SMALE: Hyperspectral Image Classification via Superpixels and Manifold Learning

IF 4.2 2区 地球科学 Q2 ENVIRONMENTAL SCIENCES
Remote Sensing Pub Date : 2024-09-17 DOI:10.3390/rs16183442
Nannan Liao, Jianglei Gong, Wenxing Li, Cheng Li, Chaoyan Zhang, Baolong Guo
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引用次数: 0

Abstract

As an extremely efficient preprocessing tool, superpixels have become more and more popular in various computer vision tasks. Nevertheless, there are still several drawbacks in the application of hyperspectral image (HSl) processing. Firstly, it is difficult to directly apply superpixels because of the high dimension of HSl information. Secondly, existing superpixel algorithms cannot accurately classify the HSl objects due to multi-scale feature categorization. For the processing of high-dimensional problems, we use the principle of PCA to extract three principal components from numerous bands to form three-channel images. In this paper, a novel superpixel algorithm called Seed Extend by Entropy Density (SEED) is proposed to alleviate the seed point redundancy caused by the diversified content of HSl. It also focuses on breaking the dilemma of manually setting the number of superpixels to overcome the difficulty of classification imprecision caused by multi-scale targets. Next, a space–spectrum constraint model, termed Hyperspectral Image Classification via superpixels and manifold learning (SMALE), is designed, which integrates the proposed SEED to generate a dimensionality reduction framework. By making full use of spatial context information in the process of unsupervised dimension reduction, it could effectively improve the performance of HSl classification. Experimental results show that the proposed SEED could effectively promote the classification accuracy of HSI. Meanwhile, the integrated SMALE model outperforms existing algorithms on public datasets in terms of several quantitative metrics.
SMALE:通过超像素和集合学习进行高光谱图像分类
作为一种极其高效的预处理工具,超像素在各种计算机视觉任务中越来越受欢迎。然而,超像素在高光谱图像(HSl)处理中的应用仍存在一些缺陷。首先,由于 HSl 信息的维度较高,很难直接应用超像素。其次,由于多尺度特征分类,现有的超像素算法无法对 HSl 对象进行准确分类。针对高维问题的处理,我们利用 PCA 原理,从众多波段中提取三个主成分,形成三通道图像。本文提出了一种名为 "熵密度种子扩展(Seed Extend by Entropy Density,SEED)"的新型超像素算法,以缓解 HSl 内容多样化造成的种子点冗余问题。该算法还致力于打破手动设置超像素数量的困境,以克服多尺度目标造成的分类不精确难题。接下来,设计了一种空间光谱约束模型,即通过超像素和流形学习进行高光谱图像分类(SMALE),该模型整合了所提出的 SEED,生成了一个降维框架。通过在无监督降维过程中充分利用空间上下文信息,可以有效提高 HSl 分类的性能。实验结果表明,所提出的 SEED 能有效提高人机交互分类的准确性。同时,在公共数据集上,集成的 SMALE 模型在多个定量指标上优于现有算法。
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来源期刊
Remote Sensing
Remote Sensing REMOTE SENSING-
CiteScore
8.30
自引率
24.00%
发文量
5435
审稿时长
20.66 days
期刊介绍: Remote Sensing (ISSN 2072-4292) publishes regular research papers, reviews, letters and communications covering all aspects of the remote sensing process, from instrument design and signal processing to the retrieval of geophysical parameters and their application in geosciences. Our aim is to encourage scientists to publish experimental, theoretical and computational results in as much detail as possible so that results can be easily reproduced. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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