Qin Haonan, Xie Weiying, Li Yunsong, Du Qian
IEEE Trans Neural Netw Learn Syst. 2024 Nov;35(11):16816-16830. doi: 10.1109/TNNLS.2023.3298145. Epub 2024 Oct 29.
As an advanced technique in remote sensing, hyperspectral target detection (HTD) is widely concerned in civilian and military applications. However, the limitation of prior and heterogeneous backgrounds makes HTD models sensitive to data corruption under various interference from the environment. In this article, a novel united HTD framework based on the concept of transformer is proposed to extract [HTD based on transformer via spectral-spatial similarity (HTD-TS3)] under weak supervision, which opens up more flexible ways to study HTD. For the first time, the transformer mechanism is introduced into the HTD task to extract spectral and spatial features in a unified optimization procedure. By modeling long-range dependence among spectra, it realizes spectral-spatial joint inference based on long-range context, which addresses the issues of insufficient utilization of spatial information. To provide samples for weakly supervised learning (WSL), the coarse sample selection and spectral sequence construction in an efficient way are proposed, which makes full use of limited prior information. Finally, an exponential constrained nonlinear function is adopted to acquire pixel-level prediction via combining discriminative spectral-spatial features and coarse spatial information. Experiments on real hyperspectral images (HSIs) captured by different sensors at various scenes verify the effectiveness and efficiency of HTD-TS3.
作为遥感领域的一项先进技术,高光谱目标检测(HTD)在民用和军事应用中受到广泛关注。然而,先验背景和异质背景的局限性使得HTD模型在受到环境各种干扰时对数据损坏敏感。在本文中,提出了一种基于Transformer概念的新型联合HTD框架,以在弱监督下提取基于光谱-空间相似性的Transformer高光谱目标检测(HTD-TS3),这为研究HTD开辟了更灵活的途径。首次将Transformer机制引入HTD任务,在统一的优化过程中提取光谱和空间特征。通过对光谱间的长程依赖性进行建模,基于长程上下文实现光谱-空间联合推理,解决了空间信息利用不足的问题。为了为弱监督学习(WSL)提供样本,提出了一种有效的粗样本选择和光谱序列构建方法,充分利用了有限的先验信息。最后,采用指数约束非线性函数,通过结合判别性光谱-空间特征和粗空间信息来获得像素级预测。在不同场景下由不同传感器捕获的真实高光谱图像(HSIs)上进行的实验验证了HTD-TS3的有效性和效率。