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用于红外小目标检测的计算流体动力学网络

Computational Fluid Dynamic Network for Infrared Small Target Detection.

作者信息

Zhang Mingjin, Yue Ke, Guo Jie, Zhang Qiming, Zhang Jing, Gao Xinbo

出版信息

IEEE Trans Neural Netw Learn Syst. 2025 Aug;36(8):14777-14789. doi: 10.1109/TNNLS.2025.3548984.

Abstract

Infrared small target detection (IRSTD) aims to identify and locate small targets amidst background noise. It is highly valuable in various practical application domains, such as maritime rescue and early warning systems deployed in challenging conditions such as harsh weather, low illumination, and long imaging distances. Different from existing works that either adopt well-designed backbone networks or devise specific modules to improve them from different aspects, in this article, we formulate the learning process of IRSTD from a novel perspective, i.e., the mechanism of pixel movement. Considering that the movement of pixels passing through the layers of the network for IRSTD can be analogized to the flow of particles in a fluid dynamic system, we propose a computational fluid dynamic network (CFD-Net) derived from computational fluid dynamics. Technically, we leverage the superiority of the unilateral difference equation with third-order accuracy and devise a unilateral differential residual structure as the backbone of CFD-Net. This design ensures that the pixel stream only flows in the forward direction. In addition, a switch-controlled multidirectional treatment tank (SMTT) is introduced to CFD-Net to dynamically guide the pixel stream to the appropriate path for different targets with varying shapes and orientations, facilitating learning robust target representation and improving detection performance. The proposed CFD-Net is evaluated on the IRSTD-1k and SIRST datasets and is found to outperform existing state-of-the-art (SOTA) methods.

摘要

红外小目标检测(IRSTD)旨在在背景噪声中识别和定位小目标。它在各种实际应用领域中具有很高的价值,例如在恶劣天气、低光照和长成像距离等具有挑战性的条件下部署的海上救援和预警系统。与现有工作不同,现有工作要么采用精心设计的骨干网络,要么设计特定模块从不同方面对其进行改进,在本文中,我们从一个新颖的角度,即像素运动机制,来阐述IRSTD的学习过程。考虑到通过IRSTD网络层的像素运动可以类比为流体动力学系统中粒子的流动,我们提出了一种源自计算流体动力学的计算流体动力学网络(CFD-Net)。从技术上讲,我们利用具有三阶精度的单边差分方程的优势,设计了一种单边微分残差结构作为CFD-Net的骨干。这种设计确保像素流仅向前流动。此外,在CFD-Net中引入了一个开关控制的多向处理池(SMTT),以动态地将像素流引导到针对不同形状和方向的不同目标的适当路径,便于学习鲁棒的目标表示并提高检测性能。所提出的CFD-Net在IRSTD-1k和SIRST数据集上进行了评估,结果发现其性能优于现有的最先进(SOTA)方法。

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