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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Texture and Scale in Object-Based Analysis of Subdecimeter Resolution Unmanned Aerial Vehicle (UAV) Imagery
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Texture and Scale in Object-Based Analysis of Subdecimeter Resolution Unmanned Aerial Vehicle (UAV) Imagery

机译:亚目标分辨率的无人机图像的基于对象的分析中的纹理和比例

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摘要

Imagery acquired with unmanned aerial vehicles (UAVs) has great potential for incorporation into natural resource monitoring protocols due to their ability to be deployed quickly and repeatedly and to fly at low altitudes. While the imagery may have high spatial resolution, the spectral resolution is low when lightweight off-the-shelf digital cameras are used, and the inclusion of texture measures can potentially increase the classification accuracy. Texture measures have been used widely in pixel-based image analysis, but their use in an object-based environment has not been well documented. Our objectives were to determine the most suitable texture measures and the optimal image analysis scale for differentiating rangeland vegetation using UAV imagery segmented at multiple scales. A decision tree was used to determine the optimal texture features for each segmentation scale. Results indicated the following: 1) The error rate of the decision tree was lower; 2) prediction success was higher; 3) class separability was greater; and 4) overall accuracy was higher (high 90% range) at coarser segmentation scales. The inclusion of texture measures increased classification accuracies at nearly all segmentation scales, and entropy was the texture measure with the highest score in most decision trees. The results demonstrate that UAVs are viable platforms for rangeland monitoring and that the drawbacks of low-cost off-the-shelf digital cameras can be overcome by including texture measures and using object-based image analysis which is highly suitable for very high resolution imagery.
机译:由于无人飞行器能够快速,重复地部署并能在低空飞行,因此具有将其纳入自然资源监测协议的巨大潜力。虽然图像可能具有较高的空间分辨率,但是当使用轻型的现成数码相机时,光谱分辨率较低,并且包含纹理量度可以潜在地提高分类精度。纹理度量已广泛用于基于像素的图像分析中,但尚未充分证明它们在基于对象的环境中的使用。我们的目标是使用多尺度分割的无人机图像,确定最合适的纹理量度和最佳的图像分析尺度,以区分草地植被。决策树用于确定每个分割尺度的最佳纹理特征。结果表明:1)决策树的错误率较低; 2)预测成功率较高; 3)类的可分离性更大; 4)在较粗的分割尺度下,整体准确度较高(最高90%范围)。包括纹理度量在内的几乎所有分割尺度上均提高了分类准确性,并且熵是大多数决策树中得分最高的纹理度量。结果表明,无人机是用于牧场监控的可行平台,低成本的现成数码相机的缺点可以通过包括纹理测量和使用基于对象的图像分析来克服,该图像分析非常适合于非常高分辨率的图像。

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