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基于自适应邻域拉普拉斯矩阵的图卷积网络在高光谱图像中的应用及其在水稻种子图像分类中的应用。

Graph Convolutional Network Using Adaptive Neighborhood Laplacian Matrix for Hyperspectral Images with Application to Rice Seed Image Classification.

机构信息

University of Puerto Rico at Mayaguez, Mayagüez, PR 00681, USA.

University of Nebraska-Lincoln, Lincoln, NE 68583, USA.

出版信息

Sensors (Basel). 2023 Mar 27;23(7):3515. doi: 10.3390/s23073515.

Abstract

Graph convolutional neural network architectures combine feature extraction and convolutional layers for hyperspectral image classification. An adaptive neighborhood aggregation method based on statistical variance integrating the spatial information along with the spectral signature of the pixels is proposed for improving graph convolutional network classification of hyperspectral images. The spatial-spectral information is integrated into the adjacency matrix and processed by a single-layer graph convolutional network. The algorithm employs an adaptive neighborhood selection criteria conditioned by the class it belongs to. Compared to fixed window-based feature extraction, this method proves effective in capturing the spectral and spatial features with variable pixel neighborhood sizes. The experimental results from the Indian Pines, Houston University, and Botswana Hyperion hyperspectral image datasets show that the proposed AN-GCN can significantly improve classification accuracy. For example, the overall accuracy for Houston University data increases from 81.71% (MiniGCN) to 97.88% (AN-GCN). Furthermore, the AN-GCN can classify hyperspectral images of rice seeds exposed to high day and night temperatures, proving its efficacy in discriminating the seeds under increased ambient temperature treatments.

摘要

图卷积神经网络架构将特征提取和卷积层结合起来,用于高光谱图像分类。本文提出了一种基于统计方差的自适应邻域聚合方法,该方法将空间信息与像素的光谱特征相结合,用于提高高光谱图像的图卷积网络分类。空间-光谱信息被集成到邻接矩阵中,并通过单层图卷积网络进行处理。该算法采用了一种自适应邻域选择标准,条件是它所属的类别。与基于固定窗口的特征提取相比,这种方法在捕获具有可变像素邻域大小的光谱和空间特征方面更有效。来自印度松树、休斯顿大学和博茨瓦纳 Hyperion 高光谱图像数据集的实验结果表明,所提出的 AN-GCN 可以显著提高分类精度。例如,休斯顿大学数据的总体精度从 81.71%(MiniGCN)提高到 97.88%(AN-GCN)。此外,AN-GCN 可以对暴露在高温昼夜环境下的水稻种子进行高光谱图像分类,证明其在区分高温环境处理下的种子方面是有效的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f36/10099153/8f3b109eeb3a/sensors-23-03515-g001.jpg

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