基于无人机遥感影像的收获期后残膜识别方法
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贵州省科技计划项目(黔科合平台人才[2019]5616)和贵州省普通高等学校工程研究中心项目(黔教合KY字[2017]015)


Identification Method of Plastic Film Residue Based on UAV Remote Sensing Images
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    摘要:

    针对人工评估农田残膜劳动强度高、效率低等问题,以及收获期后残膜识别困难的问题,提出了一种基于颜色特征的残膜识别方法。为了克服光照对残膜识别精度的影响,首先分析了阳光直射区、阴影区残膜和土壤RGB与HSV颜色分量灰度差异;然后,选择最佳颜色分量进行残膜图像分割,分别对比分析了手动阈值法、迭代阈值法、最大类间方差法、最大熵值法、Kmeans均值聚类法和脉冲耦合神经网络法的分割效果,结合原始图像残膜分布特点,优选出基于脉冲耦合神经网络的分割法;结合图像形态学算法,最终提取了烟地残膜面积与分布。结果表明,B分量可从背景中分割出直射区残膜,但不能分割阴影区残膜;S分量可从背景中分割出直射区和阴影区残膜;基于S分量的脉冲耦合神经网络分割法效果最佳,利用该方法对不同时期的农田残膜进行识别,6叶期、烟叶收获后、烟杆拔除后和冬季空闲期的识别率分别为96.99%、69.47%、93.55%和88.95%,地膜覆盖周期的平均识别率为87.49%。本文方法可快速准确地识别出秋后的农田残膜,提供残膜时空分布信息及变化特征,可为农田环境健康评估提供决策依据。

    Abstract:

    Artificial evaluation of plastic film residue is high labor intensity and low efficiency. A method of combining with color features extraction, impulse coupled neural network segmentation and image morphology algorithm to recognize residual plastic film was proposed in the field by using UAV images. The research area was Pingba County of Anshun City, Guizhou Province, and 1500 images were taken in the research area as experimental data. The UAV was flying at a height of about 40m, and the image data were collected under clear and windfree conditions. These UAV images were conducted geometric correction, 3×3 median filter and histogram equalization processing. Two color space transformation models (RGB, HSV) were compared and analyzed. In order to find out the influence of light intensity on the recognition accuracy, the direct sunlight area and the shadow area of foreground (residual plastic film) and background (soil) were separated to analyze their gray value difference with two color model. It was found that the gray value of shadow area foreground was between the direct sunlight area background and the shadow area background in term of B component while the direct sunlight foreground and shadow area foreground was lower than the background in the term of S component. The manual threshold method, the iterative threshold method, the maximum interclass variance method, the maximum entropy method, the Kmeans clustering method and the impulse coupled neural network were used to segment the residual plastic film from background for both of the B and S components respectively. It was found that the B component was able to recognize sunlight area foreground but not able to recognize shadow area foreground from background. The S component was able to recognize direct sunlight and shadow area foreground from the background. Moreover, the impulse coupled neural network method based on S component had better segmentation effect, and the maximum interclass variance and the iterative threshold method was the second. According to the sunlight direction and different crop growth periods, recognition algorithms for identifying residual film in the field were established. The identification rates were 96.99%, 69.47%, 93.55% and 88.95%, respectively, at sixleaf stage of tobacco growth, after tobacco leaves were harvested, after tobacco rods were pulled out and during the winter idle period. The average overall recognition accuracy of the test area was 87.49%. This method demonstrated fast speed and high recognition accuracy, which can provide a reference for the evaluation and precision collection of residual film. 

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吴雪梅,梁长江,张大斌,喻丽华,张富贵.基于无人机遥感影像的收获期后残膜识别方法[J].农业机械学报,2020,51(8):189-195. WU Xuemei, LIANG Changjiang, ZHANG Dabin, YU Lihua, ZHANG Fugui. Identification Method of Plastic Film Residue Based on UAV Remote Sensing Images[J]. Transactions of the Chinese Society for Agricultural Machinery,2020,51(8):189-195.

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  • 收稿日期:2019-11-15
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  • 在线发布日期: 2020-08-10
  • 出版日期: 2020-08-10