Ying Cui,∗ Shixin Li,∗ Decai Qu,∗ Xiaoyu Fan,∗ and Hongchao Lu∗∗
[1] M. Molina, I. Gonz´alez, and F. Daz, Efficient scale-adaptive li-cense plate detection system, IEEE Transactions on IntelligentTransportation Systems, 20(6), 2019, 2109–2121. [2] Y. Chen, B. Wu, C. Lin, C. Fan, and C. Hsieh, Real-time vision-based vehicle detection and tracking on a moving vehicle fornighttime driver assistance. International Journal of Roboticsand Automation, 24(2), 2019, 89–102. [3] C. Shu and L.H. Sun, Automatic target recognition methodfor multitemporal remote sensing image, Open Physics, 18(1),2020, 170–181. [4] M. Riahi, M. Eslami, S.H. Safavi, and F.T. Azar, Humanactivity recognition using improved dynamic image, IET ImageProcessing, 14(13), 2020, 3223–3231. [5] D.W. Wang, L.M. Deng, J.G. Ni, J.Y. Gao, et al. Recognitionpest by image-based transfer learning, Journal of the Scienceof Food and Agriculture, 99(10), 2019, 4524–4531. [6] L.J. Xiong, D.L. Zhang, and Y. Zhang, Water leakage im-age recognition of shield tunnel via learning deep featurerepresentation, Journal of Visual Communication and ImageRepresentation, 71, 2020, 1–6. [7] A.J. Sinisterra, M.R. Dhanak, and E.K. Von, Stereovision-based target tracking system for USV operations, Ocean En-gineering, 133, 2017, 197–214. [8] Y. Kobayashi, T. Okamoto, and M. Onishi. Generation ofobstacle avoidance based on image features and embodiment,International Journal of Robotics and Automation, 27(4),2012, 364–376. [9] J.J. Hopfield, Neural networks and physical systems withemergent collective computational abilities, Proceedings of theNational Academy of Sciences, 79(8), 1982, 2554–2558. [10] J.J. Hopfield and D.W. Tank, ”Neural” computation of deci-sions in optimization problems, Biological Cybernetics, 52(3),1985, 141–152. [11] Q.H. Hong, Y. Li, and X.P. Wang, Memristive continuoushopfield neural network circuit for image restoration, NeuralComputing & Applications, 32(12), 2020, 8175–8185. [12] N. Joudar and M. Ettaouil, Mathematical mixed-integer pro-gramming for solving a new optimization model of selectiveimage restoration: Modelling and resolution by CHN and GA,Circuits Systems and Signal Processing, 38(5), 2018, 2072–2096. [13] B. Goyal, A. Dogra, S. Agrawal, and B.S. Sohi, Two-dimensional gray scale image denoising via morphological op-erations in Nsst Domain & Bitonic filtering, Future GenerationComputer Systems, 82, 2018, 158–175. [14] M. Elhoseny and K. Shankar, Optimal bilateral filter and con-volutional neural network based denoising method of medicalimage measurements, Measurement, 143, 2019, 125–135. [15] W. Wang, X.G. Xia, S.L. Zhang, C. He, et al. Vector totalfractional-order variation and its applications for color imagedenoising and decomposition, Applied Mathematical Modelling,72, 2019, 155–175. [16] G. Massini, Hopfield neural network, Substance Use & Misuse,33(2), 1998, 481–488. [17] J.W. Tukey, Exploratory Data Analysis (Boston, MA: Addison-Wesley, 1971), 98–224. [18] T. Sun and Y. Neuvo, Detail-preserving median based filtersin image processing, Pattern Recognition Letters, 15(4), 1994,341–347. [19] C. Liu, T. Ning, D. Zhang, and K. Li, Wavelet denoisingmethod of tire laser spearing speckle interferogram, IEEEInternational Conference on Automation & Logistics, Qingdao,China, 2008, 1–5. [20] G.Y. Chen, T.D. Bui, and A. KrzyAk, Image denoising withneighbour dependency and customized wavelet and threshold,Pattern Recognition, 38(1), 2005, 115–124. [21] H.M. Rai and K. Chatterjee, Hybrid adaptive algorithmbased on wavelet transform and independent component anal-ysis for denoising of MRI images, Measurement, 144, 2019,72–82.
Important Links:
Go Back