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A novel algorithm for the automatic segmentation of rice planthoppers in rice fields using image processing

机译:一种新型图像处理稻田水稻植物盆地自动分割的新算法

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摘要

The diagnosis of rice planthopper pests based on imaging technology is an efficient means to develop intelligent agriculture. Automatic contour extraction is an important pretreatment technology for the early identification and classification of rice planthopper pests. However, the segmentation of rice planthoppers is made difficult by the heterogeneous texture of sensed images resulting from the curtain serving as the background. Thus, this study developed a novel method based on digital image processing to segment rice planthoppers with a curtain under paddy field conditions. First, the output phase of the transform was used for edge detection on the basis of a nonlinear dispersive phase operation applied to the image. Second, to further increase the robustness of the proposed method, we calculated the entropy of the edge directions in a small neighborhood window to convert the gray-level image into an entropy image because the background edges showed consistent edge directions and a pest's region presented a high variation of edge directions. Then, we proposed a mean shift method that is based on color features, entropy features, and edge features, which were integrated to enhance the target information and thereby reduce the localization error of object segmentation. Experimental results showed the successful implementation of the proposed method in the segmentation of rice planthoppers. Moreover, the integration of the aforementioned features improved the robustness of the proposed algorithm to changes in illumination conditions.
机译:基于成像技术的水稻Planthopper害虫的诊断是开发智能农业的有效手段。自动轮廓提取是一种重要的预处理技术,用于早期鉴定和稻米盆栽害虫的分类。然而,水稻Planthoppers的分割是由由用作背景的窗帘产生的感测图像的异构纹理难以实现。因此,本研究开发了一种基于数字图像处理的新方法,以在稻田条件下与帘布窗帘分段。首先,基于施加到图像的非线性分散相操作,使用变换的输出阶段进行边缘检测。其次,为了进一步提高所提出的方法的稳健性,我们计算了一个小邻域窗口中的边缘方向的熵,以将灰度级图像转换为熵图像,因为背景边缘显示了一致的边缘方向和播放的区域呈现a边缘方向的高变化。然后,我们提出了一种基于颜色特征,熵特征和边缘特征的平均移位方法,该方法被集成以增强目标信息,从而降低对象分割的本地化误差。实验结果表明,在水稻Planthoppers分割中的提出方法的成功实施。此外,上述特征的集成改善了所提出的算法对照明条件的变化的鲁棒性。

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