Autofocus method based on multi regions of interest window for cervical smear images (original) (raw)

References

  1. Anwar S, Barnes N (2019) Real image denoising with feature attention. In: Proceedings of the IEEE/CVF International Conference on Computer Vision, pp 3155–3164
  2. Aravind Kumar M, Manjunatha Chari K (2017) An efficient pipelined architecture for real-valued fast Fourier transform. Int J Electron 104:692–708
    Article Google Scholar
  3. Chang Y, Jung C, Ke P, Song H, Hwang J (2018) Automatic contrast-limited adaptive histogram equalization with dual gamma correction. IEEE Access 6:11782–11792
    Article Google Scholar
  4. Chen G, Fan X (2018) Autofocus window selection algorithm based on saliency detection. In: Sixth International Conference on Optical and Photonic Engineering (icOPEN 2018). International Society for Optics and Photonics, p 108271J
  5. Cruza JF, Camacho J, Mateos R, Fritsch C (2019) A new beamforming method and hardware architecture for real time two way dynamic depth focusing. Ultrasonics 99:105965
    Article Google Scholar
  6. Cui J, Gong K, Guo N, Wu C, Meng X, Kim K, Zheng K, Wu Z, Fu L, Xu B (2019) PET image denoising using unsupervised deep learning. Eur J Nucl Med Mol Imaging 46:2780–2789
    Article Google Scholar
  7. Dalal N, Triggs B (2005) Histograms of oriented gradients for human detection. In: 2005 IEEE computer society conference on computer vision and pattern recognition (CVPR'05). Ieee, pp 886–93
  8. Dastidar TR Automated focus distance estimation for digital microscopy using deep convolutional neural networks. In: 2019 IEEE/CVF conference on computer vision and pattern recognition workshops (CVPRW), 2019. IEEE, pp 1049–1056
  9. Deivalakshmi S, Palanisamy P (2016) Removal of high density salt and pepper noise through improved tolerance based selective arithmetic mean filtering with wavelet thresholding. AEU-Int J Electron Commun 70:757–776
    Article Google Scholar
  10. El Helou M, Süsstrunk S (2020) Blind universal Bayesian image denoising with Gaussian noise level learning. IEEE Trans Image Process 29:4885–4897
    Article Google Scholar
  11. Felzenszwalb PF, Huttenlocher DP (2004) Efficient graph-based image segmentation. Int J Comput Vis 59:167–181
    Article Google Scholar
  12. Gai S, Bao Z (2019) New image denoising algorithm via improved deep convolutional neural network with perceptive loss. Expert Syst Appl 138:112815
    Article Google Scholar
  13. Ge Y, Li B, Zhao Y, Yan W (2019) Hh-net: Image driven microscope fast auto-focus with deep neural network. In: Proceedings of the 2019 9th International Conference on Biomedical Engineering and Technology, pp 180–85
  14. Gu CC, Wu KJ, Hu J, Hao C, Guan XP (2015) Region sampling for robust and rapid autofocus in microscope. Microsc Res Tech 78:382–390
    Article Google Scholar
  15. Hao Q, Xiao Y, Cao J, Cheng Y, Sun C (2018) Improving the performances of autofocus based on adaptive retina-like sampling model. Opt Commun 410:269–276
    Article Google Scholar
  16. Hecht-Nielsen R (1992) Theory of the backpropagation neural network. Neural networks for perception. Elsevier, pp 65–93
  17. Ingram M, Gachagan A, Nordon A, Mulholland A, Hegarty M (2020) Calibration of ultrasonic hardware for enhanced total focusing method imaging. Insight: Non-Destr Test Cond Monit 62:408–415
    Article Google Scholar
