期刊文献+
共找到11篇文章
< 1 >
每页显示 20 50 100
Evolutionary Computation Based Optimization of Image Zernike Moments Shape Feature Vector 被引量:1
1
作者 LIU Maofu HU Hujun +2 位作者 ZHONG Ming HE Yanxiang HE Fazhi 《Wuhan University Journal of Natural Sciences》 CAS 2008年第2期153-158,共6页
The image shape feature can be described by the image Zernike moments. In this paper, we points out the problem that the high dimension image Zernike moments shape feature vector can describe more detail of the origin... The image shape feature can be described by the image Zernike moments. In this paper, we points out the problem that the high dimension image Zernike moments shape feature vector can describe more detail of the original image but has too many elements making trouble for the next image analysis phases. Then the low dimension image Zernike moments shape feature vector should be improved and optimized to describe more detail of the original image. So the optimization algorithm based on evolutionary computation is designed and implemented in this paper to solve this problem. The experimental results demonstrate the feasibility of the optimization algorithm. 展开更多
关键词 zernike moment image zernike moments shape feature vector image reconstruction evolutionary computation
下载PDF
Pseudo Zernike Moment and Deep Stacked Sparse Autoencoder for COVID-19 Diagnosis 被引量:1
2
作者 Yu-Dong Zhang Muhammad Attique Khan +1 位作者 Ziquan Zhu Shui-Hua Wang 《Computers, Materials & Continua》 SCIE EI 2021年第12期3145-3162,共18页
(Aim)COVID-19 is an ongoing infectious disease.It has caused more than 107.45 m confirmed cases and 2.35 m deaths till 11/Feb/2021.Traditional computer vision methods have achieved promising results on the automatic s... (Aim)COVID-19 is an ongoing infectious disease.It has caused more than 107.45 m confirmed cases and 2.35 m deaths till 11/Feb/2021.Traditional computer vision methods have achieved promising results on the automatic smart diagnosis.(Method)This study aims to propose a novel deep learning method that can obtain better performance.We use the pseudo-Zernike moment(PZM),derived from Zernike moment,as the extracted features.Two settings are introducing:(i)image plane over unit circle;and(ii)image plane inside the unit circle.Afterward,we use a deep-stacked sparse autoencoder(DSSAE)as the classifier.Besides,multiple-way data augmentation is chosen to overcome overfitting.The multiple-way data augmentation is based on Gaussian noise,salt-and-pepper noise,speckle noise,horizontal and vertical shear,rotation,Gamma correction,random translation and scaling.(Results)10 runs of 10-fold cross validation shows that our PZM-DSSAE method achieves a sensitivity of 92.06%±1.54%,a specificity of 92.56%±1.06%,a precision of 92.53%±1.03%,and an accuracy of 92.31%±1.08%.Its F1 score,MCC,and FMI arrive at 92.29%±1.10%,84.64%±2.15%,and 92.29%±1.10%,respectively.The AUC of our model is 0.9576.(Conclusion)We demonstrate“image plane over unit circle”can get better results than“image plane inside a unit circle.”Besides,this proposed PZM-DSSAE model is better than eight state-of-the-art approaches. 展开更多
关键词 Pseudo zernike moment stacked sparse autoencoder deep learning COVID-19 multiple-way data augmentation medical image analysis
下载PDF
Blur Image Edge to Enhance Zernike Moments for Object Recognition 被引量:1
3
作者 Chihying Gwo Anwen Deng 《Journal of Computer and Communications》 2016年第15期79-91,共13页
Zernike moments (ZMs) are a set of orthogonal moments which have been successfully used in the fields of image processing and pattern recognition. A combination of edge blurring with ZMs computation was introduced. In... Zernike moments (ZMs) are a set of orthogonal moments which have been successfully used in the fields of image processing and pattern recognition. A combination of edge blurring with ZMs computation was introduced. In this study, several kinds of artificial binary stripe images were used to investigate the effects of edge blurring on the absolute mean error of reconstructed image from high-order ZMs. After the blurring process, the reconstruction errors were increased dramatically at edge pixels, but decreased on non-edge pixels. The experimental results demonstrated that 2-pixel blurring approach provided better performance for reducing reconstruction error. Finally, a template matching between two real images was simulated to illustrate the effectiveness of the proposed method. 展开更多
关键词 zernike moments Pattern Recognition High-Order ZMs Template Matching
下载PDF
