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首页> 外文期刊>International Journal of Image, Graphics and Signal Processing >Plants Leaves Images Segmentation Based on Pseudo Zernike Moments
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Plants Leaves Images Segmentation Based on Pseudo Zernike Moments

机译:基于伪Zernike矩的植物叶片图像分割

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Leaves images segmentation is an important task in the automated plant identification. Images leaf segmentation is the process of extracting the leaf from its background, which is a challenging task. In this paper, we propose an efficient and effective new approach for leaf image segmentation, we aim to separate the leaves from the background and from their shadow generated when the photo was taken. The proposed approach calculates the local descriptors for the image that will be classified for the separation of the different image's region. We use Pseudo Zernike Moments (PZM) as a local descriptor combined with K-means algorithm for clustering. The efficient of PZM for features extraction lead to very good results in very short time. The validation tests applied on a variety of images, showed the ability of the proposed approach for segmenting effectively the image. The results demonstrate a real improvement compared to those of new existing segmentation method.
机译:叶片图像分割是自动植物识别中的重要任务。图像叶子分割是从背景中提取叶子的过程,这是一项艰巨的任务。在本文中,我们提出了一种有效且有效的叶子图像分割新方法,旨在将叶子与背景以及照片拍摄时产生的阴影分开。所提出的方法计算图像的局部描述符,将其分类以分离不同图像的区域。我们使用伪Zernike矩(PZM)作为结合K-means算法的局部描述符进行聚类。 PZM的特征提取效率很高,可以在很短的时间内得到很好的结果。应用于各种图像的验证测试表明,该方法具有有效分割图像的能力。与新的现有分割方法相比,结果表明了真正的改进。

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