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Three-dimensional surface reconstruction using meshing growing neural gas (MGNG)

机译:使用网格化生长的神经气体(MGNG)进行三维表面重建

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摘要

The neural network method, a relatively new method in reverse engineering (RE), has the potential to reconstruct 3D models accurately and fast. A neural network (NN) is a set of interconnected neurons, in which each neuron is capable of making autonomous arithmetic and geometric calculations. Moreover, each neuron is affected by its surrounding neurons through the structure of the network. This work proposes a new approach that utilizes growing neural gas neural network (GNG NN) techniques to reconstruct a triangular manifold mesh. This method has the advantage of reconstructing the surface of an n-genus freeform object without a priori knowledge regarding the original object, its topology or its shape. The resulting mesh can be improved by extending the MGNG into an adaptive algorithm. The proposed method was also extended for micro-structure modeling. The feasibility of the proposed method is demonstrated on several examples of freeform objects with complex topologies.
机译:神经网络方法是逆向工程(RE)中的一种相对较新的方法,具有准确,快速地重建3D模型的潜力。神经网络(NN)是一组相互连接的神经元,其中每个神经元都能够进行自主的算术和几何计算。此外,每个神经元都通过网络结构受到周围神经元的影响。这项工作提出了一种新方法,该方法利用了增长的神经气体神经网络(GNG NN)技术来重建三角流形网格。该方法的优点是无需事先了解原始对象,其拓扑结构或形状,即可重建n属自由形式对象的表面。通过将MGNG扩展为自适应算法,可以改善所得的网格。提出的方法也扩展到微观结构建模。在具有复杂拓扑的自由形式对象的几个示例中证明了该方法的可行性。

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