2021
DOI: 10.1109/access.2021.3074405
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Spectral-Spatial Active Learning With Structure Density for Hyperspectral Classification

Abstract: In this paper, a spectral-spatial active learning (AL) method is proposed based on an upto-date unlabeled samples sampling strategy concentrated on the structure density supported by breaking ties. The proposed sampling criterion in AL is used for hyperspectral image classification, which involves several steps: First, superpixel segmentation algorithm is conducted on the HSI to cluster pixels with similar spectral-spatial signature into the same superpixel block. Then, density peak clustering technique is per… Show more

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Cited by 4 publications
(3 citation statements)
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“…Imaging wavelength range 0.4-2.5µm, spectral resolution of 10µm, spatial resolution of 20m, is in the continuous 220 band continuous imaging of the ground, but the use of 20 cannot be water reflection of the band, leaving 200 bands as the object of study. There are 16 types of features in the dataset, and the samples are unevenly distributed, and the sample distribution is shown by Table The Pavia University dataset (abbreviation: PU) was acquired by the Airborne Optical Spectral Imager (ROSIS) in 2003 at the University of Pavel, Italy, in the wavelength range 0.43-0.86 µm [19]. was used for hyperspectral image classification.…”
Section: A Experimental Data Setmentioning
confidence: 99%
“…Imaging wavelength range 0.4-2.5µm, spectral resolution of 10µm, spatial resolution of 20m, is in the continuous 220 band continuous imaging of the ground, but the use of 20 cannot be water reflection of the band, leaving 200 bands as the object of study. There are 16 types of features in the dataset, and the samples are unevenly distributed, and the sample distribution is shown by Table The Pavia University dataset (abbreviation: PU) was acquired by the Airborne Optical Spectral Imager (ROSIS) in 2003 at the University of Pavel, Italy, in the wavelength range 0.43-0.86 µm [19]. was used for hyperspectral image classification.…”
Section: A Experimental Data Setmentioning
confidence: 99%
“…Duan et al modeled hyperspectral image as a linear combination of structural profile and texture information, in which the structural profile was used as the spatial features [15]. After that, many improved approaches have been also studied for classification of HSIs, such as ensemble learning [16,17], semisupervised learning [18,19], and active learning [20,21]. For instance, in [17], a random feature ensemble method was proposed by using ICA and edge-preserving filtering to boost the classification accuracy of HSIs.…”
Section: Introductionmentioning
confidence: 99%
“…From the perspective of processing and feature extraction of multispectral images, decomposition methods have proven to be effective, as they enable the detailing of potential hidden features 26 . In particular, approaches utilizing processing in the spectral domain 27 and methods based on the use of subpixel data 28 for multispectral images can be distinguished. Feature formation technology based on threshold approaches works well for multichannel images 29 , making it possible to apply it to multispectral images.…”
mentioning
confidence: 99%