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Detection of tomatoes using spectral-spatial methods in remotely sensed RGB images captured by UAV

机译:使用光谱空间方法在无人机捕获的RGB遥感图像中检测番茄

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The spectral-spatial classification of high spatial resolution RGB images obtained from unmanned aerial vehicles (UAVs) for detection of tomatoes in the image is presented. Bayesian information criterion (BIC) was used to determine the optimal number of clusters for the image. Spectral clustering was carried out using K-means, expectation maximisation (EM) and self-organising map (SOM) algorithms to categorise the pixels into two groups i.e. tomatoes and non-tomatoes. Due to resemblance in spectral intensities, some of the non-tomato pixels were grouped into the tomato group and in order to remove them, spatial segmentation was performed on the image. Spatial segmentation was carried out using morphological operations and by setting thresholds for geometrical properties. The number of pixels grouped in the tomato cluster is different for each clustering method. EM doesn't pick up the land patches as tomato pixels. As a result, the size of the tomatoes picked up is different than K-means and SOM. Since threshold values chosen for carrying out spatial segmentation are shape and size dependent, different threshold values are applied to different methods of clustering. A synthetic image of 12 x 12 pixels with different labels is created to illustrate the effect of each method used for spatial segmentation on the clustered image. Two representative UAV images captured at different heights from the ground were used to demonstrate the performance of the proposed method. Results and comparison of performance parameters of different spectral-spatial classification methods were presented. It is observed that EM performed better than K-means and SOM. (C) 2015 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:提出了从无人飞行器(UAV)获得的高空间分辨率RGB图像的光谱空间分类,用于检测图像中的西红柿。贝叶斯信息准则(BIC)用于确定图像的最佳聚类数。使用K均值,期望最大化(EM)和自组织图(SOM)算法进行光谱聚类,以将像素分为两组,即西红柿和非西红柿。由于光谱强度相似,一些非番茄像素被分组为番茄组,并且为了去除它们,对图像进行了空间分割。使用形态学运算和通过设置几何属性的阈值进行空间分割。对于每种聚类方法,番茄聚类中分组的像素数是不同的。 EM不会拾取土地斑块作为番茄像素。结果,番茄的大小不同于K-均值和SOM。由于选择用于执行空间分割的阈值取决于形状和大小,因此将不同的阈值应用于不同的聚类方法。创建具有不同标签的12 x 12像素的合成图像,以说明用于空间分割的每种方法对聚类图像的影响。在距地面不同高度处捕获的两个代表性无人机图像用于证明所提出方法的性能。给出了不同光谱空间分类方法的结果和性能参数的比较。可以看出,EM的表现优于K-means和SOM。 (C)2015年。由Elsevier Ltd.出版。保留所有权利。

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