首页> 外文期刊>Journal of Agricultural Engineering >IMPROVING PER-PIXEL CLASSIFICATION OF CROP-SHELTER COVERAGE BY TEXTURE ANALYSES OF HIGH-RESOLUTION SATELLITE PANCHROMATIC IMAGES
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IMPROVING PER-PIXEL CLASSIFICATION OF CROP-SHELTER COVERAGE BY TEXTURE ANALYSES OF HIGH-RESOLUTION SATELLITE PANCHROMATIC IMAGES

机译:通过高分辨率卫星全色图像的纹理分析改进按作物覆盖的像素分类

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Actual research challenges in automated recognition of crop shelters regard, among other issues, the accuracy of classification, contour detection and typology identification. In this field the use of high-resolution multispectral images has been found to improve the feature recognition in comparison to RGB images or low resolution multispectral ones. As for classification methodologies, per-pixel and object-oriented ones offer different tools to cope with image recognition and feature extraction. In this study, to improve the classification of cropshelter coverage, the per-pixel method was applied to high-resolution multispectral images, coupled with a texture analysis of high-resolution panchromatic images. In detail, the results of the classification accuracy assessment achieved by the use of native high-resolution panchromatic images and RGB-band images resampled accordingly, were compared with those found in a previous study in which panchromatic images degraded to the RGB-band image resolution were used. The results show that the proposed methodology is suitable to improve crop-shelter classification quality and contour detection of parcels.
机译:在自动识别农作物庇护所方面的实际研究挑战包括分类,轮廓检测和类型识别的准确性等问题。在该领域中,已经发现与RGB图像或低分辨率多光谱图像相比,高分辨率多光谱图像的使用改善了特征识别。至于分类方法,每像素和面向对象的方法提供了不同的工具来应对图像识别和特征提取。在这项研究中,为了改善农作物覆盖区的分类,将每像素方法应用于高分辨率多光谱图像,并结合了高分辨率全色图像的纹理分析。详细地,将通过使用原始高分辨率全色图像和相应重新采样的RGB波段图像实现的分类精度评估结果与先前研究中发现的结果比较,在先前的研究中,全色图像降级为RGB波段图像分辨率被使用。结果表明,所提出的方法适合于提高农作物的分类质量和地块轮廓检测。

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