Performance of Object Classification Using Zernike Moment
4
作者 Ariffuddin Joret Mohammad Faiz Liew Abdullah +2 位作者 Muhammad Suhaimi Sulong Asmarashid Ponniran Siti Zuraidah Zainudin 《Journal of Electronic Science and Technology》 CAS 2014年第1期90-94,共5页
Moments have been used in all sorts of object classification systems based on image. There are lots of moments studied by many researchers in the area of object classification and one of the most preference moments is... Moments have been used in all sorts of object classification systems based on image. There are lots of moments studied by many researchers in the area of object classification and one of the most preference moments is the Zernike moment. In this paper, the performance of object classification using the Zernike moment has been explored. The classifier based on neural networks has been used in this study. The results indicate the best performance in identifying the aggregate is at 91.4% with a ten orders of the Zernike moment. This encouraging result has shown that the Zernike moment is a suitable moment to be used as a feature of object classification systems. 展开更多
关键词 Features extraction neural network object classification zernike moment.
下载PDF
Osteosarcoma Segmentation in MRI Based on Zernike Moment and SVM
5
作者 CHEN Chun-xiao ZHANG Dan +3 位作者 LI Ning QIAN Xiao-jun WU Shu-jia Gail Sudlow 《Chinese Journal of Biomedical Engineering(English Edition)》 2013年第2期70-78,共9页
Osteosarcoma is primary malignant neoplasms derived from cells of mesenchymal origin, and often has distinct phenotypes at different stages. The location of tumor and reaction zone can be identified by an expert in ma... Osteosarcoma is primary malignant neoplasms derived from cells of mesenchymal origin, and often has distinct phenotypes at different stages. The location of tumor and reaction zone can be identified by an expert in magnetic resonance imaging (MRI), with MRI being one of the choices for evaluating the extent of osteosarcoma. However, it is still a challenge to automatically extract tumor from its surrounding tissues because of their low intensity differences in MRI. We investigated an approach based on Zernike moment and support vector machine (SVM) for osteosarcoma segmentation in T1-weighted image (TIWI). Firstly, the different order moments around each pixel are calculated in small windows. Secondly, the grayscale and the module values of different order moments are used as a texture feature vector which is then used as the training set for SVM. Finally, an SVM classifier is trained based on this set of features to identify the osteosarcoma, and the segmented tumor tissue is rendered in 3D by the ray casting algorithm based on graphics processing unit (GPU). The performance of the method is validated on T1WI, showing that the segmentation method has a high similarity index with the expert's manual segmentation. 展开更多
关键词 OSTEOSARCOMA zernike moment support vector machine (SVM) SEGMENTATION
下载PDF
A Theoretical Comparison among Recursive Algorithms for Fast Computation of Zernike Moments Using the Concept of Time Complexity
6
作者 Nasrin Bastani Alireza Vard +1 位作者 Mehdi Jabalameli Vahid Bastani 《American Journal of Computational Mathematics》 2021年第4期304-326,共23页
Zernike polynomials have been used in different fields such as optics, astronomy, and digital image analysis for many years. To form these polynomials, Zernike moments are essential to be determined. One of the main i... Zernike polynomials have been used in different fields such as optics, astronomy, and digital image analysis for many years. To form these polynomials, Zernike moments are essential to be determined. One of the main issues in realizing the moments is using factorial terms in their equation which cause</span><span style="font-size:10.0pt;font-family:"">s</span><span style="font-size:10.0pt;font-family:""> higher time complexity. As a solution, several methods have been presented to reduce the time complexity of these polynomials in recent years. The purpose of this research is to study several methods among the most popular recursive methods for fast Zernike computation and compare them <span>together by a global theoretical evaluation system called worst-case time co</span><span>mplexity. In this study, we have analyzed the selected algorithms and calculate</span>d the worst-case time complexity for each one. After that, the results are represented and explained and finally, a conclusion has been made by comparing th</span><span style="font-size:10.0pt;font-family:"">ese</span><span style="font-size:10.0pt;font-family:""> criteria among the studied algorithms. According to time complexity, we have observed that although some algorithms </span><span style="font-size:10.0pt;font-family:"">such </span><span style="font-size:10.0pt;font-family:"">as Wee method and Modified Prata method were successful in having the smaller time complexit<span>ies, some other approaches did not make any significant difference compa</span>r</span><span style="font-size:10.0pt;font-family:"">ed</span><span style="font-size:10.0pt;font-family:""> to the classical algorithm. 展开更多
