Feng Qin, Wang Shutong, Wang He, Qin Zhilin, Wang Haiguang
College of Plant Protection, China Agricultural University, Beijing, China.
College of Plant Protection, Hebei Agricultural University, Baoding, China.
Front Plant Sci. 2022 Jun 9;13:884891. doi: 10.3389/fpls.2022.884891. eCollection 2022.
Ring rot caused by and anthracnose caused by are two important apple fruit diseases. It is critical to conduct timely and accurate distinction and diagnosis of the two diseases for apple disease management and apple quality control. The automatic distinction between the two diseases was investigated based on image processing technology in this study. The acquired disease images were preprocessed via image scaling, color image contrast stretching, and morphological opening and closing reconstruction. Then, two lesion segmentation methods based on circle fitting were proposed and used to conduct lesion segmentation. After comparison with the manual segmentation results obtained via the software Adobe Photoshop CC, Lesion segmentation method 1 was chosen for further disease image processing. The gray images on the nine components in the RGB, HSI, and Lab* color spaces of the segmented lesion images were filtered by using multi-scale block local binary pattern operators with the sizes of pixel blocks of 1 × 1, 2 × 2, and 3 × 3, respectively, and the corresponding local binary pattern (LBP) histogram vectors were calculated as the features of the lesion images. Subsequently, support vector machine (SVM) models and random forest models were built based on individual LBP histogram features or different LBP histogram feature combinations for distinguishing the diseases. The optimal SVM model with the distinction accuracies of the training and testing sets equal to 100 and 95.12% and the optimal random forest model with the distinction accuracies of the training and testing sets equal to 100 and 90.24% were achieved. The results indicated that the distinction between the two diseases could be implemented with high accuracy by using the proposed method. In this study, a method based on image processing technology was provided for the distinction of ring rot and anthracnose on apple fruits.
由[未提及病原菌名称]引起的轮纹病和由[未提及病原菌名称]引起的炭疽病是苹果果实的两种重要病害。对于苹果病害管理和苹果质量控制而言,及时、准确地区分和诊断这两种病害至关重要。本研究基于图像处理技术对这两种病害进行自动区分。采集到的病害图像经过图像缩放、彩色图像对比度拉伸以及形态学开闭重建等预处理。然后,提出了两种基于圆拟合的病斑分割方法并用于病斑分割。在与通过软件Adobe Photoshop CC获得的手动分割结果进行比较后,选择病斑分割方法1进行进一步的病害图像处理。分别使用像素块大小为1×1、2×2和3×3的多尺度块局部二值模式算子对分割后的病斑图像在RGB、HSI和Lab*颜色空间中的九个分量的灰度图像进行滤波,并计算相应的局部二值模式(LBP)直方图向量作为病斑图像的特征。随后,基于单个LBP直方图特征或不同的LBP直方图特征组合构建支持向量机(SVM)模型和随机森林模型以区分病害。获得了训练集和测试集区分准确率分别为100%和95.12%的最优SVM模型以及训练集和测试集区分准确率分别为100%和90.24%的最优随机森林模型。结果表明,使用所提出的方法可以高精度地实现这两种病害的区分。本研究为苹果果实上轮纹病和炭疽病的区分提供了一种基于图像处理技术的方法。