This work is licensed under the Creative Commons Attribution 4.0 International License.
Cascianelli, S., Costante, G., Devo, A., Ciarfuglia, T. A., & Fravolini, M. L. (2019). The role of the input in natural language video description. IEEE Transactions on Multimedia, PP(99), 1-1.Search in Google Scholar
Sepehr, S., & Head, M. (2018). Understanding the role of competition in video gameplay satisfaction. Information & Management, 55( 4), 407-421.Search in Google Scholar
Macdonald, I. (2021). Window on the weather: a case study in multi-platform visual communication design, with a relationship to design thinking. Visual Communication, 22(2), 365-386.Search in Google Scholar
Mei, J., & Moura, J. M. (2016). Signal processing on graphs: Causal modeling of unstructured data. IEEE Transactions on Signal Processing, 65(8), 2077-2092.Search in Google Scholar
Cheng, S., Zhang, Z. Y., Zhou, F., Li, M., Chen, H., & Shi, F. S., et al. (2021). 3d step-by-step inversion strategy for audio magnetotellurics data based on unstructured mesh. Applied Geophysics, 18(3), 375-385.Search in Google Scholar
Yuan, M., Gao, Y., Cavallaro, A., Parini, C. G., Wei, Z., & Liang, Y. C. (2017). Sparsity independent sub-nyquist rate wideband spectrum sensing on real-time tv white space. IEEE Transactions on Vehicular Technology, PP(10), 1-1.Search in Google Scholar
Qi, X., Wu, N., Wang, H., & Yuan, W. (2017). A factor graph-based iterative detection of faster-than-nyquist signaling in the presence of phase noise and carrier frequency offset. Digital Signal Processing, 63, 25-34.Search in Google Scholar
Liu, W, & Wang, Z. (2019). A novel multi-focus image fusion method using multiscale shearing nonlocal guided averaging filter. Signal Processing, 166, 107252.Search in Google Scholar
Mota, J., Deligiannis, N., & Rodrigues, M. (2017). Compressed sensing with prior information: strategies, geometry, and bounds. IEEE Transactions on Information Theory, 63(7).Search in Google Scholar
Wang, X., & Fu, F. W. (2017). Deterministic construction of compressed sensing matrices from codes. International Journal of Foundations of Computer Science, 28(02), 99-109.Search in Google Scholar
Moench, S., Sollmann, N., Hock, A., Zimmer, C., Kirschke, J. S., & Hedderich, D. M. (2020). Magnetic resonance imaging of the brain using compressed sensing - quality assessment in daily clinical routine. Clinical neuroradiology.(2), 30.Search in Google Scholar
Hu, Z., Zhao, C., Zhao, X., Kong, L., & Zhou, Y. (2021). Joint reconstruction framework of compressed sensing and nonlinear parallel imaging for dynamic cardiac magnetic resonance imaging. BMC Medical Imaging, 21(1).Search in Google Scholar
Zhang, S., Wu, J., Chen, D., Li, S., & Qu, J. (2018). Fast frequency-domain compressed sensing analysis for high-density super-resolution imaging using orthogonal matching pursuit. IEEE Photonics Journal, PP(99), 1-1.Search in Google Scholar
You, D., Zhang, J., Xie, J., Chen, B., & Ma, S. (2021). Coast: Controllable arbitrary-sampling network for compressive sensing. IEEE Transactions on Image Processing, 30, 6066-6080.Search in Google Scholar
Zhu, Y., Liu, W., Shen, Q., Wu, Y., & Bao, H. (2020). Jpeg lifting algorithm based on adaptive block compressed sensing. Mathematical Problems in Engineering, 2020.Search in Google Scholar
Qin, S. (2020). Simple algorithm for 1-norm regularisation-based compressed sensing and image restoration. IET Image Processing, 14(1).Search in Google Scholar
Ren, S., Zhang, T., Wang, M., & Shahzad, K. (2020). Identifiable tampering multi-carrier image information hiding algorithm based on compressed sensing. IEEE Access, 8, 214992-215009.Search in Google Scholar
Fan, Q., & Zhang, M. (2017). Image inpainting method based on compressed sensing. Revista de la Facultad de Ingenieria, 32(10), 412-417.Search in Google Scholar