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A deep learning based regression method on hyperspectral data for rapid prediction of cadmium residue in lettuce leaves

机译:一种深度学习基于高光谱数据的回归方法,用于莴苣叶中镉渣的快速预测

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摘要

In order to effectively realize the spectral detection of heavy metal content, a deep learning method which consisted of stacked auto-encoders (SAE) and partial least squares support vector machine regression (LSSVR) is proposed to obtain depth features and establish cadmium (Cd) detection model. The Vis-NIR hyperspectral images of 1120 lettuce leaf samples were obtained and the whole region of lettuce leaf sample spectral data was collected and preprocessed with different spectral pre-treatment methods. Successive projections algorithm (SPA), partial least squares regression (PLSR) and SAE were used to acquire the optimum wavelength, respectively. Besides, the characteristic wavelengths were used to build partial least squares support vector machine regression (LSSVR) models. Furthermore, the best prediction performance for detecting Cd content in lettuce leaves was obtained by Savitzky-Golay combined with first derivative (SG-1st) pre-processing method, with R-p(2) of 0.9487, RMSEP of 0.01049 mg/kg and RPD of 3.330 using SAE-LSSVR method. The results of this study indicated that deep learning method coupled with hyperspectral imaging technique has great potential for detecting heavy metal content in lettuce leaves.
机译:为了有效地实现重金属含量的光谱检测,提出了一种由堆叠的自动编码器(SAE)和部分最小二乘支持向量机回归(LSSVR)组成的深度学习方法,以获得深度特征并建立镉(CD)检测模型。获得1120型莴苣叶样品的Vis-Nir高光谱图像,并收集莴苣叶片样品光谱数据的整个区域,并用不同的光谱预处理方法预处理。连续投影算法(SPA),部分最小二乘回归(PLSR)和SAE分别用于获取最佳波长。此外,特征波长用于构建偏最小二乘支持向量机回归(LSSVR)模型。此外,通过Savitzky-Golay与第一衍生物(SG-1ST)预处理方法结合,RP(2)为0.9487,RMSEP为0.01049mg / kg和rpd,获得了用于检测莴苣叶中Cd含量的最佳预测性能.01049mg / kg和rpd 3.330使用SAE-LSSVR方法。该研究的结果表明,与高光谱成像技术耦合的深度学习方法具有检测莴苣叶中重金属含量的巨大潜力。

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