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ROAD NETWORK DETECTION BY GROWING NEURON GAS

机译:不断增长的神经元气体检测道路网络

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The growing neuron gas (GNG) algorithm is an excellent self-organization tool, which efficiently combines the graph and neural network techniques. The gas formation starts with two connected neurons and during the training both the neurons (nodes) and their connections are iteratively added. The most relevant advantage of this technology is that it forms the final graph structure considering the input data points regarding the control parameters, but without the strict requirement of any prior hypothesis of the graph.Although the graph nodes can represent data points of any arbitrary number of dimensions, in this specific application they are taken as two-dimensional ones. The data points derived by simple image processing operations, like thresholding the intensity values and by other similar low-level segmentation techniques. The algorithm is fast and can handle even larger set of data points. The paper gives an overview about the main self-organizing and unsupervised neural network techniques. It's followed by the description of the growing neuron gas algorithm, and then its application in road network detection is presented. The illustration of the proposed method with aerial and satellite imagery also contains accuracy and performance analysis, of course in comparison with other detection methodologies.
机译:不断增长的神经元气体(GNG)算法是一种出色的自组织工具,可以有效地将图形和神经网络技术相结合。气体的形成始于两个相连的神经元,在训练过程中,神经元(节点)及其连接被反复添加。该技术最相关的优点是,它考虑了与控制参数有关的输入数据点,从而形成了最终的图形结构,但对图形的任何先验假设都没有严格的要求。尽管图形节点可以表示任意数量的数据点尺寸,在此特定应用中,它们被视为二维尺寸。通过简单的图像处理操作(如对强度值进行阈值处理)和其他类似的低级分割技术得出的数据点。该算法速度快,可以处理更大的数据点集。本文概述了主要的自组织和无监督神经网络技术。接下来是对神经元气体增长算法的描述,然后介绍了其在路网检测中的应用。当然,与其他检测方法相比,用航空和卫星图像提出的方法的说明还包含准确性和性能分析。

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