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Heat Diffusion Long-Short Term Memory Learning for 3D Shape Analysis

机译:用于3D形分析的热扩散长期记忆学习

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The heat kernel is a fundamental solution in mathematical physics to distribution measurement of heat energy within a fixed region over time, and due to its unique property of being invariant to isometric transformations, the heat kernel has been an effective feature descriptor for spectral shape analysis. The majority of prior heat kernel-based strategies of building 3D shape representations fail to investigate the temporal dynamics of heat flows on 3D shape surfaces over time. In this work, we address the temporal dynamics of heat flows on 3D shapes using the long-short term memory (LSTM). We guide 3D shape descriptors toward discriminative representations by feeding heat distributions throughout time as inputs to units of heat diffusion LSTM (HD-LSTM) blocks with a supervised learning structure. We further extend HD-LSTM to a cross-domain structure (CDHD-LSTM) for learning domain-invariant representations of multi-view data. We evaluate the effectiveness of both HD-LSTM and CDHD-LSTM on 3D shape retrieval and sketch-based 3D shape retrieval tasks respectively. Experimental results on McGill dataset and SHREC 2014 dataset suggest that both methods can achieve state-of-the-art performance.
机译:热核是数学物理中的基本解决方案,以随着时间的推移在固定区域内的热能分布测量,并且由于其独特的性质,因此具有对等距变换不变的独特性,但热内核是用于光谱形状分析的有效特征描述符。大多数先前的建筑物3D形状表示的策略未能随着时间的推移探讨3D形状表面上的热流量的时间动态。在这项工作中,我们使用长短期内存(LSTM)来解决3D形状上的热流量的时间动态。通过将热量分布作为输入到具有监督学习结构的热扩散LSTM(HD-LSTM)块单元的输入,通过馈送热量分布来引导3D形状描述函数以通过馈送热量分布。我们进一步将HD-LSTM扩展到跨域结构(CDHD-LSTM),用于学习多视图数据的域不变表示。我们分别评估HD-LSTM和CDHD-LSTM对3D形状检索和素描3D形状检索任务的有效性。 McGill DataSet和SHREC 2014 DataSet上的实验结果表明,两种方法都可以实现最先进的性能。

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