CVApr 18, 2025

KAN or MLP? Point Cloud Shows the Way Forward

arXiv:2504.13593v44 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses the problem of poor parameter efficiency and geometric feature learning in point cloud analysis for 3D vision researchers, representing an incremental improvement over existing methods.

The paper tackles the problem of inefficient feature learning in point cloud analysis with MLPs by proposing PointKAN, which applies Kolmogorov-Arnold Networks (KANs) to improve geometric feature capture. Experimental results show PointKAN outperforms PointMLP on benchmarks like ModelNet40 and ScanObjectNN while reducing parameters and computational complexity.

Multi-Layer Perceptrons (MLPs) have become one of the fundamental architectural component in point cloud analysis due to its effective feature learning mechanism. However, when processing complex geometric structures in point clouds, MLPs' fixed activation functions struggle to efficiently capture local geometric features, while suffering from poor parameter efficiency and high model redundancy. In this paper, we propose PointKAN, which applies Kolmogorov-Arnold Networks (KANs) to point cloud analysis tasks to investigate their efficacy in hierarchical feature representation. First, we introduce a Geometric Affine Module (GAM) to transform local features, improving the model's robustness to geometric variations. Next, in the Local Feature Processing (LFP), a parallel structure extracts both group-level features and global context, providing a rich representation of both fine details and overall structure. Finally, these features are combined and processed in the Global Feature Processing (GFP). By repeating these operations, the receptive field gradually expands, enabling the model to capture complete geometric information of the point cloud. To overcome the high parameter counts and computational inefficiency of standard KANs, we develop Efficient-KANs in the PointKAN-elite variant, which significantly reduces parameters while maintaining accuracy. Experimental results demonstrate that PointKAN outperforms PointMLP on benchmark datasets such as ModelNet40, ScanObjectNN, and ShapeNetPart, with particularly strong performance in Few-shot Learning task. Additionally, PointKAN achieves substantial reductions in parameter counts and computational complexity (FLOPs). This work highlights the potential of KANs-based architectures in 3D vision and opens new avenues for research in point cloud understanding.

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