Application of Attention-Enhanced 1D-CNN Algorithm in Hyperspectral Image and Spectral Fusion Detection of Moisture Content in Orah Mandarin (Citrus reticulata Blanco)

Information Pub Date : 2024-07-14 DOI:10.3390/info15070408
Weiq Li, Yifan Wang, Yue Yu, Jie Liu
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Abstract

A method fusing spectral and image information with a one-dimensional convolutional neural network(1D-CNN) for the detection of moisture content in Orah mandarin (Citrus reticulata Blanco) was proposed. The 1D-CNN model integrated with three different attention modules (SEAM, ECAM, CBAM) and machine learning models were applied to individual spectrum and fused information by passing the traditional feature extraction stage. Additionally, the dimensionality reduction of hyperspectral images and extraction of one-dimensional color and textural features from the reduced images were performed, thus avoiding the large parameter volumes and efficiency decline inherent in the direct modeling of two-dimensional images. The results indicated that the 1D-CNN model with integrated attention modules exhibited clear advantages over machine learning models in handling multi-source information. The optimal machine learning model was determined to be the random forest (RF) model under the fusion information, with a correlation coefficient (R) of 0.8770 and a root mean square error (RMSE) of 0.0188 on the prediction set. The CBAM-1D-CNN model under the fusion information exhibited the best performance, with an R of 0.9172 and an RMSE of 0.0149 on the prediction set. The 1D-CNN models utilizing fusion information exhibited superior performance compared to single spectrum, and 1D-CNN with the fused information based on SEAM, ECAM, and CBAM respectively improved Rp by 4.54%, 0.18%, and 10.19% compared to the spectrum, with the RMSEP decreased by 11.70%, 14.06%, and 31.02%, respectively. The proposed approach of 1D-CNN integrated attention can obtain excellent regression results by only using one-dimensional data and without feature pre-extracting, reducing the complexity of the models, simplifying the calculation process, and rendering it a promising practical application.
注意力增强型 1D-CNN 算法在奥拉柑(Citrus reticulata Blanco)水分含量的高光谱图像和光谱融合检测中的应用
提出了一种利用一维卷积神经网络(1D-CNN)融合光谱和图像信息检测奥拉柑(Citrus reticulata Blanco)水分含量的方法。一维卷积神经网络模型集成了三种不同的注意力模块(SEAM、ECAM、CBAM)和机器学习模型,通过传统的特征提取阶段,应用于单个光谱和融合信息。此外,还对高光谱图像进行了降维处理,并从降维后的图像中提取一维色彩和纹理特征,从而避免了直接对二维图像建模所固有的参数量大和效率下降的问题。结果表明,与机器学习模型相比,集成了注意力模块的一维-CNN 模型在处理多源信息方面具有明显优势。在融合信息下,最佳机器学习模型被确定为随机森林(RF)模型,预测集上的相关系数(R)为 0.8770,均方根误差(RMSE)为 0.0188。融合信息下的 CBAM-1D-CNN 模型表现最佳,在预测集上的 R 值为 0.9172,均方根误差为 0.0149。与单一频谱相比,利用融合信息的 1D-CNN 模型表现出更优越的性能,基于 SEAM、ECAM 和 CBAM 的融合信息的 1D-CNN 与频谱相比,Rp 分别提高了 4.54%、0.18% 和 10.19%,RMSEP 分别降低了 11.70%、14.06% 和 31.02%。所提出的一维-CNN 集成注意力方法只需使用一维数据,无需特征预提取,就能获得优异的回归结果,降低了模型的复杂度,简化了计算过程,具有广阔的实际应用前景。
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