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首页> 外文期刊>Remote Sensing >Texture Retrieval from VHR Optical Remote Sensed Images Using the Local Extrema Descriptor with Application to Vineyard Parcel Detection
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Texture Retrieval from VHR Optical Remote Sensed Images Using the Local Extrema Descriptor with Application to Vineyard Parcel Detection

机译:使用局部极值描述符从VHR光学遥感图像中检索纹理并将其应用于葡萄园包裹检测

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In this article, we develop a novel method for the detection of vineyard parcels in agricultural landscapes based on very high resolution (VHR) optical remote sensing images. Our objective is to perform texture-based image retrieval and supervised classification algorithms. To do that, the local textural and structural features inside each image are taken into account to measure its similarity to other images. In fact, VHR images usually involve a variety of local textures and structures that may verify a weak stationarity hypothesis. Hence, an approach only based on characteristic points, not on all pixels of the image, is supposed to be relevant. This work proposes to construct the local extrema-based descriptor (LED) by using the local maximum and local minimum pixels extracted from the image. The LED descriptor is formed based on the radiometric, geometric and gradient features from these local extrema. We first exploit the proposed LED descriptor for the retrieval task to evaluate its performance on texture discrimination. Then, it is embedded into a supervised classification framework to detect vine parcels using VHR satellite images. Experiments performed on VHR panchromatic PLEIADES image data prove the effectiveness of the proposed strategy. Compared to state-of-the-art methods, an enhancement of about 7% in retrieval rate is achieved. For the detection task, about 90% of vineyards are correctly detected.
机译:在本文中,我们基于高分辨率(VHR)光学遥感图像,开发了一种用于在农业景观中检测葡萄园地块的新方法。我们的目标是执行基于纹理的图像检索和监督分类算法。为此,要考虑每个图像内部的局部纹理和结构特征,以衡量其与其他图像的相似性。实际上,VHR图像通常涉及各种局部纹理和结构,可以验证弱平稳性假设。因此,仅基于特征点而不基于图像的所有像素的方法被认为是相关的。这项工作提出通过使用从图像中提取的局部最大和局部最小像素来构造基于局部极值的描述符(LED)。基于来自这些局部极值的辐射,几何和梯度特征来形成LED描述符。我们首先利用提出的LED描述符进行检索任务,以评估其在纹理识别方面的性能。然后,将其嵌入到监督分类框架中,以使用VHR卫星图像检测葡萄地块。对VHR全色PLEIADES图像数据进行的实验证明了所提出策略的有效性。与最先进的方法相比,检索率提高了约7%。对于检测任务,正确检测出约90%的葡萄园。

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