关键词 Time Complexity Uniform Model zernike moments zernike Polynomi-als
下载PDF
A Geometric Robust Watermarking Algorithm Based on DWT-DCT and Zernike Moments 被引量:2
7
作者 CHEN Yu QU Fang HU Jianbin CHEN Zhong 《Wuhan University Journal of Natural Sciences》 CAS 2008年第6期753-758,共6页
This paper proposed a novel multibits watermarking algorithm providing robustness against geometric attacks. The robustness is achieved from three aspects: (1) Choosing the inscribed disk of the host image as the Z... This paper proposed a novel multibits watermarking algorithm providing robustness against geometric attacks. The robustness is achieved from three aspects: (1) Choosing the inscribed disk of the host image as the Zernike moments computation domain and the square in the disk as the watermarking embedding domain. (2) Embedding the watermark in the cascade discrete wavelet transform-discrete cosine transform (DWT-DCT) domain by modulating the specified coefficient pair in each sub block. (3) Saving two selected Zernike moments of the original watermarked image to estimate and correct the geometric attacks before watermark extraction. Experimental results show that the proposed algorithm is robust to any angle of rotation attacks and wide range of scaling attacks, and as well, a variety of other attacks such as lossy compression, common signal processing. 展开更多
关键词 zernike moments discrete wavelet transform discrete cosine transform (DWT-DCT) WATERMARKING
原文传递
Illumination Invariant Recognition of Three-Dimensional Texture in Color Images 被引量:3
8
作者 JieYang MohammedAl-Rawi 《Journal of Computer Science & Technology》 SCIE EI CSCD 2005年第3期378-388,共11页
In this paper, illumination-affine invariant methods are presented based onaffine moment normalization techniques, Zernike moments, and multiband correlation functions. Themethods are suitable for the illumination inv... In this paper, illumination-affine invariant methods are presented based onaffine moment normalization techniques, Zernike moments, and multiband correlation functions. Themethods are suitable for the illumination invariant recognition of 3D color texture. Complex valuedmoments (i.e., Zernike moments) and affine moment normalization are used in the derivation ofillumination affine invariants where the real valued affine moment invariants fail to provide affineinvariants that are independent of illumination changes. Three different moment normalizationmethods have been used, two of which are based on affine moment normalization technique and thethird is based on reducing the affine transformation to a Euclidian transform. It is shown that fora change of illumination and orientation, the affinely normalized Zernike moment matrices arerelated by a linear transform. Experimental results are obtained in two tests: the first is usedwith textures of outdoor scenes while the second is performed on the well-known CUReT texturedatabase. Both tests show high recognition efficiency of the proposed recognition methods. 展开更多
关键词 3D color texture recognition illumination invariance affine momentnormalization zernike moment affine invariant
原文传递
Analyzing Antarctic ice sheet snowmelt with dynamic Big Earth Data 被引量:2
9
作者 Dong Liang Huadong Guo +4 位作者 Lu Zhang Mingwei Wang Lizhe Wang Lei Liang Zeeshan Shirazi 《International Journal of Digital Earth》 SCIE 2021年第1期88-105,共18页
