AccSS3D: Accelerator for Spatially Sparse 3D DNNs
Om Ji Omer, Prashant Laddha, Gurpreet S Kalsi, Anirud Thyagharajan,, Kamlesh R Pillai, Abhimanyu Kulkarni, Anbang Yao, Yurong Chen, Sreenivas, Subramoney

TL;DR
AccSS3D is a specialized accelerator that significantly improves the speed and energy efficiency of 3D scene understanding by leveraging spatial sparsity in 3D DNNs, enabling real-time applications.
Contribution
It introduces a novel end-to-end system combining algorithms, dataflow optimization, and hardware design specifically for spatially sparse 3D DNNs, which was not previously addressed.
Findings
16.8x speedup over CPU for 3D sparse convolution
2232x energy efficiency improvement over CPU
11.8x end-to-end semantic segmentation speedup
Abstract
Semantic understanding and completion of real world scenes is a foundational primitive of 3D Visual perception widely used in high-level applications such as robotics, medical imaging, autonomous driving and navigation. Due to the curse of dimensionality, compute and memory requirements for 3D scene understanding grow in cubic complexity with voxel resolution, posing a huge impediment to realizing real-time energy efficient deployments. The inherent spatial sparsity present in the 3D world due to free space is fundamentally different from the channel-wise sparsity that has been extensively studied. We present ACCELERATOR FOR SPATIALLY SPARSE 3D DNNs (AccSS3D), the first end-to-end solution for accelerating 3D scene understanding by exploiting the ample spatial sparsity. As an algorithm-dataflow-architecture co-designed system specialized for spatially-sparse 3D scene understanding,…
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Taxonomy
Topics3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques · Advanced Vision and Imaging
