CVDec 4, 2025

A dynamic memory assignment strategy for dilation-based ICP algorithm on embedded GPUs

arXiv:2512.04996v1h-index: 5Has Code
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This enables deployment of high-performance point cloud registration in resource-constrained embedded systems, representing an incremental optimization.

The paper tackles the high memory consumption of the VANICP point cloud registration algorithm on embedded GPUs by proposing a dynamic memory assignment strategy, achieving over 97% reduction in memory usage while maintaining original performance.

This paper proposes a memory-efficient optimization strategy for the high-performance point cloud registration algorithm VANICP, enabling lightweight execution on embedded GPUs with constrained hardware resources. VANICP is a recently published acceleration framework that significantly improves the computational efficiency of point-cloud-based applications. By transforming the global nearest neighbor search into a localized process through a dilation-based information propagation mechanism, VANICP greatly reduces the computational complexity of the NNS. However, its original implementation demands a considerable amount of memory, which restricts its deployment in resource-constrained environments such as embedded systems. To address this issue, we propose a GPU-oriented dynamic memory assignment strategy that optimizes the memory usage of the dilation operation. Furthermore, based on this strategy, we construct an enhanced version of the VANICP framework that achieves over 97% reduction in memory consumption while preserving the original performance. Source code is published on: https://github.com/changqiong/VANICP4Em.git.

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