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首页> 外文期刊>Scientific reports. >Convolutional Neural Networks enable efficient, accurate and fine-grained segmentation of plant species and communities from high-resolution UAV imagery
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Convolutional Neural Networks enable efficient, accurate and fine-grained segmentation of plant species and communities from high-resolution UAV imagery

机译:卷积神经网络能够高分辨率UAV图像实现植物物种和社区的高效,准确和细粒度的细分

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Recent technological advances in remote sensing sensors and platforms, such as high-resolution satellite imagers or unmanned aerial vehicles (UAV), facilitate the availability of fine-grained earth observation data. Such data reveal vegetation canopies in high spatial detail. Efficient methods are needed to fully harness this unpreceded source of information for vegetation mapping. Deep learning algorithms such as Convolutional Neural Networks (CNN) are currently paving new avenues in the field of image analysis and computer vision. Using multiple datasets, we test a CNN-based segmentation approach (U-net) in combination with training data directly derived from visual interpretation of UAV-based high-resolution RGB imagery for fine-grained mapping of vegetation species and communities. We demonstrate that this approach indeed accurately segments and maps vegetation species and communities (at least 84% accuracy). The fact that we only used RGB imagery suggests that plant identification at very high spatial resolutions is facilitated through spatial patterns rather than spectral information. Accordingly, the presented approach is compatible with low-cost UAV systems that are easy to operate and thus applicable to a wide range of users.
机译:遥感传感器和平台的最近技术进步,如高分辨率卫星成像仪或无人驾驶飞行器(UAV),便于细粒度地球观测数据的可用性。这些数据在高空间细节中揭示了植被檐篷。需要有效的方法来完全利用这一前所未有的植被映射来源。诸如卷积神经网络(CNN)之类的深度学习算法目前正在铺平图像分析和计算机视野领域的新途径。使用多个数据集,我们将基于CNN的分割方法(U-NET)结合使用直接导出的培训数据,从基于UAV的高分辨率RGB图像的视觉解释,用于植被物种和社区的细粒度映射。我们证明这种方法确实准确地段和地图植被物种和社区(至少84%的精度)。我们仅使用RGB Imagery的事实表明,通过空间模式而不是光谱信息,促进了在非常高的空间分辨率下的植物识别。因此,所提出的方法与易于操作的低成本UAV系统兼容,因此适用于广泛的用户。

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