuracy of 98.21%, precision of 98.57%, and recall of 98.60%. In conclusion, the combination of the AKCA-Net and e-nose provides an effective strategy for soybean quality traceability.
大豆的质量与其地理起源有关。用优质大豆代替劣质非标准起源的大豆是很常见的现象。本文提出了一种结合电子鼻(e-nose)的自适应卷积核通道注意力网络(AKCA-Net),以实现大豆质量可追溯性。首先,电子鼻系统用于收集来自不同产地的大豆气体信息。其次,根据气体信息的特点,我们提出了自适应卷积核通道注意力(AKCA)模块,能够自适应地关注关键气体通道特征。最后,提出了 AKCA-Net,能够有效地建模深气体通道的相互依赖性,实现大豆质量的高精度识别。与其他注意力机制的对比实验表明,AKCA-Net 具有优越的性能,准确率达到 98.21%,精度达到 98.57%,召回率达到 98.60%。综上所述,AKCA-Net 与电子鼻的结合为大豆质量可追溯性提供了一种有效的策略。