Big Earth Data—big data associated with Earth sciences—can potentially revolutionize research on climate change,sustainable development,and other issues of global concern.For example,analyzing massive amounts of sat... Big Earth Data—big data associated with Earth sciences—can potentially revolutionize research on climate change,sustainable development,and other issues of global concern.For example,analyzing massive amounts of satellite imagery of polar environments,which are sensitive to the effects of climate change,provides insights into global climate trends.This study proposes a method to use Big Earth Data to explore changes in snowmelt over the Antarctic ice sheet from 1979 to 2016.The method uses Zernike moments to observe melt area in Antarctica and uses the Mann-Kendall test to detect temporal changes and abnormal information about the continent’s melt area.The melting trend in the time-series data matched the changes in temperature and seasonal transitions.The results do not demonstrate significant change in the area of surface melt;however,abrupt changes in melt conditions linked to temperature changes over the Antarctic ice sheet were observed within the time series.The experiment results demonstrate that the proposed method is robust,adaptive,and capable of extracting the core features of melting snow. 展开更多
关键词 Big Earth Data data analysis Antarctic ice sheet zernike moments Mann-Kendall test
原文传递
Video super-resolution reconstruction based on deep convolutional neural network and spatio-temporal similarity
10
作者 Li Linghui Du Junping +2 位作者 Liang Meiyu Ren Nan Fan Dan 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2016年第5期68-81,共14页
Existing learning-based super-resolution (SR) reconstruction algorithms are mainly designed for single image, which ignore the spatio-temporal relationship between video frames. Aiming at applying the advantages of ... Existing learning-based super-resolution (SR) reconstruction algorithms are mainly designed for single image, which ignore the spatio-temporal relationship between video frames. Aiming at applying the advantages of learning-based algorithms to video SR field, a novel video SR reconstruction algorithm based on deep convolutional neural network (CNN) and spatio-temporal similarity (STCNN-SR) was proposed in this paper. It is a deep learning method for video SR reconstruction, which considers not onlv the mapping relationship among associated low-resolution (LR) and high-resolution (HR) image blocks, but also the spatio-temporal non-local complementary and redundant information between adjacent low-resolution video frames. The reconstruction speed can be improved obviously with the pre-trained end-to-end reconstructed coefficients. Moreover, the performance of video SR will be further improved by the optimization process with spatio-temporal similarity. Experimental results demonstrated that the proposed algorithm achieves a competitive SR quality on both subjective and objective evaluations, when compared to other state-of-the-art algorithms. 展开更多
关键词 video SR reconstruction deep convolutional neural network spatio-temporal siruilarity zernike moment feature
原文传递
Two-Factor Cancelable Biometrics Authenticator
11
作者 彭颖涵 Andrew T. B. J David N. C. L 《Journal of Computer Science & Technology》 SCIE EI CSCD 2007年第1期54-59,共6页
Biometrics-based authentication system offers advantages of providing high reliability and accuracy. However the contemporary authentication system is impuissance to compromise. If a biometrics data is compromised, it... Biometrics-based authentication system offers advantages of providing high reliability and accuracy. However the contemporary authentication system is impuissance to compromise. If a biometrics data is compromised, it cannot be replaced and rendered unusable. In this paper, a cancelable biometrics-based authenticator is proposed to solve this irrevocability issue. The proposed approach is a two-factor authentication system, which requires both of the random data and facial feature in order to access the system. In this system, tokenized pseudo-random data is coupled with momentbased facial feature via inner product algorithm. The output of the product is then discretized to generate a set of private binary code, coined as 2factor-Hashing code, which is acted as verification key. If this biometrics-based verification key is compromised, a new one can be issued by replacing a different set of random number via token replacement. Then, the compromised one is rendered completely useless. This feature offers an extra protection layer against biometrics fabrication since the verification code is replaceable. Experimental results demonstrate that the proposed system provides zero Equal Error Rate in which there is a clear separation in between the genuine and the imposter distribution populations. 展开更多
关键词 cancelable biometrics face recognition Geometric moments pseudo zernike moment
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部