Weikang Yang , Xinghao Lu , Binjie Chen , Chenlu Lin , Xueye Bao , Weiquan Liu , Yu Zang , Junyu Xu , Cheng Wang
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This means the spatial relationships can be extracted and integrated with other features during aggregation. Based on this concept, we propose a lightweight point network called DeLA (Decoupled Local Aggregation). DeLA separates the traditional neighborhood aggregation process into distinct spatial encoding and local aggregation operations, reducing the computational complexity by a factor of K, where K is the number of neighbors in the K-Nearest Neighbor algorithm (K-NN). Experimental results on five classic benchmarks show that DeLA achieves state-of-the-art performance with reduced or equivalent latency. Specifically, DeLA exceeds 90% overall accuracy on ScanObjectNN and 74% mIoU on S3DIS Area 5. Additionally, DeLA achieves state-of-the-art results on ScanNetV2 with only 20% of the parameters of equivalent models. 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引用次数: 0
摘要
随着数据采集技术的进步,近期遥感点云数据集的数量大幅增加,这给点云深度学习,尤其是邻域聚合操作带来了巨大挑战。与简单的池化不同,邻域聚合将点与点之间的空间关系纳入特征聚合过程,需要反复学习关系,造成大量计算冗余。数据量的指数级增长加剧了这一问题。为了解决这个问题,我们从理论上证明,如果在点特征中编码了基本空间信息,那么简单的汇集操作就能有效地聚合特征。这意味着在聚合过程中,可以提取空间关系并与其他特征进行整合。基于这一概念,我们提出了一种名为 DeLA(解耦局部聚合)的轻量级点网络。DeLA 将传统的邻域聚合过程分离为不同的空间编码和局部聚合操作,将计算复杂度降低了 K 倍,其中 K 是 K-NN 算法(K-Nearest Neighbor algorithm)中的邻域数。在五个经典基准上的实验结果表明,DeLA 在降低或等同延迟的情况下实现了最先进的性能。具体来说,DeLA 在 ScanObjectNN 上的总体准确率超过 90%,在 S3DIS Area 5 上的 mIoU 超过 74%。此外,DeLA 在 ScanNetV2 上取得了最先进的结果,其参数仅为同等模型的 20%。我们的代码见 https://github.com/Matrix-ASC/DeLA。
DeLA: An extremely faster network with decoupled local aggregation for large scale point cloud learning
With advances in data collection technology, the volume of recent remote sensing point cloud datasets has grown significantly, posing substantial challenges for point cloud deep learning, particularly in neighborhood aggregation operations. Unlike simple pooling, neighborhood aggregation incorporates spatial relationships between points into the feature aggregation process, requiring repeated relationship learning and resulting in substantial computational redundancy. The exponential increase in data volume exacerbates this issue. To address this, we theoretically demonstrate that if basic spatial information is encoded in point features, simple pooling operations can effectively aggregate features. This means the spatial relationships can be extracted and integrated with other features during aggregation. Based on this concept, we propose a lightweight point network called DeLA (Decoupled Local Aggregation). DeLA separates the traditional neighborhood aggregation process into distinct spatial encoding and local aggregation operations, reducing the computational complexity by a factor of K, where K is the number of neighbors in the K-Nearest Neighbor algorithm (K-NN). Experimental results on five classic benchmarks show that DeLA achieves state-of-the-art performance with reduced or equivalent latency. Specifically, DeLA exceeds 90% overall accuracy on ScanObjectNN and 74% mIoU on S3DIS Area 5. Additionally, DeLA achieves state-of-the-art results on ScanNetV2 with only 20% of the parameters of equivalent models. Our code is available at https://github.com/Matrix-ASC/DeLA.
期刊介绍:
The International Journal of Applied Earth Observation and Geoinformation publishes original papers that utilize earth observation data for natural resource and environmental inventory and management. These data primarily originate from remote sensing platforms, including satellites and aircraft, supplemented by surface and subsurface measurements. Addressing natural resources such as forests, agricultural land, soils, and water, as well as environmental concerns like biodiversity, land degradation, and hazards, the journal explores conceptual and data-driven approaches. It covers geoinformation themes like capturing, databasing, visualization, interpretation, data quality, and spatial uncertainty.