نتایج جستجو برای: نگاشت شناختی فازی fcm

تعداد نتایج: 50406  

2014
Bryant Aaron Dan E. Tamir Naphtali D. Rishe Abraham Kandel

Researchers have observed that multistage clustering can accelerate convergence and improve clustering quality. Two-stage and two-phase fuzzy C-means (FCM) algorithms have been reported. In this paper, we demonstrate that the FCM clustering algorithm can be improved by the use of static and dynamic single-pass incremental FCM procedures. Keywords-Clustering; Fuzzy C-Means Clustering; Incrementa...

2011
Tina Geweniger Marika Kaden Thomas Villmann

In machine learning the Fuzzy c-Means algorithm (FCM) plays an important role. This prototype based unsupervised clustering method has been extensively studied and applied to a great variety of problems from different research areas like medicine and biology. Commonly the Euclidean distance is used as dissimilarity measure, although any dissimilarity measure would be suited. Recently divergence...

مدیریت جامع حوزه آبخیز و تعمیم اطلاعات به حوضه‌های فاقد آمار، نیازمند درک حوضه‌های همگن می‌باشد. شباهت هیدرولوژیکی حوضه‌ها از رفتار هیدرواقلیمی و فیزیکی حوضه‌ها منتج می‌شود. در این تحقیق، برای تشخیص زیرحوضه‎های همگن هیدرولوژیکی، از شاخص‎های هیدرواقلیمی و فیزیکی استفاده شد. تحلیل عاملی برای کاهش ابعاد متغیرها به‌طور جداگانه برای شاخص‌های اقلیمی، هیدرولوژیکی و فیزیکی انجام شد و سرانجام با استفاده...

2002
Meletis Margaritis Chrysostomos Stylios Peter Groumpos

Fuzzy Cognitive Map (FCM) is a soft computing modelling methodology for complex systems. Beyond the mathematical formulation of the FCM theory, there was a need of developing a software tool to facilitate the implementation of FCMs. This paper describes the use of a software tool that was developed to construct FCM models. Some theoretical elements of Fuzzy Cognitive Maps are presented. Then, i...

2015
Che-Lun Hung Yuan-Huai Wu Yaw-Ling Lin Yu-Chen Hu Jieh-Shan Yeh Chia-Chen Lin

In the computer aided medical image process, image segmentation is always required as a preprocess stage. Fuzzy c-means (FCM) clustering algorithm has been commonly used in many medical image segmentations, particularly in the analysis of magnetic resonance (MR) brain image. However, all of these FCM methods are computation consuming that is difficult to be used in real time application. In the...

2006
Anil Kumar S. K. Ghosh V. K. Dadhwal

It is found that sub-pixel classifiers for classification of multi-spectral remote sensing data yield a higher accuracy. With this objective, a study has been carried out, where fuzzy set theory based sub-pixel classifiers have been compared with statistical based sub-pixel classifier for classification of multi-spectral remote sensing data.Although, a number of Fuzzy set theory based classifie...

Journal: :Physiological and biochemical zoology : PBZ 2009
Curtis O Bosson Rupert Palme Rudy Boonstra

Stress responses play a critical role in the ecology and demography of wild animals, and the analysis of fecal hormone metabolites is a powerful noninvasive method to assess the role of stress. We characterized the metabolites of injected radiolabeled cortisol in the urine and feces of Columbian ground squirrels and validated an enzyme immunoassay for measuring fecal cortisol metabolites (FCM) ...

2002
J. C. Noordam

This paper describes a technique to overcome the sensitivity of fuzzy C-means clustering for unequal cluster sizes in multivariate images. As FCM tends to balance the number of points in each cluster, cluster centres of smaller clusters are drawn to larger adjacent clusters. In order to overcome this, a modified version of FCM, called Conditional FCM, is used to balance the different sized clus...

2011
Hamed Shamsi Hadi Seyedarabi

FCM is one of a conventional clustering method and has been generally applied for medical image segmentation. On the other hand, conventional FCM at all times suffers from noise in the images. Even though the unique FCM algorithm yields good results for segmenting noise free images, it fails to segment images corrupted by noise, outliers and other imaging artifact. The most important shortcomin...

2012
Kun Shan

The weighting exponent m is called the fuzzifier that can have influence on the clustering performance of fuzzy c-means (FCM) and m∈ [1.5,2.5] is suggested by Pal and Bezdek [13]. In this paper, we will discuss the robust properties of FCM and show that the parameter m will have influence on the robustness of FCM. According to our analysis, we find that a large m value will make FCM more robust...

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