SDA-Net:一种基于序列化和双重关注的全局特征点云补全网络。

Weichao Wu, Yongyang Xu, Zhong Xie
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引用次数: 0

摘要

点云补全对于恢复由于遮挡或传感器限制而丢失的3D几何数据至关重要。现有的方法通常依赖于基于k近邻(KNN)的局部特征提取,该方法侧重于中心点周围的邻域,而忽略了关键的全局结构信息。此外,基于transformer的方法虽然对全局上下文建模有效,但通常使用中心点特征序列来降低计算复杂性。这种有窗口的注意力策略损害了全局上下文的保存,导致点云整体结构的不完整建模。为了应对这些挑战,我们提出了SDA-Net,一种利用多种序列化策略的双注意力点云补全网络。这些策略将无序的点云转换为结构化的序列,从而实现点间关系的全面建模。此外,双注意机制通过互补的空间自注意和通道自注意增强了全局特征提取,有效补偿了全局上下文的缺失。大量的实验表明,SDA-Net达到了最先进的性能,包括PCN数据集上的平均倒角距离(CD)为6.48。此外,它在实际应用中表现出色,可以准确地重建激光雷达扫描点云中的细粒度细节。源代码可从https://github.com/Hibiki-Ula/SDA-Net获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SDA-Net: A global feature point cloud completion network based on serialization and dual attention.

Point cloud completion is essential for restoring 3D geometric data lost due to occlusions or sensor limitations. Existing methods often rely on k-nearest neighbor(KNN)-based local feature extraction, which focuses on neighborhoods around central points while neglecting critical global structural information. Additionally, Transformer-based approaches, while effective at modeling global context, typically use central point feature sequences to reduce computational complexity. This windowed attention strategy compromises the preservation of global context, leading to incomplete modeling of the point cloud's overall structure. To address these challenges, we propose SDA-Net, a dual-attention point cloud completion network utilizing multiple serialization strategies. These strategies transform unordered point clouds into structured sequences, enabling comprehensive modeling of inter-point relationships. Additionally, the dual-attention mechanism enhances global feature extraction through complementary spatial and channel-wise self-attention, effectively compensating for the loss of global context. Extensive experiments demonstrate that SDA-Net achieves state-of-the-art performance, including an average Chamfer Distance (CD) of 6.48 on the PCN dataset. Furthermore, it excels in real-world applications, accurately reconstructing fine-grained details in LiDAR-scanned point clouds. The source code is available at https://github.com/Hibiki-Ula/SDA-Net.

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