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Pixel-Based Leaf Segmentation from Natural Vineyard Images Using Color Model and Threshold Techniques

机译:使用颜色模型和阈值技术从天然葡萄园图像中进行基于像素的叶分割

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The presence in natural vineyard images of savage foliage, weed, multiple leaves with overlapping, occlusion, and obstruction by objects due to the shadows, dust, insects and other adverse climatic conditions that occur in natural environment at the moment of image capturing, turns leaf segmentation a challenging task. In this paper, we propose a segmentation algorithm based on region growing using color model and threshold techniques for classification of the pixels belonging to vine leaves from vineyard color images captured in real field environment. To assess the accuracy of the proposed vine leaf segmentation algorithm, a supervised evaluation method was employed, in which a segmented image is compared against a manually-segmented one. Concerning boundary-based measures of quality, an average accuracy of 94.8% over a 140 image dataset was achieved. It proves that the proposed method gives suitable results for an ongoing research work for automatic identification and characterization of different endogenous grape varieties of the Portuguese Douro Demarcated Region.
机译:在自然葡萄园图像中,由于在拍摄图像时在自然环境中发生的阴影,灰尘,昆虫和其他不利的气候条件,野蛮的叶子,杂草,多片重叠,遮挡和被物体遮挡的叶子的存在使叶子变成了叶子细分是一项艰巨的任务。在本文中,我们提出了一种基于区域增长的分割算法,该算法使用颜色模型和阈值技术对来自实地环境中捕获的葡萄园彩色图像中属于葡萄叶的像素进行分类。为了评估所提出的藤叶分割算法的准确性,采用了一种监督评估方法,该方法将分割后的图像与手动分割后的图像进行比较。关于基于边界的质量度量,在140个图像数据集上实现了94.8%的平均准确度。证明了所提出的方法为正在进行的葡萄牙杜罗划界地区内生葡萄品种的自动鉴定和表征的研究工作提供了合适的结果。

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