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融合MF-DWPSO-BP神经网络的遥感影像作物分类方法

胡夏 胡永森 段文胜 李雨润

农业与技术2026,Vol.46Issue(1):6-10,5.
农业与技术2026,Vol.46Issue(1):6-10,5.DOI:10.19754/j.nyyjs.20260130002

融合MF-DWPSO-BP神经网络的遥感影像作物分类方法

Crop Classification from Remote Sensing Images Using an MF-DWPSO-BP Neural Network

胡夏 1胡永森 2段文胜 2李雨润2

作者信息

  • 1. 河南科技学院植物保护与环境学院,新乡 453003
  • 2. 中国科学院空天信息创新研究院遥感科学国家重点实验室,北京 100101
  • 折叠

摘要

Abstract

To address the issues of single-feature reliance,susceptibility to local optima,slow convergence,and weak generalization in traditional remote sensing image-based crop classification,this study proposes a Back Propagation(BP)neural network method integrated with Multi-dimensional Features(MF)and a Dynamic Weight Particle Swarm Optimization(DWPSO)algorithm.A"spectral-texture"feature system was constructed by extracting spectral features,such as the Normalized Difference Vegetation Index(NDVI)and Enhanced Vegetation Index(EVI)of crops,and combining them with texturefeatures,includingenergyand entropy,derived from the Gray-Level Co-occurrence Matrix(GLCM).The dynamic weight particle swarm optimization algorithm was designed to optimize the parameters of the BP neural network.Crop classification was then performed using the optimized BP neural network,followed by a post-processing step involving small patch removal to enhance practical utility.Experiments were conducted using Landsat-8(30m)and Sentinel-2(10m)agricultural images,with comparisons made against traditional BP and fixed-weight PSO-BP algorithms.The results demonstrated that the MF-DWPSO-BP method achieved an overall accuracy(OA)of 93.0% and a Kappa coefficient of 0.91 on Landsat-8 imagery,which were 6.8 and 8 percentage points higher,respectively,than those of the fixed-weight PSO-BP algorithm.On Sentinel-2 imagery,it achieved an OA of 92.0% and a Kappa coefficient of 0.90.Moreover,the proposed method achieved convergence with 50% fewer iterations compared to the traditional BP network.This method can improve the classification accuracy for spectrally similar crops and provides support for agricultural monitoring.

关键词

遥感影像/作物分类/BP神经网络/粒子群优化/动态权值/多维度特征融合

Key words

remote sensing imagery/crop classification/BP neural network/particle swarm optimization/dynamic weight/multi-dimensional feature fusion

分类

农业科技

引用本文复制引用

胡夏,胡永森,段文胜,李雨润..融合MF-DWPSO-BP神经网络的遥感影像作物分类方法[J].农业与技术,2026,46(1):6-10,5.

基金项目

自然资源部部省合作项目(项目编号:2024ZRBSHZ098) (项目编号:2024ZRBSHZ098)

农业与技术

1671-962X

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