  18. Ivanov T, Kumar A, Sharoukhov D, Ortega F, Putman M (2020) DeepFocus: a deep learning model for focusing microscope systems. In: Applications of Machine Learning 2020. International Society for Optics and Photonics, p 1151103
  19. Jiang S, Liao J, Bian Z, Guo K, Zhang Y, Zheng G (2018)Transform-and multi-domain deep learning for single-frame rapid autofocusing in whole slide imaging. Biomed Opt Express 9:1601–1612
    Article Google Scholar
  20. Juočas L, Raudonis V, Maskeliūnas R, Damaševičius R, Woźniak M (2019)Multi-focusing algorithm for microscopy imagery in assembly line using low-cost camera. Int J Adv Manuf Technol 102:3217–3227
    Article Google Scholar
  21. Kim H, Oh M, Lee H, Jang J, Kim MU, Yang HJ, Ryoo M, Lee J (2019)Deep-learning based autofocus score prediction of scanning electron microscope. Microsc Microanal 25:182–183
    Article Google Scholar
  22. Kudryavtsev AV, Dembélé S, Piat N (2017) Autofocus on moving object in scanning electron microscope. Ultramicroscopy 182:216–225
    Article Google Scholar
  23. Li X (2016) Increasing lithographic depth of focus window using wafer topography. Google Patents
  24. Li Y, Chen N, Zhang J (2010) Fast and high sensitivity focusing evaluation function. Appl Res Comput 27:1534–1536
    Google Scholar
  25. Li L, Xia W, Lin W, Fang Y, Wang S (2016)No-reference and robust image sharpness evaluation based on multiscale spatial and spectral features. IEEE Trans Multimed 19:1030–1040
    Article Google Scholar
  26. Li Q, Li L, Lu Z, Zhou Y, Zhu H (2019)No-reference Sharpness Index for Scanning Electron Microscopy Images Based on Dark Channel Prior. KSII Trans Internet Inf Syst 13
  27. Li L, Pan Z, Cui H, Liu J, Yang S, Liu L, Tian Y, Wang W (2019) Adaptive window iteration algorithm for enhancing 3D shape recovery from image focus. Chin Opt Lett 17:061001
    Article Google Scholar
  28. Liang Y, Yan M, Tang Z, He Z, Liu J (2019) Learning to autofocus based on gradient boosting machine for optical microscopy. Optik 198:163002
    Article Google Scholar
  29. Liu D, Wen B, Liu X, Wang Z, Huang TS (2017) When image denoising meets high-level vision tasks: a deep learning approach. arXiv preprint arXiv:170604284
  30. Luo Y, Huang L, Rivenson Y, Ozcan A (2021)Single-shot autofocusing of microscopy images using deep learning. ACS Photonics 8:625–638
    Article Google Scholar
  31. Otsu N (1979) A threshold selection method from gray-level histograms. IEEE Trans Syst Man Cybern 9:62–66
    Article Google Scholar
  32. Pirsiavash H, Ramanan D, Fowlkes CC (2011)Globally-optimal greedy algorithms for tracking a variable number of objects. In: CVPR 2011. IEEE, pp 1201–08
  33. Rai Dastidar T, Ethirajan R (2020) Whole slide imaging system using deep learning-based automated focusing. Biomed Opt Express 11:480–491. https://doi.org/10.1364/BOE.379780
    Article Google Scholar
  34. Saito H, Saito K (2019) Image focusing analysis using coded aperture made of a printed mask. Jpn J Appl Phys 58:SKKA01
    Article Google Scholar
  35. Santos A, Ortiz de Solórzano C, Vaquero JJ, Pena JM, Malpica N, del Pozo F (1997) Evaluation of autofocus functions in molecular cytogenetic analysis. J Microsc 188:264–272
    Article Google Scholar
  36. Sara U, Akter M, Uddin MS (2019) Image quality assessment through FSIM, SSIM, MSE and PSNR—a comparative study. J Comput Commun 7:8–18
    Article Google Scholar
  37. Shah M, Mishra S, Sarkar M, Rout C (2017) Identification of robust focus measure functions for the automated capturing of focused images from Ziehl–Neelsen stained sputum smear microscopy slide. Cytometry Part A 91:800–809
