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Efficient Semantic Scene Completion Network with Spatial Group Convolution

机译:具有空间群卷积的高效语义场景完成网络

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We introduce Spatial Group Convolution (SGC) for accelerating the computation of 3D dense prediction tasks. SGC is orthogonal to group convolution, which works on spatial dimensions rather than feature channel dimension. It divides input voxels into different groups, then conducts 3D sparse convolution on these separated groups. As only valid voxels are considered when performing convolution, computation can be significantly reduced with a slight loss of accuracy. The proposed operations are validated on semantic scene completion task, which aims to predict a complete 3D volume with semantic labels from a single depth image. With SGC, we further present an efficient 3D sparse convolutional network, which harnesses a multiscale architecture and a coarse-to-fine prediction strategy. Evaluations are conducted on the SUNCG dataset, achieving state-of-the-art performance and fast speed.
机译:我们引入空间组卷积(SGC)来加速3D密集预测任务的计算。 SGC与组卷积正交,后者在空间维度而不是特征通道维度上起作用。它将输入体素划分为不同的组,然后对这些分离的组进行3D稀疏卷积。由于在进行卷积时仅考虑有效的体素,因此可以显着减少计算量,但会略有降低精度。所提出的操作在语义场景完成任务上得到了验证,该任务旨在从单个深度图像中使用语义标签来预测完整的3D体积。借助SGC,我们进一步提出了一种有效的3D稀疏卷积网络,该网络利用了多尺度体系结构和从粗到精的预测策略。对SUNCG数据集进行了评估,以实现最先进的性能和更快的速度。

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