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Main Authors: Yang, Bo, Zhang, Xinyu, Zhang, Jian, Luo, Jun, Zhou, Mingliang, Pi, Yangjun
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2307.14723
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author Yang, Bo
Zhang, Xinyu
Zhang, Jian
Luo, Jun
Zhou, Mingliang
Pi, Yangjun
author_facet Yang, Bo
Zhang, Xinyu
Zhang, Jian
Luo, Jun
Zhou, Mingliang
Pi, Yangjun
contents Single-frame infrared small target detection is considered to be a challenging task, due to the extreme imbalance between target and background, bounding box regression is extremely sensitive to infrared small target, and target information is easy to lose in the high-level semantic layer. In this article, we propose an enhancing feature learning network (EFLNet) to address these problems. First, we notice that there is an extremely imbalance between the target and the background in the infrared image, which makes the model pay more attention to the background features rather than target features. To address this problem, we propose a new adaptive threshold focal loss (ATFL) function that decouples the target and the background, and utilizes the adaptive mechanism to adjust the loss weight to force the model to allocate more attention to target features. Second, we introduce the normalized Gaussian Wasserstein distance (NWD) to alleviate the difficulty of convergence caused by the extreme sensitivity of the bounding box regression to infrared small target. Finally, we incorporate a dynamic head mechanism into the network to enable adaptive learning of the relative importance of each semantic layer. Experimental results demonstrate our method can achieve better performance in the detection performance of infrared small target compared to the state-of-the-art (SOTA) deep-learning-based methods. The source codes and bounding box annotated datasets are available at https://github.com/YangBo0411/infrared-small-target.
format Preprint
id arxiv_https___arxiv_org_abs_2307_14723
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publishDate 2023
record_format arxiv
spellingShingle EFLNet: Enhancing Feature Learning for Infrared Small Target Detection
Yang, Bo
Zhang, Xinyu
Zhang, Jian
Luo, Jun
Zhou, Mingliang
Pi, Yangjun
Computer Vision and Pattern Recognition
Single-frame infrared small target detection is considered to be a challenging task, due to the extreme imbalance between target and background, bounding box regression is extremely sensitive to infrared small target, and target information is easy to lose in the high-level semantic layer. In this article, we propose an enhancing feature learning network (EFLNet) to address these problems. First, we notice that there is an extremely imbalance between the target and the background in the infrared image, which makes the model pay more attention to the background features rather than target features. To address this problem, we propose a new adaptive threshold focal loss (ATFL) function that decouples the target and the background, and utilizes the adaptive mechanism to adjust the loss weight to force the model to allocate more attention to target features. Second, we introduce the normalized Gaussian Wasserstein distance (NWD) to alleviate the difficulty of convergence caused by the extreme sensitivity of the bounding box regression to infrared small target. Finally, we incorporate a dynamic head mechanism into the network to enable adaptive learning of the relative importance of each semantic layer. Experimental results demonstrate our method can achieve better performance in the detection performance of infrared small target compared to the state-of-the-art (SOTA) deep-learning-based methods. The source codes and bounding box annotated datasets are available at https://github.com/YangBo0411/infrared-small-target.
title EFLNet: Enhancing Feature Learning for Infrared Small Target Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2307.14723