摘要
针对空间遥感TM图象和SAR图象信息的特征层融合应用于地物分类,提出了一种结合Markov随机场和BP神经网络模型的多源遥感图象迭代分类方法。该分类方法与现有的基于Markov模型的分类器相比具有无须假设条件概率密度函数模型的优点;与BP神经网络分类器相比,由于其考虑了类别标号的空间相关性,提高了分类精度;有别于传统的上下文分类器:它是通过迭代过程来实现分类的。
An iterative technique of multisource remote sensing image classif ication based on Markov random fields and BP neural networks is presented in accordance with the character fusion classification of space remote sensing TM image and SAR ima ge. Compared with the available classified method based on Markov random fields, its merit shows that it is not necessary to assume the conditional probability function, and it has higher classified accuracy than the methods based on BP neu ral networks for considering the space correlation of class lable. The differenc e between this classificator and the traditional context one is that the former implements classification through an iterative progress in which the character a ttribute of pixel category as well as the space correlation of class lable is co nsidered.
出处
《高技术通讯》
EI
CAS
CSCD
1999年第6期32-37,共6页
Chinese High Technology Letters
基金
国防基金
关键词
多源遥感图象
分类
特征层融合
SAR
TM
Multisource remote sensing image classification,Character fusion,Markov random fields, Gibbs distribution, BP neural networks