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Pix2Vox++: Multi-scale Context-aware 3D Object Reconstruction from Single and Multiple Images

机译:PIX2VOX ++:单尺度上下文感知3D对象重建单个和多个图像

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Recovering the 3D shape of an object from single or multiple images with deep neural networks has been attracting increasing attention in the past few years. Mainstream works (e.g. 3D-R2N2) use recurrent neural networks (RNNs) to sequentially fuse feature maps of input images. However, RNN-based approaches are unable to produce consistent reconstruction results when given the same input images with different orders. Moreover, RNNs may forget important features from early input images due to long-term memory loss. To address these issues, we propose a novel framework for single-view and multi-view 3D object reconstruction, named Pix2Vox++. By using a well-designed encoder-decoder, it generates a coarse 3D volume from each input image. A multi-scale context-aware fusion module is then introduced to adaptively select high-quality reconstructions for different parts from all coarse 3D volumes to obtain a fused 3D volume. To further correct the wrongly recovered parts in the fused 3D volume, a refiner is adopted to generate the final output. Experimental results on the ShapeNet, Pix3D, and Things3D benchmarks show that Pix2Vox++ performs favorably against state-of-the-art methods in terms of both accuracy and efficiency.
机译:从单个或多个图像中恢复对象的3D形状,在具有深度神经网络中一直吸引了过去几年的越来越关注。主流工作(例如3D-R2N2)使用经常性神经网络(RNN)来顺序熔断输入图像的特征映射。然而,当给出具有不同订单的相同输入图像时,基于RNN的方法无法产生一致的重建结果。此外,由于长期内存损耗,RNN可以忘记早期输入图像的重要特征。要解决这些问题,我们提出了一个名为Pix2vox ++的单视图和多视图3D对象重建的新颖框架。通过使用精心设计的编码器解码器,它产生来自每个输入图像的粗略3D体积。然后引入多尺度上下文感知融合模块以自适应地为来自所有粗略3D卷的不同部分选择高质量的重建以获得融合的3D体积。为了进一步纠正熔化的3D音量中的错误恢复的部件,采用炼油器来生成最终输出。 ShapEnet​​,PIX3D和Things3D基准测试的实验结果表明,PIX2VOX ++在精度和效率方面对最先进的方法进行了有利的方法。

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