Non-rigid 3D shape classification based on convolutional neural networks

Jan Franco Llerena Quenaya, C. L. D. Alamo
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Abstract

Over the years, the scientific interest towards 3D models analysis has become more popular. Problems such as classification, retrieval and matching are studied with the idea to offer robust solutions. This paper introduces a 3D object classification method for non-rigid shapes, based on the detection of key points, the use of spectral descriptors and deep learning techniques. We adopt an approach of converting the models into a “spectral image”. By extracting interest points and calculating three types of spectral descriptors (HKS, WKS and GISIF), we generate a three-channel input to a convolutional neural network. This CNN is trained to automatically learn features such as topology of 3D models. The results are evaluated and analyzed using the Non-Rigid Classification Benchmark SHREC 2011. Our proposal shows promising results in classification tasks compared to other methods, and also it is robust under several types of transformations.
基于卷积神经网络的非刚性三维形状分类
多年来,对3D模型分析的科学兴趣越来越受欢迎。研究了分类、检索和匹配等问题,提供了鲁棒性的解决方案。本文介绍了一种基于关键点检测、光谱描述符和深度学习技术的非刚性形状三维物体分类方法。我们采用了一种将模型转换成“光谱图像”的方法。通过提取兴趣点并计算三种类型的光谱描述符(HKS, WKS和GISIF),我们生成了一个卷积神经网络的三通道输入。这个CNN经过训练,可以自动学习3D模型的拓扑等特征。采用非刚性分类基准SHREC 2011对结果进行了评价和分析。与其他方法相比,我们的方法在分类任务中显示出良好的结果,并且在几种类型的转换下具有鲁棒性。
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