    Article Google Scholar
  38. Shilston RT (2012) Blur perception: an evaluation of focus measures. UCL (University College London)
  39. Tang JR, Isa NAM (2017)Bi-histogram equalization using modified histogram bins. Appl Soft Comput 55:31–43
    Article Google Scholar
  40. Torre LA, Bray F, Siegel RL, Ferlay J, Lortet-Tieulent J, Jemal A (2015) Global cancer statistics, 2012. CA Cancer J Clin 65:87–108
    Article Google Scholar
  41. Uijlings JR, Van De Sande KE, Gevers T, Smeulders AW (2013) Selective search for object recognition. Int J Comput Vis 104:154–171
    Article Google Scholar
  42. Wang Z, Lei M, Yao B, Cai Y, Liang Y, Yang Y, Yang X, Li H, Xiong D (2015) Compact multi-band fluorescent microscope with an electrically tunable lens for autofocusing. Biomed Opt Express 6:4353–4364
    Article Google Scholar
  43. Weng J-F, Lu G-H, Weng C-J, Lin Y-H, Liu C-F, Vincke R, Ting H-C, Chang T-T(2021) Microscope autofocus algorithm based on number of image slope variations. Opt Express 29:10285–10306
    Article Google Scholar
  44. Wu H, Mao Y, Xue C, Wei Q, Wu W (2019) A Method for Selecting Auto-focusing Window of Photoelectric Theodolite. In: 2019 International Conference on Big Data, Electronics and Communication Engineering (BDECE 2019). Atlantis Press, pp 88–92
  45. Yan Z, Chen G, Xu W, Yang C, Lu Y (2018) Study of an image autofocus method based on power threshold function wavelet reconstruction and a quality evaluation algorithm. Appl Opt 57:9714–9721
    Article Google Scholar
  46. Yeo T, Ong S, Sinniah R (1993) Autofocusing for tissue microscopy. Image Vis Comput 11:629–639
    Article Google Scholar
  47. Yu J, Tan L, Zhou S, Wang L, Siddique MA (2017) Image denoising algorithm based on entropy and adaptive fractional order calculus operator. IEEE Access 5:12275–12285
    Article Google Scholar
  48. Zhai Y, Zhou D, Liu Y, Liu S, Peng K (2011) Design of evaluation index for auto-focusing function and optimal function selection. Acta Opt Sin 31:0418002
    Article Google Scholar
  49. Zhang H, Zhu Q, Fan C, Deng D (2013) Image quality assessment based on Prewitt magnitude. AEU-Int J Electron Commun 67:799–803
    Article Google Scholar
  50. Zhang F-S, Li S-W, Hu Z-G, Du Z (2017) Fish swarm window selection algorithm based on cell microscopic automatic focus. Clust Comput 20:485–495
    Article Google Scholar
  51. Zhang K, Zuo W, Chen Y, Meng D, Zhang L (2017) Beyond a gaussian denoiser: residual learning of deep cnn for image denoising. IEEE Trans Image Process 26:3142–3155
    Article MathSciNet Google Scholar
  52. Zhang Y, Liu L, Gong W, Yu H, Wang W, Zhao C, Wang P, Ueda T (2018) Autofocus system and evaluation methodologies: a literature review. Sens Mater 30:1165–1174
    Google Scholar
  53. Zhang X, Fan F, Gheisari M, Srivastava G (2019) A novel auto-focus method for image processing using laser triangulation. IEEE Access 7:64837–64843
    Article Google Scholar
  54. Zhao Q, Liu B, Xu Z (2013) Research and realization of an anti-noise auto-focusing algorithm. In: 2013 5th International Conference on Intelligent Human-Machine Systems and Cybernetics. IEEE, pp 255–58
  55. Zhou R, Ding H, Yu F (2018) A real-time continuous auto-focus algorithm for stereo microscope cameras. In: Real-time Photonic Measurements, Data Management, and Processing III. International Society for Optics and Photonics, p 108220L

Download references