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CLASSIFICATION OF SATELLITE SENSED DATA USING GENETICALLY OPTIMIZED AUTO-ASSOCIATIVE CELLULAR NEURAL NETWORKS

机译:卫星感应数据的分类使用遗传优化的自耦性蜂窝神经网络

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This paper presents the use of Cellular Neural Networks (CNNs) in modeling and classification of land cover/use features based on images acquired through remote sensing methods. Due to their strong local interconnections and simplicity, CNNs are well suited to spatio-temporal applications and have since inception captured the attention of researchers in this field. This paper evaluates the use of associative memories to extract and store features of images acquired via satelite sensing. It is proposed that using Genetic Algorithms (GAs), associative memories more capable of extracting details of a land feature can be achieved in the CNN model. This method relies on a better selection of the training set and the initial filtering process to remove noise on the images. CNN-based diffusion is applied to achieve an average grey-scale level for all images. Using GAs and training samples, a CNN autoassociative template is automatically designed to store features for each class. The templates were applied to the image representing the study area to extract the features belonging to the class they represent. It is concluded that a 3 × 3 CNN template has enough memory to store features of a class. It was found that the pixels on the boundaries between classes are unclassifiable.
机译:本文介绍了蜂窝神经网络(CNNS)在基于通过遥感方法获取的图像的地覆盖/使用特征的建模和分类中的使用。由于其强大的本地互连和简单性,CNNS非常适合于时空应用,并且自成立以来捕获了该领域的研究人员的注意。本文评估了使用关联存储器提取和存储通过卫星感测获取的图像的特征。提出使用遗传算法(气体),在CNN模型中可以实现更能提取土地特征的细节的关联存储器。该方法依赖于更好地选择训练集和初始过滤过程以消除图像上的噪声。基于CNN的扩散被应用于实现所有图像的平均灰度水平。使用GAS和培训样本,CNN自动随机性模板自动设计用于存储每个类的功能。模板应用于代表研究区域的图像,以提取属于它们所代表的类的特征。结论是,3×3 CNN模板具有足够的内存来存储类的功能。发现类上边界上的像素是不可划分的。

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