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Weed and Corn Seedling Detection in Field Based on Multi Feature Fusion and Support Vector Machine

机译:基于多特征融合和支持向量机的领域杂草和玉米苗探测

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摘要

Detection of weeds and crops is the key step for precision spraying using the spraying herbicide robot and precise fertilization for the agriculture machine in the field. On the basis of k-mean clustering image segmentation using color information and connected region analysis, a method combining multi feature fusion and support vector machine (SVM) was proposed to identify and detect the position of corn seedlings and weeds, to reduce the harm of weeds on corn growth, and to achieve accurate fertilization, thereby realizing precise weeding or fertilizing. First, the image dataset for weed and corn seedling classification in the corn seedling stage was established. Second, many different features of corn seedlings and weeds were extracted, and dimensionality was reduced by principal component analysis, including the histogram of oriented gradient feature, rotation invariant local binary pattern (LBP) feature, Hu invariant moment feature, Gabor feature, gray level co-occurrence matrix, and gray level-gradient co-occurrence matrix. Then, the classifier training based on SVM was conducted to obtain the recognition model for corn seedlings and weeds. The comprehensive recognition performance of single feature or different fusion strategies for six features is compared and analyzed, and the optimal feature fusion strategy is obtained. Finally, by utilizing the actual corn seedling field images, the proposed weed and corn seedling detection method effect was tested. LAB color space and K-means clustering were used to achieve image segmentation. Connected component analysis was adopted to remove small objects. The previously trained recognition model was utilized to identify and label each connected region to identify and detect weeds and corn seedlings. The experimental results showed that the fusion feature combination of rotation invariant LBP feature and gray level-gradient co-occurrence matrix based on SVM classifier obtained the highest classification accuracy and accurately detected all kinds of weeds and corn seedlings. It provided information on weed and crop positions to the spraying herbicide robot for accurate spraying or to the precise fertilization machine for accurate fertilizing.
机译:杂草和作物的检测是使用喷涂除草机器人精密喷涂的关键步骤,并为该领域的农业机器进行精确施肥。基于使用颜色信息和连接区域分析的k均值聚类图像分割,提出了一种组合多个特征融合和支持向量机(SVM)的方法来识别和检测玉米幼苗和杂草的位置,以减少危害杂草在玉米生长,实现准确的施肥,从而实现精确的杂草或施肥。首先,建立了玉米苗期杂草和玉米幼苗分类的图像数据集。二,提取了许多不同特征的玉米苗和杂草的特征,并通过主成分分析减少了维度,包括面向梯度特征的直方图,旋转不变的局部二进制模式(LBP)功能,HU不变时刻特征,Gabor特征,灰度级共发生矩阵,灰度梯度共发生矩阵。然后,进行了基于SVM的分类器训练,以获得玉米幼苗和杂草的识别模型。比较和分析了单一特征或不同融合策略的全面识别性能,并获得了最佳特征融合策略。最后,通过利用实际的玉米苗木图像,测试了拟议的杂草和玉米幼苗检测方法效果。实验室颜色空间和K-means群集用于实现图像分割。采用连接的分量分析来消除小物体。先前培训的识别模型用于识别和标记每个连接区域以识别和检测杂草和玉米幼苗。实验结果表明,基于SVM分类器的旋转不变LBP特征和灰度级梯度共发生矩阵的融合特征组合获得了最高的分类精度,准确地检测了各种杂草和玉米苗。它为喷洒除草机器人提供有关杂草和作物位置的信息,以精确喷涂或精确施肥机以精确施肥。

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