Non-Destructive Detection of Internal Quality of Sanhua Plum Based on Multi-Source Information Fusion
Weihao Zheng, Sai Xu, Xin Liang, Huazhong Lu, Pingzhi Wu

TL;DR
This study introduces a non-destructive method using near-infrared spectroscopy and images to assess the internal quality of Sanhua Plums, improving accuracy and automation.
Contribution
A novel multi-source information fusion model combining spectroscopy and images for enhanced non-destructive quality assessment of Sanhua Plums.
Findings
The fusion model achieved an R2 of 0.8871 and RMSE of 0.4141, outperforming individual models.
Spectral data preprocessing with SG and SNV improved model accuracy.
The method supports automated quality evaluation in narrow terrains.
Abstract
This research addresses the limitations of traditional assembly line equipment, which is costly and impractical for narrow terrains, as well as the challenges of portable devices in large-scale detection. We propose a non-destructive testing method for assessing the internal quality of Sanhua Plums using a free-fall approach that integrates near-infrared spectroscopy and images. Through analysis of models created from spectral data collected under optimal conditions (motor speed: 6.6 r/min, integration time: 14 ms, spot diameter: 20 mm), we processed near-infrared data from 120 plums. The spectral data underwent preprocessing with polynomial smoothing (SG) and Standard Normal Variate (SNV) calibration, followed by feature extraction using Competitive Adaptive Reweighted Sampling (CARS), resulting in a prediction model for soluble solid content with R2 of 0.8374 and RMSE of 0.5014.…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Smart Agriculture and AI · Remote Sensing in Agriculture
