1)贵州大学大数据与信息工程学院,贵阳 550025;2)贵阳学院贵州省教育厅农产品无损检测工程研究中心,贵阳 550005
国家自然科学基金(62265003,62141501)资助项目。
1)College of Big Data and Information Engineering, Guizhou University, Guiyang 550025, China;2)Nondestructive Testing Engineering Research Center for Agricultural Products of Department Education in Guizhou Province, Guiyang University, Guiyang 550005, China
This work was supported by grants from The National Natural Science Foundation of China (62265003, 62141501).
目的 常规可见光图像对作物病害检测主要集中在发病期的显著特征进行识别,而病害潜育期由于症状尚不明显,相关识别方法较为匮乏,因此利用可见光图像对作物病害潜育期症前特征进行识别具有重要的意义。本文提出一种用于识别作物潜育期可见光图像的三通道识别模型。方法 以茄科作物辣椒和番茄为例,通过连续拍摄健康与接种早疫病病株的叶片可见光图像并划分出病斑区域,提取出病斑区域颜色特征的一阶矩、二阶矩、三阶矩。通过对颜色矩变化率的分析,将最能反映早疫病病斑像素变化情况的S通道一阶矩作为特征,划分出健康、早疫病潜育期、早疫病早期、早疫病晚期四种类别,并结合颜色空间三通道信息构建用于识别早疫病潜育期病状的三通道识别模型。结果 实验以1 258张可见光图像进行测试,基于L-a-b颜色空间建立的三通道模型对辣椒早疫病潜育期的识别准确率达到94.44%,基于H-S-V颜色空间建立的三通道模型对番茄早疫病潜育期病状的识别准确率达到100%。结论 本文提出的三通道识别模型实现了对辣椒和番茄早疫病潜育期病状的有效检测,这为农作物病害的早期监测和科学防控提供了新的技术路径,亦可推广应用于其他作物病害潜育期的可见光图像识别研究。
Objective Early detection of crop diseases is crucial for effective agricultural management and yield protection. While visible light imaging has been widely applied for disease detection due to its accessibility and non-destructive nature, most existing methods primarily focus on identifying diseases during the symptomatic phase, when visual symptoms are already prominent. However, detecting plant diseases during the incubation period—when symptoms are still subtle or invisible—remains a major challenge due to the lack of distinctive visual cues and limited research methodologies. This study aims to address this gap by proposing a novel three-channel recognition model to accurately identify early blight symptoms during the incubation stage in Solanaceae crops, particularly in chili and tomato, using only visible light images.Methods We established a controlled experimental setup in which healthy leaves and leaves inoculated with early blight pathogens were photographed continuously over time. A total of 1 258 visible light images were collected, capturing various stages of disease progression. From these images, lesion regions were manually annotated. To quantitatively characterize early and subtle color changes within the lesion areas, we extracted color moments—first-order (mean), second-order (standard deviation), and third-order (skewness)—from multiple color spaces, including Lab and HSV. By analyzing the temporal variation of these color moments across disease progression stages, we identified the first-order moment of the saturation (S) channel in the HSV color space as the most sensitive indicator of lesion development on inoculated leaves. Using this insight, we defined four disease categories: healthy, incubation stage, early stage, and late stage. Subsequently, a three-channel classification model was constructed by integrating features from three color channels that provided complementary information. Three-channel models were constructed based on R-G-B, L-a-b, and H-S-V color spaces, respectively, to evaluate performance across different crops and to determine which color representation provides the most discriminative power for identifying disease symptoms during the incubation period.Results The proposed models demonstrated strong classification performance. The three-channel model built using the Lab color space achieved a 94.44% accuracy in recognizing the incubation stage of early blight in pepper, effectively distinguishing subtle pre-symptomatic features from healthy tissue. The model based on the HSV color space achieved 100% accuracy in detecting incubation-stage symptoms in tomato, underscoring the discriminative power of S-channel variations in this context. These results confirm the model’s capability to identify early blight before visible lesions become pronounced, which is essential for timely disease intervention.Conclusion This study presents a new technical pathway for early-stage disease detection using visible light images by focusing on subtle color feature changes during the incubation period. The proposed three-channel recognition model effectively identifies early blight in both chili and tomato, offering a non-destructive, low-cost, and easily deployable solution for early warning and precision agriculture. Furthermore, this framework can be generalized to other crops and diseases where early detection plays a critical role in minimizing yield losses and ensuring sustainable production. The method lays a solid foundation for future research in pre-symptomatic plant disease recognition and provides valuable tools for intelligent crop monitoring and precision management systems.
庞浩,张艳.作物潜育期病状可见光图像三通道识别模型[J].生物化学与生物物理进展,2025,52(10):2650-2662
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