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Crop identification using superpixels and supervised classification of multispectral CBERS-4 wide-field imagery

机译:使用超像素的裁剪识别和多光谱CBERS-4宽野图像的监督分类

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Remote sensing has been increasingly used in monitoring and analyzing agricultural activities. Crop identification based on analysis of individual pixel response, without considering neighboring pixels, may lead to poor results. In this paper, we investigate the use of superpixels generated by the Simple Linear Iterative Clustering (SLIC) algorithm to delineate homogeneous regions in images to help crop identification. The proposed classification strategy consists of combining pixel-level classification probabilities, estimated using the pixel spectral response, with pooled probability values of the pixels located inside superpixels. Weighting both probability contributions produce a hybrid classification. We test this idea to map the interim-harvest of corn and cotton in an agricultural area in Mato Grosso State, Brazil, characterized by the presence of large farms. For this, we use a cloud-free multispectral image captured by the wide-field imaging camera onboard the China-Brazil Earth ResourcesSatellite 4 (CBERS-4), that acquires four bands in the visible and near-infrared with a pixel spatial resolution of 64 m/pixel. The two main crops in our study area where identified with an overall accuracy of about 85%. Encouraging results suggest thatthe proposed method may be used as part of a remote sensing-based crop identification system.
机译:遥感越来越多地用于监测和分析农业活动。基于分析单个像素响应的作物识别,而不考虑相邻像素,可能导致结果差。在本文中,我们调查了简单的线性迭代聚类(SLIC)算法生成的超像素来描绘图像中的均匀区域以帮助裁剪识别。所提出的分类策略包括使用像素光谱响应估计的像素级分类概率,其中位于超像素内的像素的汇总概率值。加权概率贡献产生混合分类。我们测试这一想法将玉米和棉的临时收获映射到巴西马托格罗索州马托格罗索州的农业区,其特点是大农场的存在。为此,我们使用由中国 - 巴西地球郊债的宽野成像相机捕获的无云的多光谱图像,该图像在中国 - 巴西地球郊债州4(CBERS-4)上,该磁带在可见和近红外线中获取四个频段,具有像素空间分辨率64米/像素。我们研究领域的两个主要作物,其中鉴定了大约85%的整体准确性。令人鼓舞的结果表明,所提出的方法可以用作遥感的作物识别系统的一部分。

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