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An Improved Deep Multiple-input and Single-output PointNet for 3D Model Retrieval

机译:用于3D模型检索的改进的深度多输入和单输出PointNet

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PointNet extracts global shape features from the unordered point sets directly, respecting the permutation invariance of the input points; however, it fails to capture the fine-grained local shape features. In this paper, we extend PointNet to a multi-input and single-output structure by additionally feeding the scale-invariant heat kernel signature into PointNet to capture the fine-grained local shape features. To diversify the training data, we resample the points of each model randomly and generate a set of sub-samples, based on which PointNet calculates their classification scores. Then we adopt a plurality voting strategy to fuse the sub-sample level feature vectors to a model level descriptor, according to their classification scores. The experimental results demonstrate our proposed method outperforms the state-of-the-art retrieval methods on two 3D model benchmarks.
机译:PointNet直接从无序点组提取全局形状特征,尊重输入点的置换不变性;但是,它无法捕获细粒度的局部形状特征。在本文中,我们通过另外将Scale-Invariant热内核签名递送到PointNet中以捕获细粒度的本地形状特征,将注意事项扩展到多输入和单输出结构。为了多样化培训数据,我们随机重新采样每个模型的点并基于哪些小册子计算其分类分数。然后,我们采用多种投票策略来使子样本级别向量熔化到模型级别描述符,根据其分类分数。实验结果表明我们所提出的方法优于两个3D模型基准测试的最先进的检索方法。

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