Exploring an application-oriented land-based hyperspectral target detection framework based on 3D–2D CNN and transfer learning

IF 1.9 4区 工程技术 Q2 Engineering EURASIP Journal on Advances in Signal Processing Pub Date : 2024-03-14 DOI:10.1186/s13634-024-01136-0
Jiale Zhao, Guanglong Wang, Bing Zhou, Jiaju Ying, Jie Liu
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Abstract

Target detection based on hyperspectral images refers to the integrated use of spatial information and spectral information to accomplish the task of localization and identification of targets. There are two main methods for hyperspectral target detection: supervised and unsupervised methods. Supervision method refers to the use of spectral differences between the target to be tested and the surrounding background to identify the target when the target spectrum is known. In ideal situations, supervised object detection algorithms perform better than unsupervised algorithms. However, the current supervised object detection algorithms mainly have two problems: firstly, the impact of uncertainty in the ground object spectrum, and secondly, the universality of the algorithm is poor. A hyperspectral target detection framework based on 3D–2D CNN and transfer learning was proposed to solve the problems of traditional supervised methods. This method first extracts multi-scale spectral information and then preprocesses hyperspectral images using multiple spectral similarity measures. This method not only extracts spectral features in advance, but also eliminates the influence of complex environments to a certain extent. The preprocessed feature maps are used as input for 3D–2D CNN to deeply learn the features of the target, and then, the softmax method is used to output and obtain the detection results. The framework draws on the ideas of integrated learning and transfer learning, solves the spectral uncertainty problem with the combined similarity measure and depth feature extraction network, and solves the problem of poor robustness of traditional algorithms by model migration and parameter sharing. The area under the ROC curve of the proposed method has been increased to over 0.99 in experiments on both publicly available remote sensing hyperspectral images and measured land-based hyperspectral images. The availability and stability of the proposed method have been demonstrated through experiments. A feasible approach has been provided for the development and application of specific target detection technology in hyperspectral images under different backgrounds in the future.

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探索基于 3D-2D CNN 和迁移学习的面向应用的陆基高光谱目标检测框架
基于高光谱图像的目标检测是指综合利用空间信息和光谱信息来完成目标定位和识别任务。高光谱目标检测主要有两种方法:监督法和非监督法。监督法是指在已知目标光谱的情况下,利用待测目标与周围背景之间的光谱差异来识别目标。在理想情况下,有监督目标检测算法比无监督算法性能更好。然而,目前的有监督目标检测算法主要存在两个问题:一是地面目标光谱不确定性的影响,二是算法的普适性较差。为了解决传统有监督方法存在的问题,提出了一种基于 3D-2D CNN 和迁移学习的高光谱目标检测框架。该方法首先提取多尺度光谱信息,然后使用多种光谱相似性度量对高光谱图像进行预处理。这种方法不仅能提前提取光谱特征,还能在一定程度上消除复杂环境的影响。预处理后的特征图作为 3D-2D CNN 的输入,深度学习目标特征,然后采用 softmax 方法输出并获得检测结果。该框架借鉴了集成学习和迁移学习的思想,通过组合相似度量和深度特征提取网络解决了频谱不确定性问题,并通过模型迁移和参数共享解决了传统算法鲁棒性差的问题。在对公开的遥感高光谱图像和测量的陆基高光谱图像的实验中,所提方法的 ROC 曲线下面积都提高到了 0.99 以上。实验证明了拟议方法的可用性和稳定性。为今后在不同背景下的高光谱图像中开发和应用特定目标检测技术提供了可行的方法。
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来源期刊
EURASIP Journal on Advances in Signal Processing
EURASIP Journal on Advances in Signal Processing 工程技术-工程:电子与电气
CiteScore
3.50
自引率
10.50%
发文量
109
审稿时长
2.6 months
期刊介绍: The aim of the EURASIP Journal on Advances in Signal Processing is to highlight the theoretical and practical aspects of signal processing in new and emerging technologies. The journal is directed as much at the practicing engineer as at the academic researcher. Authors of articles with novel contributions to the theory and/or practice of signal processing are welcome to submit their articles for consideration.
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