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An intelligent approach towards automatic shape modelling and object extraction from satellite images using cellular automata-based algorithms

机译:使用基于细胞自动机的算法进行卫星图像自动形状建模和对象提取的智能方法

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摘要

Automatic feature extraction has witnessed the use of many intelligent methodologies over the past decade. However, inadequate modelling of feature shape and contextual knowledge has limited the detection accuracy. In this article, we present a framework for accurate feature shape modelling and contextual knowledge representation using advanced techniques such as Vector Machines, Cellular Neural Network (CNN), coreset, and Cellular Automata (CA). CNN was found to be effective in modelling different complex features, and the complexity of the approach was considerably reduced using corset optimization. Spectral and spatial information was dynamically combined using adaptive kernels when representing contextual knowledge. The methodologies were compared with contemporary methods using different statistical measures. Application of the algorithms to satellite images revealed considerable success. The methodology was also effective in providing intelligent interpolation and interpretation of random features.
机译:在过去十年中,自动特征提取见证了许多智能方法的使用。但是,特征形状和上下文知识的建模不足限制了检测精度。在本文中,我们提供了使用高级技术(例如向量机,细胞神经网络(CNN),核心集和细胞自动机(CA))进行准确的特征形状建模和上下文知识表示的框架。 CNN被发现可以有效地建模不同的复杂特征,并且通过紧身胸衣优化大大降低了该方法的复杂性。表示上下文知识时,使用自适应内核动态组合了光谱和空间信息。使用不同的统计方法将这些方法与当代方法进行了比较。该算法在卫星图像上的应用显示出相当大的成功。该方法在提供智能内插和随机特征解释方面也很有效。

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