LASFNet: A Lightweight Attention-Guided Self-Modulation Feature Fusion Network for Multimodal Object Detection
Lei Hao, Lina Xu, Chang Liu, and Yanni Dong

TL;DR
LASFNet is a lightweight, attention-guided feature fusion network for multimodal object detection that simplifies training and significantly reduces computational costs while improving accuracy.
Contribution
The paper introduces LASFNet, a novel lightweight network with an attention-guided self-modulation fusion module, simplifying training and enhancing efficiency in multimodal object detection.
Findings
Reduces parameters and computational cost by up to 90% and 85%.
Improves detection accuracy (mAP) by 1%-3%.
Achieves a favorable efficiency-accuracy trade-off.
Abstract
Effective deep feature extraction via feature-level fusion is crucial for multimodal object detection. However, previous studies often involve complex training processes that integrate modality-specific features by stacking multiple feature-level fusion units, leading to significant computational overhead. To address this issue, we propose a new fusion detection baseline that uses a single feature-level fusion unit to enable high-performance detection, thereby simplifying the training process. Based on this approach, we propose a lightweight attention-guided self-modulation feature fusion network (LASFNet), which introduces a novel attention-guided self-modulation feature fusion (ASFF) module that adaptively adjusts the responses of fusion features at both global and local levels based on attention information from different modalities, thereby promoting comprehensive and enriched…
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Taxonomy
TopicsGeophysical Methods and Applications · Advanced SAR Imaging Techniques · Infrared Target Detection Methodologies
MethodsFocus
