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Medical Image Registration Based on Phase Congruency and Regional Mutual Information 被引量:1
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作者 ZHANG Juan LU Zhen-tai +1 位作者 FENG Qian-jin CHEN Wu-fan 《Chinese Journal of Biomedical Engineering(English Edition)》 2012年第1期29-34,共6页
In this paper, a new approach of muhi-modality image registration is represented with not only image intensity, but also features describing image structure. There are two novelties in the proposed method. Firstly, in... In this paper, a new approach of muhi-modality image registration is represented with not only image intensity, but also features describing image structure. There are two novelties in the proposed method. Firstly, instead of standard mutual information ( MI ) based on joint intensity histogram, regional mutual information ( RMI ) is employed, which allows neighborhood information to be taken into account. Secondly, a new feature images obtained by means of phase congruency are invariants to brightness or contrast changes. By incorporating these features and intensity into RMI, we can combine the aspects of both structural and neighborhood information together, which offers a more robust and a high level of registration accuracy. 展开更多
关键词 biomedical engineering image registration phase congruency regional mutual information RMI
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Fabric Defect Detection Using Independent Component Analysis and Phase Congruency 被引量:7
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作者 LENG Qiujun ZHANG Hu +1 位作者 FAN Cien DENG Dexiang 《Wuhan University Journal of Natural Sciences》 CAS 2014年第4期328-334,共7页
A novel method based on independent component analysis and phase congruency is proposed for detecting defects in textile fabric images. By independent component, we can obtain textile structural features of fabric-fre... A novel method based on independent component analysis and phase congruency is proposed for detecting defects in textile fabric images. By independent component, we can obtain textile structural features of fabric-free images. By phase congru- ency, structure information is reduced, which can distinguish the defect region from the defect-free regions. Finally, we have the detecting result from binary image which is obtained by a thresh- old step, Compared with other algorithms, the proposed method not only has robustness with high detection rate, but also detects various types of defects quite well. 展开更多
关键词 fabric defect detection independent componentanalysis phase congruency morphological filter
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Moving Target Tracking Based on LogGabor Wavelet and Mean-shift Algorithm
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作者 DU Xian-yan HAN Xiao-jun LU Wei-wei 《Semiconductor Photonics and Technology》 CAS 2009年第2期81-85,96,共6页
Tracking moving target from image or video sequence is a hot research topic in computer vision. An algorithm based on LogGabor wavelet and Mean-shift has been proposed for moving target tracking under fixed camera set... Tracking moving target from image or video sequence is a hot research topic in computer vision. An algorithm based on LogGabor wavelet and Mean-shift has been proposed for moving target tracking under fixed camera setting and complicated environment. Phase coherency of LogGabor wavelet facilitates to extract the edge of moving target and check noise. According to the edge detection,the starting location of Mean-shift can be estimated using the target center coordinate. Eventually,a real-time moving target can be extracted by doing iterative matching pursuit,and experimental results proved the effectiveness of the method proposed. 展开更多
关键词 Mean-shift algorithm phase congruency LogGabor wavelet transformation target tracking
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No-Reference Stereo Image Quality Assessment Based on Transfer Learning
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作者 Lixiu Wu Song Wang Qingbing Sang 《Journal of New Media》 2022年第3期125-135,共11页
In order to apply the deep learning to the stereo image quality evaluation,two problems need to be solved:The first one is that we have a bit of training samples,another is how to input the dimensional image’s left v... In order to apply the deep learning to the stereo image quality evaluation,two problems need to be solved:The first one is that we have a bit of training samples,another is how to input the dimensional image’s left view or right view.In this paper,we transfer the 2D image quality evaluation model to the stereo image quality evaluation,and this method solves the first problem;use the method of principal component analysis is used to fuse the left and right views into an input image in order to solve the second problem.At the same time,the input image is preprocessed by phase congruency transformation,which further improves the performance of the algorithm.The structure of the deep convolution neural network consists of four convolution layers and three maximum pooling layers and two fully connected layers.The experimental results on LIVE3D image database show that the prediction quality score of the model is in good agreement with the subjective evaluation value. 展开更多
关键词 NO-REFERENCE stereo image quality assessment convolution neural network transfer learning phase congruency transformation image fusion
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Pulse Coupled Neural Network Edge-Based Algorithm for Image Text Locating 被引量:5
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作者 张昕 孙富春 《Tsinghua Science and Technology》 SCIE EI CAS 2011年第1期22-30,共9页
This paper presents a method for locating text based on a simplified pulse coupled neural network (PCNN). The PCNN generates a firings map in a similar way to the human visual system with non-linear image processing... This paper presents a method for locating text based on a simplified pulse coupled neural network (PCNN). The PCNN generates a firings map in a similar way to the human visual system with non-linear image processing. The PCNN is used to segment the original image into different planes and edges detected using both the PCNN firings map and a phase congruency detector. The different edges are integrated using an automatically adjusted weighting coefficient. Both the simplified PCNN and the phase congruency energy model in the frequency domain imitate the human visual system. This paper shows how to use PCNN by changing the compute space from the spatial domain to the frequency domain for solving the text location problem. The algorithm is a simplified PCNN edge-based (PCNNE) algorithm. Three comparison tests are used to evaluate the algorithm. Tests on large data sets show PCNNE efficiently detects texts with various colors, font sizes, positions, and uneven illumination. This method outperforms several traditional methods both in text detection rate and text detection accuracy. 展开更多
关键词 simplified pulse coupled neural network phase congruency text location
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