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Leaf recognition and segmentation by using depth image

机译:利用深度图像进行叶片识别与分割

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Measuring the geometric structural traits of plants, especially the shape of leaves, plays an important role in the agricultural science. However, most existing techniques and systems have limited overall performance in accuracy, efficiency and descriptive ability, which is insufficient for the requirements in many real applications. In this study, a new kind of sensing device, the Kinect depth sensor which measures the real distance to objects directly and is able to capture high-resolution depth images, is exploited for the automatic recognition and extraction of leaves. The pixels of the depth image are converted into a set of 3D points and transformed into a standard coordinate system after ground calibration. Leaves are extracted based on the height information and a hierarchical clustering algorithm, which combines the density-based spatial clustering algorithm and the mean-shift algorithm, is proposed for the automatic segmentation of leaves. Experimental result shows the effectiveness of our proposed method.
机译:测量植物的几何结构特征,尤其是叶子的形状,在农业科学中起着重要的作用。然而,大多数现有技术和系统在准确性,效率和描述能力方面的整体性能有限,这不足以满足许多实际应用中的要求。在这项研究中,一种新型的传感设备,即Kinect深度传感器,可以直接测量到物体的真实距离并能够捕获高分辨率的深度图像,从而可以自动识别和提取树叶。在地面校准后,深度图像的像素将转换为3D点集,并转换为标准坐标系。基于高度信息提取叶片,提出一种基于密度的空间聚类算法和均值漂移算法相结合的层次聚类算法,用于叶片的自动分割。实验结果表明了该方法的有效性。

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