首页 | 本学科首页   官方微博 | 高级检索  
     检索      


Textual and shape-based feature extraction and neuro-fuzzy classifier for nuclear track recognition
Authors:Omid Khayat  Hossein Afarideh
Institution:1. Nuclear Engineering and Physics Department , Amirkabir University of Technology , 424 Hafez Ave, Tehran , 15875-4413 , Iran khayat@aut.ac.ir;3. Nuclear Engineering and Physics Department , Amirkabir University of Technology , 424 Hafez Ave, Tehran , 15875-4413 , Iran
Abstract:Track counting algorithms as one of the fundamental principles of nuclear science have been emphasized in the recent years. Accurate measurement of nuclear tracks on solid-state nuclear track detectors is the aim of track counting systems. Commonly track counting systems comprise a hardware system for the task of imaging and software for analysing the track images. In this paper, a track recognition algorithm based on 12 defined textual and shape-based features and a neuro-fuzzy classifier is proposed. Features are defined so as to discern the tracks from the background and small objects. Then, according to the defined features, tracks are detected using a trained neuro-fuzzy system. Features and the classifier are finally validated via 100 Alpha track images and 40 training samples. It is shown that principle textual and shape-based features concomitantly yield a high rate of track detection compared with the single-feature based methods.
Keywords:feature extraction  texture-based feature  shape-based feature  neuro-fuzzy classifier  nuclear track recognition
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号