基于深度图像的三维模型检索的非对称监督深度自编码器

A. Siddiqua, Guoliang Fan
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引用次数: 4

摘要

在本文中,我们提出了一种新的基于深度图像的非对称监督深度自编码器方法来检索三维形状。采用真实深度图像和合成深度图像对非对称监督自编码器进行训练。本研究的新颖之处在于有监督深度自编码器的非对称结构。提出的非对称深度监督自编码器通过与混合深度图像统一平衡重建和分类能力来解决深度图像中存在的不完全性和模糊性问题。我们研究了编码器层和解码器层之间的关系,并声称监督深度自编码器的非对称结构将过拟合的机会减少了8%,并且能够从输入方差中提取比对称结构更鲁棒的特征。在NYUD2和ModelNet10数据集上的实验结果表明,该方法优于现有的跨模态三维模型检索方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Asymmetric Supervised Deep Autoencoder for Depth Image based 3D Model Retrieval
In this paper, we propose a new asymmetric supervised deep autoencoder approach to retrieve 3D shapes based on depth images. The asymmetric supervised autoencoder is trained with real and synthetic depth images together. The novelty of this research lies in the asymmetric structure of a supervised deep autoencoder. The proposed asymmetric deep supervised autoencoder deals with the incompleteness and ambiguity present in the depth images by balancing reconstruction and classification capabilities in a unified way with mixed depth images. We investigate the relationship between the encoder layers and decoder layers, and claim that an asymmetric structure of a supervised deep autoencoder reduces the chance of overfitting by 8% and is capable of extracting more robust features with respect to the variance of input than that of a symmetric structure. The experimental results on the NYUD2 and ModelNet10 datasets demonstrate that the proposed supervised method outperforms the recent approaches for cross modal 3D model retrieval.
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