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Identification of Plant Textures in Agricultural Images by Principal Component Analysis

机译:基于主成分分析的农业图像植物纹理识别

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In precision agriculture the extraction of green parts is a very important task. One of the biggest issues, when it comes to computer vision, is image segmentation, which has motivated the research conducted in this work. Our goal is the segmentation of vegetative and soil parts in the images. For this proposal a novel method of segmentation is defined in which different vegetation indices are calculated and through the reduction of components by principal component analysis (PCA) we obtain an enhanced grayscale image. Finally, by Otsu thresholding, we binarize the grayscale image isolating the green parts from the other elements in the image.
机译:在精密农业中,绿色部分的提取是非常重要的任务。当涉及计算机视觉时,最大的问题之一是图像分割,这激发了这项工作的开展。我们的目标是对图像中的植物和土壤部分进行分割。对于该建议,定义了一种新的分割方法,其中计算了不同的植被指数,并且通过主成分分析(PCA)减少了成分,从而获得了增强的灰度图像。最后,通过Otsu阈值化,我们将灰度图像二值化,从而将绿色部分与图像中的其他元素隔离开。

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