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Radiance transformation of multitemporal LANDSAT image for land cover classification

机译:用于土地覆盖分类的多时相LANDSAT图像的辐射度变换

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Abstract: Recently classification of remote sensing images using neural network approach is studied. However multitemporal LANDSAT image data is not used for classification. A problem in classification of remote sensing images is that we cannot get images in fixed wide area such as states of prefectures at one time because the range of sensors of artificial satellite is limited. For example, full area of Fukuoka prefecture is observed two separate images. For multitemporal images, several factors affect the spectrum at different observation dates. In this paper, we concentrate on the sunbeam factor from which we can estimate the intensity. Using the sun elevation angle from the data, we can estimate sunbeam intensity. We transform multitemporal images using radiance transformation which is based on path radiance model. We confirmed that radiance transformation is effective to the classification of multitemporal images from several experiments.!2
机译:摘要:最近研究了使用神经网络方法对遥感图像进行分类。但是,多时间LANDSAT图像数据未用于分类。遥感图像分类中的一个问题是,由于人造卫星传感器的范围有限,我们无法一次获得固定广域的图像,例如州府的图像。例如,福冈县的整个区域被观察到两个单独的图像。对于多时间图像,有几个因素会影响不同观察日期的光谱。在本文中,我们集中于阳光因子,从中可以估算强度。使用数据中的太阳仰角,我们可以估算出阳光的强度。我们使用基于路径辐射模型的辐射变换来变换多时相图像。我们通过几个实验证实了辐射度变换对于多时相图像的分类是有效的!2

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