70(8), 920–930 (1980)ĭeng, A.W., Wei, C.H., Gwo, C.Y.: Stable, fast computation of high-order Zernike moments using a recursive method. Teague, M.R.: Image analysis via the general theory of moments. Zernike, F.: Beugungstheorie des schneidenverfahrens und seiner verbesserten form, der phasenkontrastmethode. Xuan, Y., Li, D., Han, W.: Efficient optimization approach for fast GPU computation of Zernike moments. Sakdhnagool, P., Sabne, A., Eigenmann, R.: RegDem: increasing GPU performance via shared memory register spilling (2019). Haidar, A., Abdelfattah, A., Zounon, M., et al.: A guide for achieving high performance with very small matrices on GPU: a case study of batched LU and Cholesky factorizations. Santander-Jimenez, S., Vega-Rodriguez, M.A., Vicente-Viola, J., et al.: Comparative assessment of GPGPU technologies to accelerate objective functions: a case study on parsimony. In: Computational Vision and Medical Image Processing, pp. Martín-Requena, M.J., Ujaldón, M.: Leveraging graphics hardware for an automatic classification of bone tissue. Martín-Requena, M.J., Moscato, P., Ujaldón, M.: Efficient data partitioning for the GPU computation of moment functions. In: IEEE International Symposium on Parallel and Distributed Processing, pp. Ujaldon, M.: GPU acceleration of Zernike moments for large-scale images. Singh, C., Upneja, R.: Fast and accurate method for high order Zernike moments computation. Hwang, S.K., Kim, W.Y.: A novel approach to the fast computation of Zernike moments. Hwang, S.K., Kim, W.Y.: Fast and efficient method for computing ART. 28(4), 749–754 (1989)Ĭhong, C.-W., Raveendran, P., Mukundan, R.: A comparative analysis of algorithms for fast computation of Zernike moments. Prata, A., Rusch, W.V.T.: Algorithm for computation of Zernike polynomials expansion coefficients. Gu, J., Shu, H.Z., Toumoulin, C., et al.: A novel algorithm for fast computation of Zernike moments. Mukundan, R., Ramakrishnan, K.R.: Fast computation of Legendre and Zernike moments. Sez-Landete, J.: Comments on Fast Computation of Jacobi–Fourier Moments for Invariant Image Recognition. Li, D., et al.: Wavefront processor for liquid crystal adaptive optics system based on graphics processing unit. Singh, C.: Improved quality of reconstructed images using floating point arithmetic for moment calculation. Xin, Y.: Image reconstruction with polar Zernike moments. Control 39, 459–473 (2018)įilho, P.P.R., Rebouças, E.D.S., Marinho, L.B., et al.: Analysis of human tissue densities: a new approach to extract features from medical images. Kumar, Y., Aggarwal, A., Tiwari, S., et al.: An efficient and robust approach for biomedical image retrieval using Zernike moments. Zhenjiang, M.: Zernike moment-based image shape analysis and its application. Radhika, K.R., Venkatesha, M.K., Sekhar, G.N.: An approach for on-line signature authentication using Zernike moments. Konur, U.: Computerized detection of spina bifida using SVM with Zernike moments of fetal skulls in ultrasound screening. 17(5), 1–24 (2016)īera, A., Klesk, P., Sychel, D.: Constant-time calculation of zernike moments for detection with rotational invariance. Rabatel, G., Labbé, S.: Registration of visible and near infrared unmanned aerial vehicle images based on Fourier–Mellin transform. Lutovac, B., Daković, M., Stanković, S., et al.: An algorithm for robust image watermarking based on the DCT and Zernike moments. Shao, Z., Shang, Y., Zhang, Y., et al.: Robust watermarking using orthogonal Fourier–Mellin moments and chaotic map for double images. Ping, Z., Ren, H., Zou, J., Sheng, Y., Bo, W.: Generic orthogonal moments: Jacobi–Fourier moments for invariant image description. 72, 104–113 (2017)ĭeng, A.W., Gwo, C.Y.: Fast and stable algorithms for high-order Pseudo Zernike moments and image reconstruction. Singh, C., Aggarwal, A., Ranade, S.K.: A new convolution model for the fast computation of Zernike moments. Singh, C., Upneja, R.: Accurate computation of orthogonal Fourier–Mellin moments. Zhang, G., Luo, Z., Fu, B., et al.: A symmetry and bi-recursive algorithm of accurately computing Krawtchouk moments. 63(20), 5424–5436 (2015)Ĭhen, J., Li, B.Q., Zhai, H.L., et al.: A practical application of wavelet moment method on the quantitative analysis of Shuanghuanglian oral liquid based on three-dimensional fingerprint spectra. Energy 85, 1131–1140 (2015)Ĭhen, B., Coatrieux, G., Wu, J., et al.: Fast computation of sliding discrete Tchebichef moments and its application in duplicated regions detection. Zheng, W., Mcclarren, R.G.: Semi-analytic benchmark for multi-group free-gas Legendre moments and the application of Gauss quadrature in generating thermal scattering Legendre moments. Flusser, J., Zitova, B., Suk, T.: Moments and Moment Invariants in Pattern Recognition.
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |