Single-View 3D Object Reconstruction from Shape Priors in Memory

Shuo Yang, Min Xu, Haozhe Xie, Stuart W. Perry, Jiahao Xia
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引用次数: 10

Abstract

Existing methods for single-view 3D object reconstruction directly learn to transform image features into 3D representations. However, these methods are vulnerable to images containing noisy backgrounds and heavy occlusions because the extracted image features do not contain enough information to reconstruct high-quality 3D shapes. Humans routinely use incomplete or noisy visual cues from an image to retrieve similar 3D shapes from their memory and reconstruct the 3D shape of an object. Inspired by this, we propose a novel method, named Mem3D, that explicitly constructs shape priors to supplement the missing information in the image. Specifically, the shape priors are in the forms of "image-voxel" pairs in the memory network, which is stored by a well-designed writing strategy during training. We also propose a voxel triplet loss function that helps to retrieve the precise 3D shapes that are highly related to the input image from shape priors. The LSTM-based shape encoder is introduced to extract information from the retrieved 3D shapes, which are useful in recovering the 3D shape of an object that is heavily occluded or in complex environments. Experimental results demonstrate that Mem3D significantly improves reconstruction quality and performs favorably against state-of-the-art methods on the ShapeNet and Pix3D datasets.
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记忆中形状先验的单视图3D对象重建
现有的单视图三维物体重建方法直接学习将图像特征转换为三维表示。然而,这些方法容易受到含有噪声背景和严重遮挡的图像的影响,因为提取的图像特征不包含足够的信息来重建高质量的3D形状。人类通常使用图像中不完整或嘈杂的视觉线索从记忆中检索相似的3D形状,并重建物体的3D形状。受此启发,我们提出了一种名为Mem3D的新方法,该方法明确地构建形状先验来补充图像中缺失的信息。具体而言,形状先验在记忆网络中以“图像-体素”对的形式存在,并在训练过程中通过精心设计的书写策略进行存储。我们还提出了一个体素三重损失函数,该函数有助于从形状先验中检索与输入图像高度相关的精确3D形状。引入基于lstm的形状编码器,从检索到的三维形状中提取信息,可用于在严重遮挡或复杂环境中恢复物体的三维形状。实验结果表明,Mem3D显著提高了重建质量,在ShapeNet和Pix3D数据集上表现优于最先进的方法。
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