高光谱图像目标检测的密集卷积连体网络

Kun Shen, W. Xie, Haojin Tang, Yanshan Li
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引用次数: 0

摘要

与灰度图像和RGB图像相比,高光谱图像可以同时提供地面目标的空间和光谱信息,从而提高目标检测的效率和精度。因此,近年来对HSI目标检测算法的研究受到了广泛关注。随着硬件设备的发展和大数据时代的到来,深度学习算法已成功应用于图像处理、文本识别等领域。然而,由于HSI的采集环境复杂,难以获得大量的标记样本,这限制了深度学习算法在HSI目标检测中的应用。为此,提出了一种用于HSI目标检测的密集卷积Siamese网络(DCSN),提高了小尺度训练样本场景下的目标检测精度。本文的主要贡献包括以下三点。首先,我们设计了一种基于改进自编码器的目标样本生成方法来增强目标训练数据。然后,提出了一种基于密度估计的背景选择方法,可以有效地获取典型背景样本。最后,提出了一种基于密集卷积的光谱特征提取方法,以提取更具判别性的光谱特征。在Muufl Gulfport和San Diego数据集上的HSI目标检测实验结果表明,我们提出的DCSN能够达到比现有目标检测器更好的性能。
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Dense Convolution Siamese Network for Hyperspectral Image Target Detection
Compared with grayscale and RGB images, hyperspectral image (HSI) can provide both spatial and spectral information of ground targets, which makes it possible to improve the efficiency and accuracy of target detection. Therefore, the research of HSI target detection algorithms has attracted widespread concern in recent years. With the development of hardware devices and the arrival of big data era, deep learning algorithms have been successfully applied to image processing, text recognition and other fields. However, due to the complex gathering environment of HSI, it is so difficult to obtain a large number of labeled samples, which limits the application of deep learning algorithms in HSI target detection. Therefore, a dense convolution Siamese network (DCSN) is proposed for HSI target detection, which improves the accuracy in the scenery of small-scale training samples. The main contributions of this paper include the following three points. First, we design a target sample generation method based on improved autoencoder to enhance target training data. Then, a background selection method based on density estimation is presented, which can acquire typical background samples effectively. Finally, a spectral feature extraction method based on dense convolution is proposed to extract the more discriminative spectral features. The experimental results of HSI target detection on Muufl Gulfport and San Diego datasets indicate that our proposed DCSN is able to achieve superior performance than the existing target detectors.
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