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Main Authors: Dow, Alexander, Manduhu, Manduhu, Santos, Matheus, Bartlett, Ben, Dooly, Gerard, Riordan, James
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.08557
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author Dow, Alexander
Manduhu, Manduhu
Santos, Matheus
Bartlett, Ben
Dooly, Gerard
Riordan, James
author_facet Dow, Alexander
Manduhu, Manduhu
Santos, Matheus
Bartlett, Ben
Dooly, Gerard
Riordan, James
contents This work leverages the continuous sweeping motion of LiDAR scanning to concentrate object detection efforts on specific regions that receive a change in point data from one frame to another. We achieve this by using a sliding time window with short strides and consider the temporal dimension by storing convolution results between passes. This allows us to ignore unchanged regions, significantly reducing the number of convolution operations per forward pass without sacrificing accuracy. This data reuse scheme introduces extreme sparsity to detection data. To exploit this sparsity, we extend our previous work on scatter-based convolutions to allow for data reuse, and as such propose Sparse Scatter-Based Convolution Algorithm with Temporal Data Recycling (SSCATeR). This operation treats incoming LiDAR data as a continuous stream and acts only on the changing parts of the point cloud. By doing so, we achieve the same results with as much as a 6.61-fold reduction in processing time. Our test results show that the feature maps output by our method are identical to those produced by traditional sparse convolution techniques, whilst greatly increasing the computational efficiency of the network.
format Preprint
id arxiv_https___arxiv_org_abs_2512_08557
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SSCATeR: Sparse Scatter-Based Convolution Algorithm with Temporal Data Recycling for Real-Time 3D Object Detection in LiDAR Point Clouds
Dow, Alexander
Manduhu, Manduhu
Santos, Matheus
Bartlett, Ben
Dooly, Gerard
Riordan, James
Computer Vision and Pattern Recognition
This work leverages the continuous sweeping motion of LiDAR scanning to concentrate object detection efforts on specific regions that receive a change in point data from one frame to another. We achieve this by using a sliding time window with short strides and consider the temporal dimension by storing convolution results between passes. This allows us to ignore unchanged regions, significantly reducing the number of convolution operations per forward pass without sacrificing accuracy. This data reuse scheme introduces extreme sparsity to detection data. To exploit this sparsity, we extend our previous work on scatter-based convolutions to allow for data reuse, and as such propose Sparse Scatter-Based Convolution Algorithm with Temporal Data Recycling (SSCATeR). This operation treats incoming LiDAR data as a continuous stream and acts only on the changing parts of the point cloud. By doing so, we achieve the same results with as much as a 6.61-fold reduction in processing time. Our test results show that the feature maps output by our method are identical to those produced by traditional sparse convolution techniques, whilst greatly increasing the computational efficiency of the network.
title SSCATeR: Sparse Scatter-Based Convolution Algorithm with Temporal Data Recycling for Real-Time 3D Object Detection in LiDAR Point Clouds
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.08557