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Fingerprint image segmentation using modified fuzzy c-means algorithm 被引量:1
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作者 Jia-Yin Kang Cheng-Long Gong Wen-Juan Zhang 《Journal of Biomedical Science and Engineering》 2009年第8期656-660,共5页
Fingerprint segmentation is a crucial step in fingerprint recognition system, and determines the results of fingerprint analysis and recognition. This paper proposes an efficient approach for fingerprint segmentation ... Fingerprint segmentation is a crucial step in fingerprint recognition system, and determines the results of fingerprint analysis and recognition. This paper proposes an efficient approach for fingerprint segmentation based on modified fuzzy c-means (FCM). The proposed method is realized by modifying the objective function in the Szilagyi’s algorithm via introducing histogram-based weight. Experimental results show that the proposed approach has an efficient performance while segmenting both original fingerprint image and fingerprint images corrupted by different type of noises. 展开更多
关键词 FINGERPRINT SEGMENTATION fuzzy c-means histogram ROBUSTNESS
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三维FMF的HFCM水声数据分割 被引量:1
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作者 宦天枢 叶学义 +1 位作者 王大安 夏经文 《计算机应用研究》 CSCD 北大核心 2017年第10期3005-3009,共5页
针对三维水声数据背景复杂、受噪声干扰严重等特点,提出一种结合三维FMF的HFCM水声数据分割算法,以提高水声数据分割的精度和效率。该算法首先选取三维滤波窗口,利用最大熵阈值法计算出模糊阈值;再结合半高斯模糊隶属度函数对水声数据... 针对三维水声数据背景复杂、受噪声干扰严重等特点,提出一种结合三维FMF的HFCM水声数据分割算法,以提高水声数据分割的精度和效率。该算法首先选取三维滤波窗口,利用最大熵阈值法计算出模糊阈值;再结合半高斯模糊隶属度函数对水声数据进行模糊中值滤波;最后采用HFCM算法对滤波后的数据进行分割。对两组不同的三维水声数据进行分割处理的结果表明,该算法能够有效地降低噪声干扰,分割效果要优于未滤波的HFCM以及均衡FMF的HFCM分割算法,并且在分割效率上要明显优于传统的模糊C-均值算法。 展开更多
关键词 模糊中值滤波(FMF) 直方图模糊C-均值(hfcm) 数据分割 最大熵阈值法 半高斯模糊隶属度函数
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A fast and effective fuzzy clustering algorithm for color image segmentation 被引量:4
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作者 王改华 李德华 《Journal of Beijing Institute of Technology》 EI CAS 2012年第4期518-525,共8页
A fast and effective fuzzy clustering algorithm is proposed. The algorithm splits an image into n × n blocks, and uses block variance to judge whether the block region is homogeneous. Mean and center pixel of eac... A fast and effective fuzzy clustering algorithm is proposed. The algorithm splits an image into n × n blocks, and uses block variance to judge whether the block region is homogeneous. Mean and center pixel of each homogeneous block are extracted for feature. Each inhomogeneous block is split into separate pixels and the mean of neighboring pixels within a window around each pixel and pixel value are extracted for feature. Then cluster of homogeneous blocks and cluster of separate pixels from inhomogeneous blocks are carried out respectively according to different membership functions. In fuzzy clustering stage, the center pixel and center number of the initial clustering are calculated based on histogram by using mean feature. Then different membership functions according to comparative result of block variance are computed. Finally, modified fuzzy c-means with spatial information to complete image segmentation axe used. Experimental results show that the proposed method can achieve better segmental results and has shorter executive time than many well-known methods. 展开更多
关键词 CLUSTER image segmentation fuzzy c-means histogram
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An Efficient Deep Learning-based Content-based Image Retrieval Framework 被引量:1
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作者 M.Sivakumar N.M.Saravana Kumar N.Karthikeyan 《Computer Systems Science & Engineering》 SCIE EI 2022年第11期683-700,共18页
The use of massive image databases has increased drastically over the few years due to evolution of multimedia technology.Image retrieval has become one of the vital tools in image processing applications.Content-Base... The use of massive image databases has increased drastically over the few years due to evolution of multimedia technology.Image retrieval has become one of the vital tools in image processing applications.Content-Based Image Retrieval(CBIR)has been widely used in varied applications.But,the results produced by the usage of a single image feature are not satisfactory.So,multiple image features are used very often for attaining better results.But,fast and effective searching for relevant images from a database becomes a challenging task.In the previous existing system,the CBIR has used the combined feature extraction technique using color auto-correlogram,Rotation-Invariant Uniform Local Binary Patterns(RULBP)and local energy.However,the existing system does not provide significant results in terms of recall and precision.Also,the computational complexity is higher for the existing CBIR systems.In order to handle the above mentioned issues,the Gray Level Co-occurrence Matrix(GLCM)with Deep Learning based Enhanced Convolution Neural Network(DLECNN)is proposed in this work.The proposed system framework includes noise reduction using histogram equalization,feature extraction using GLCM,similarity matching computation using Hierarchal and Fuzzy c-Means(HFCM)algorithm and the image retrieval using DLECNN algorithm.The histogram equalization has been used for computing the image enhancement.This enhanced image has a uniform histogram.Then,the GLCM method has been used to extract the features such as shape,texture,colour,annotations and keywords.The HFCM similarity measure is used for computing the query image vector's similarity index with every database images.For enhancing the performance of this image retrieval approach,the DLECNN algorithm is proposed to retrieve more accurate features of the image.The proposed GLCM+DLECNN algorithm provides better results associated with high accuracy,precision,recall,f-measure and lesser complexity.From the experimental results,it is clearly observed that the proposed system provides efficient image retrieval for the given query image. 展开更多
关键词 Content based image retrieval(CBIR) improved gray level cooccurrence matrix(GLCM) hierarchal and fuzzy c-means(hfcm)algorithm deep learning based enhanced convolution neural network(DLECNN)
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