School of Electrical and Information Engineering, Jiangsu University, Zhenjiang, Jiangsu, China.
School of Food Science and Biological Engineering, Jiangsu University, Zhenjiang, Jiangsu, China.
J Food Sci. 2024 Jul;89(7):4403-4418. doi: 10.1111/1750-3841.17151. Epub 2024 Jun 21.
The improper storage of seeds can potentially compromise agricultural productivity, leading to reduced crop yields. Therefore, assessing seed viability before sowing is of paramount importance. Although numerous techniques exist for evaluating seed conditions, this research leveraged hyperspectral imaging (HSI) technology as an innovative, rapid, clean, and precise nondestructive testing method. The study aimed to determine the most effective classification model for watermelon seeds. Initially, purchased watermelon seeds were segregated into two groups: One underwent sterilization in a dehydrator machine at 40°C for 36 h, whereas the other batch was stored under favorable conditions. Watermelon seeds' spectral images were captured using an HSI with a charge-coupled device camera ranging from 400 to 1000 nm, and the segmented regions of all samples were measured. Preprocessing techniques and wavelength selection methods were applied to manage spectral data workload, followed by the implementation of a support vector machine (SVM) model. The initial hybrid-SVM model achieved a predictive accuracy rate of 100%, with a test set accuracy of 92.33%. Subsequently, an artificial bee colony (ABC) optimization was introduced to enhance model precision. The results indicated that, with kernel parameters (c, g) set at 13.17 and 0.01, respectively, and a runtime of 4.19328 s, the training and evaluation of the dataset achieved an accuracy rate of 100%. Hence, it was practical to utilize HSI technology combined with the PCA-ABC-SVM model to detect different watermelon seeds. As a result, these findings introduce a novel technique for accurately forecasting seed viability, intended for use in agricultural industrial multispectral imaging. PRACTICAL APPLICATION: The traditional methods for determining the condition of seeds primarily emphasize aesthetics, rely on subjective assessment, are time-consuming, and require a lot of labor. On the other hand, HSI technology as green technology was employed to alleviate the aforementioned problems. This work significantly contributes to the field of industrial multispectral imaging by enhancing the capacity to discern various types of seeds and agricultural crop products.
种子储存不当可能会降低农业生产力,导致作物产量减少。因此,播种前评估种子活力至关重要。虽然有许多技术可用于评估种子状况,但本研究利用高光谱成像 (HSI) 技术作为一种创新、快速、清洁和精确的无损检测方法。该研究旨在确定最有效的西瓜种子分类模型。最初,将购买的西瓜种子分为两组:一组在 40°C 的干燥机中进行 36 小时的消毒,另一组则在有利条件下储存。使用带有 CCD 相机的 HSI 从 400nm 到 1000nm 捕获西瓜种子的光谱图像,并测量所有样本的分割区域。应用预处理技术和波长选择方法来管理光谱数据工作量,然后实施支持向量机 (SVM) 模型。初始混合 SVM 模型的预测准确率为 100%,测试集准确率为 92.33%。随后,引入了人工蜂群 (ABC) 优化来提高模型精度。结果表明,核参数 (c,g) 分别设置为 13.17 和 0.01,运行时间为 4.19328s,数据集的训练和评估达到了 100%的准确率。因此,使用 HSI 技术结合 PCA-ABC-SVM 模型来检测不同的西瓜种子是可行的。这些发现引入了一种新的技术,可以准确预测种子活力,用于农业工业多光谱成像。实际应用:传统的种子状况确定方法主要强调美观,依赖主观评估,耗时且需要大量劳动力。另一方面,绿色技术 HSI 被用于缓解上述问题。这项工作通过提高识别各种类型的种子和农业作物产品的能力,为工业多光谱成像领域做出了重大贡献。