Classification of Multispectral Images Based on a Fuzzy-Possibilistic Neural Network
نویسندگان
چکیده
In this paper, a new Hopfield-model net based on fuzzy possibilistic reasoning is proposed for the classification of multispectral images. The main purpose is to modify the Hopfield network embedded with fuzzy possibilistic -means (FPCM) method to construct a classification system named fuzzy-possibilistic Hopfield net (FPHN). The classification system is a paradigm for the implementation of fuzzy logic systems in neural network architecture. Instead of one state in a neuron for the conventional Hopfield nets, each neuron occupies 2 states called membership state and typicality state in the proposed FPHN. The proposed network not only solves the noise sensitivity fault of Fuzzy -means (FCM) but also overcomes the simultaneous clustering problem of possibilistic -means (PCM) strategy. In addition to the same characteristics as the FPCM algorithm, the simple features of this network are clear potential in optimal problem. The experimental results show that the proposed FPHN can obtain better solutions in the classification of multispectral images.
منابع مشابه
Classification of multispectral images through a rough-fuzzy neural network
Shao-Han Liu Jzau-Sheng Lin, MEMBER SPIE National Chin-Yi Institute of Technology Department of Electronic Engineering No. 35, Lane 215, Sec. 1, Chung-Shan Rd Taiping, Taichung, Taiwan E-mail: [email protected] Abstract. A new fuzzy Hopfield-model net based on rough-set reasoning is proposed for the classification of multispectral images. The main purpose is to embed a rough-set learning...
متن کاملStudy on the Trend of Range Cover Changes Using Fuzzy ARTMAP Method and GIS
The major aim of processing satellite images is to prepare topical and effectivemaps. The selection of appropriate classification methods plays an important role. Amongvarious methods existing for image classification, artificial neural network method is ofhigh accuracy. In present study, TM images of 1987, and ETM+ images of 2000 and 2006were analyzed using artificial fuzzy ARTMAP neural netwo...
متن کاملFuzzy Neural Network Models For Multispectral Image Analysis
Fuzzy neural networks (FNNs) provide a new approach for classification of multispectral data and to extract and optimize classification rules. Neural networks deal with issues on a numeric level, whereas fuzzy logic deals with them on a semantic or linguistic level. FNNs synthesize fuzzy logic and neural networks. Recently, there has been growing interest in the research community not only to u...
متن کاملReview of soft classification approaches on satellite Image and accuracy assessment
Image classification is a process that may be affected by many factors. This paper is in regard of the classification techniques used for image processing and analysis using the concept of Fuzzy and Possibilities techniques, applied in each pixel of false-color satellite image By this paper examine classification approaches and the technique used for improving classification accuracy. By the in...
متن کاملLand Cover Classification from SPOT Multispectral And Panchromatic Images Using Neural Network Classification of Fuzzy Clustered Spectral and Textural Features
A technique is described for doing land cover classification using a neural network to integrate and classify SPOT multispectral and derived texture data. Orientated texture energy was derived from the higher spatial resolution SPOT panchromatic band with directional spatial filtering techniques. The multispectral and textural data were each clustered using a reported fuzzy learning vector quan...
متن کامل