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Main Authors: Zhang, Qianqian, Wang, WeiJun, Liu, Yunxing, Zhou, Li, Zhao, Hao, An, Junshe, Wang, Zihan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.14043
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author Zhang, Qianqian
Wang, WeiJun
Liu, Yunxing
Zhou, Li
Zhao, Hao
An, Junshe
Wang, Zihan
author_facet Zhang, Qianqian
Wang, WeiJun
Liu, Yunxing
Zhou, Li
Zhao, Hao
An, Junshe
Wang, Zihan
contents Target detection in high-resolution remote sensing imagery faces challenges due to the low recognition accuracy of small targets and high computational costs. The computational complexity of the Transformer architecture increases quadratically with image resolution, while Convolutional Neural Networks (CNN) architectures are forced to stack deeper convolutional layers to expand their receptive fields, leading to an explosive growth in computational demands. To address these computational constraints, we leverage Mamba's linear complexity for efficiency. However, Mamba's performance declines for small targets, primarily because small targets occupy a limited area in the image and have limited semantic information. Accurate identification of these small targets necessitates not only Mamba's global attention capabilities but also the precise capture of fine local details. To this end, we enhance Mamba by developing the Enhanced Small Target Detection (ESTD) module and the Convolutional Attention Residual Gate (CARG) module. The ESTD module bolsters local attention to capture fine-grained details, while the CARG module, built upon Mamba, emphasizes spatial and channel-wise information, collectively improving the model's ability to capture distinctive representations of small targets. Additionally, to highlight the semantic representation of small targets, we design a Mask Enhanced Pixel-level Fusion (MEPF) module for multispectral fusion, which enhances target features by effectively fusing visible and infrared multimodal information.
format Preprint
id arxiv_https___arxiv_org_abs_2505_14043
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Selective Structured State Space for Multispectral-fused Small Target Detection
Zhang, Qianqian
Wang, WeiJun
Liu, Yunxing
Zhou, Li
Zhao, Hao
An, Junshe
Wang, Zihan
Computer Vision and Pattern Recognition
Target detection in high-resolution remote sensing imagery faces challenges due to the low recognition accuracy of small targets and high computational costs. The computational complexity of the Transformer architecture increases quadratically with image resolution, while Convolutional Neural Networks (CNN) architectures are forced to stack deeper convolutional layers to expand their receptive fields, leading to an explosive growth in computational demands. To address these computational constraints, we leverage Mamba's linear complexity for efficiency. However, Mamba's performance declines for small targets, primarily because small targets occupy a limited area in the image and have limited semantic information. Accurate identification of these small targets necessitates not only Mamba's global attention capabilities but also the precise capture of fine local details. To this end, we enhance Mamba by developing the Enhanced Small Target Detection (ESTD) module and the Convolutional Attention Residual Gate (CARG) module. The ESTD module bolsters local attention to capture fine-grained details, while the CARG module, built upon Mamba, emphasizes spatial and channel-wise information, collectively improving the model's ability to capture distinctive representations of small targets. Additionally, to highlight the semantic representation of small targets, we design a Mask Enhanced Pixel-level Fusion (MEPF) module for multispectral fusion, which enhances target features by effectively fusing visible and infrared multimodal information.
title Selective Structured State Space for Multispectral-fused Small Target Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.14043