Archive/Research on a Portable Multispectral Imaging System for Starch Content Detection in Watermelon–Pumpkin Grafted Seedling Leaves
Research on a Portable Multispectral Imaging System for Starch Content Detection in Watermelon–Pumpkin Grafted Seedling Leaves
Shengyong Xu, Honglei Yang, Yu Zeng et al.
21 de mayo de 2026
en

Abstract

Plant leaf starch content is a critical indicator of metabolic status, yet traditional enzymatic methods are destructive, labor-intensive, and costly. This study proposes a novel non-destructive detection method using watermelon–pumpkin grafted seedlings. To optimize hardware design, 12 characteristic wavelengths were identified via competitive adaptive reweighted sampling (CARS). A portable multispectral imaging system was developed, featuring narrowband LEDs and integrated human–computer interaction software for real-time visualization. We constructed a multimodal deep learning architecture that integrates a convolutional neural network (CNN) for spatial feature extraction from RGB images, a fully connected neural network (FCNN) for spectral data, and a Transformer network for high-level feature fusion. Experimental results showed that the ShuffleNet v2-Transformer model achieved an R2 of 0.956 (RMSE = 0.036) for watermelon leaves, while the EfficientNet b1-Transformer model reached an R2 of 0.967 (RMSE = 0.052) for pumpkin leaves. This multimodal approach significantly outperformed conventional PLSR and single-modal CNN models, demonstrating superior ability in processing long-range dependencies within spectral–spatial data. The system enables accurate detection with a throughput of 120 samples per hour at a hardware cost approximately 90% lower than commercial multispectral cameras. This provides an efficient, low-cost solution for large-scale monitoring of plant physiological indicators in precision breeding.

IPC Classification

G06H04A01

Keywords

researchportablemultispectralimagingsystemstarchcontentdetectionwatermelonpumpkingraftedseedlingleavesagricultureplantleafcriticalindicatormetabolicstatustraditionalenzymaticdestructivelabor-intensive
Citar esta publicación

€ 4.00