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Unsupervised Classification of Vineyard Parcels Using SPOT5 Images by Utilizing Spectral and Textural Features

机译:通过利用光谱和纹理特征,使用Spot5图像无监督葡萄园包裹分类

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In order to support agricultural management of vineyards, high spatial resolution remote sensing images (less than 1 meter) enables textural representation of their periodic plantation pattern which helps for delineation. Even though this texture analysis may provide highly accurate delineation of vineyards, it may be infeasible at national scale, due to the computational complexity of texture extraction. In addition, particularly for Turkey, plantation practices for vineyards deviate from common periodic pattern, which can make those textures insufficient. In this study, we used SPOT5 images to explore their capabilities for delineation of vineyard parcels, without any a priori parcel information. As the inter-row distance and the spacing between the individual vine plants are less than the used 2.5m panchromatic, which is generated from 2×5m scenes (nadir) for panchromatic and 10m (nadir) spatial resolutions for multi-spectral bands, currently used periodicity based (Fourier) texture analysis may be vague. Therefore, we used Gabor textures (with different scales and directions) to define texture characteristics at this relatively coarse resolution, and we integrated these textures with image bands (visible, near infrared and shortwave infrared) which hold the ability to spectrally distinguish the vine plants from the remaining crops. For the vineyards parcels recognition, we classified the extracted features by a recent hierarchical clustering method based on self-organizing neural networks. We compared the performance of this proposed method to the object-based image analysis (by eCognition) which depends on multi-scale image segmentation and user-defined decision rules with corresponding thresholds.
机译:为了支持葡萄园的农业管理,高空间分辨率遥感图像(小于1米)使其定期种植园模式的纹理表示有助于描绘。尽管这种纹理分析可以提供高度准确的葡萄园描绘,但由于纹理提取的计算复杂性,它可能在全国范围内不可行。此外,特别是对土耳其,葡萄园的种植园实践偏离了常见的周期性模式,这可以使这些纹理不足。在本研究中,我们使用Spot5图像探索其划定葡萄园包裹的能力,而无需任何先验的包裹信息。随着各个葡萄植物之间的行间距和间距小于使用的2.5米的距离,这是由2×5M场景(Nadir)产生的用于多色谱和10M(Nadir)的多光谱频带的空间分辨率,当前基于周期性的(傅里叶)纹理分析可能模糊。因此,我们使用了Gabor纹理(具有不同的刻度和方向)来定义这种相对粗略的分辨率的纹理特性,并且我们将这些纹理与图像频带(可见,近红外和短波红外线)集成,该纹体具有光谱区分葡萄植物的能力来自剩下的作物。对于葡萄园包裹识别,我们通过基于自组织神经网络的最近分层聚类方法分类提取的特征。我们将该方法的性能与基于对象的图像分析(通过认知)进行了比较,这取决于具有相应阈值的多尺度图像分段和用户定义的决策规则。

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