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SCMF-Net: Sparse Self-Attention Driven Cross-Modal Fusion for Robust Detection in Complex Road Scenes

Yunze He, Yousheng Hao, Mengying Qian, Baoyuan Deng, Lilian Zhang, Liang Cheng, Yaonan Wang

2026IEEE Sensors Journal7 citationsDOI

Abstract

This paper introduces SCMF-Net (Sparse Cross-Modal Fusion Network), a lightweight multimodal perception framework designed to enhance representation quality and inference efficiency while minimizing computational overhead. To address the sparsity and irregular distribution of LiDAR point clouds, an intensity-aware depth encoding strategy is proposed to enhance the structural cues in the depth modality. Additionally, a dual-branch backbone is employed to further strengthen feature extraction. Building upon this, FFLSA (Feature Fusion Local Self-Attention) is introduced to enable efficient cross-modal fusion. FFLSA leverages Self-Attention Clustering (SAC) to identify salient cross-modal regions, and Self-Attention Fusion and Purification (SAFP) to refine feature aggregation and reduce redundancy, forming an effective region-selection–refined fusion mechanism. Additionally, a Cross-Modal Feature Fusion Module (FFM) is proposed, which jointly models spatial and channel attention to enable adaptive RGB-depth interaction with fine-grained weighting. Extensive experiments on the KITTI dataset and a custom RGB–LiDAR benchmark under challenging conditions (fog, low light, and overexposed) validate the effectiveness of the proposed approach. SCMF-Net achieves 79.3% mAP on our dataset and 88.3% on KITTI, surpassing current state-of-the-art detection methods.

Topics & Concepts

Computer scienceBenchmark (surveying)Artificial intelligenceFusionFeature (linguistics)Cluster analysisEncoding (memory)Sensor fusionInferenceRepresentation (politics)Pattern recognition (psychology)SalientComputer visionImage fusionFeature extractionLidarPoint (geometry)Object detectionFeature learningChannel (broadcasting)EncoderRobustness (evolution)Feature detection (computer vision)Point cloudData miningQuality (philosophy)Property (philosophy)Sparse approximationFeature vectorAdvanced Neural Network ApplicationsAutonomous Vehicle Technology and SafetyGenerative Adversarial Networks and Image Synthesis
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