Journal Press India®

IOT Based Wearing Visual Assistance System Based on Binocular Sensors

Vol 8 , Issue 3 , July - September 2020 | Pages: 15-20 | Research Paper  

https://doi.org/10.51976/ijari.832004

| | |


Author Details ( * ) denotes Corresponding author

1. * Vijay Bhandari, Department of Computer Science & Engineering, Bhopal, Madhya Pradesh, India (vijaysirt@gmail.com)
2. Kalpana Rai, Department of Computer Science & Engineering, Bhopal, Madhya Pradesh, India (kalpana.rai123@gmail.com)
3. Ritu Shrivastava, Department of Computer Science & Engineering, Bhopal, Madhya Pradesh, India (ritushrivastava08@gmail.com)

Usually the concert of visual photoelectric is exaggerated from a fusion of compound factors in resultant in a huge numeral of sound and alteration. In this article, we will do efficient iot-wva system based on bc sensors for vis person cleverly force image eminence valuation to go for the captured imagery during v-sensors, which can make sure the participation quality which improves the scenes for the ending of classify the system. Here we performed simulation and experiment show that the proposed system can solve the predicament in effect. There is a way in which we will add computation, arithmetical consequences also demonstration the wearable vision (wv) organization prepared vi grouping creates additional contented in diagrams and finally it is desirable state.

Keywords

Binocular apparition sensors; Wearable supporter system; Stereo representation quality assessment; CNN


  1. B Montrucchio, C Celozzi, P Cerutti. Thresholds of vision of the human visual system: Visual adaptation for monocular and binocular vision. IEEE Transactions on Human-Machine Systems, 45(6), 2015, 739–749.

  2. M Georgeson, S Wallis, T Meese, D Baker. Contrast and lustre: a model that accounts for eleven different forms of contrast discrimination in binocular vision. Vision Research, 129, 2016, 98–118.

  3. D Saint-Amour, V Walsh, J Guillemot, M Lassonde, F Lepore. Role of primary visual cortex in the binocular integration of plaid motion perception. European Journal of Neuroscience, 21(4), 2015, 1107–1115.

  4. W Hou, X Gao, D Tao, X Li. Blind image quality assessment via deep learning. IEEE Transactions on Neural Networks and Learning Systems, 26(6), 2015, 1275, 2015.

  5. Y Liu, J Yang, Q Meng, Z Lv, Z Song, Z Gao. Stereoscopic im- age quality assessment method based on binocular combination saliency model. Signal Processing, 125(C), 2016, 237–248.

  6. YH Lin, JL Wu. Quality assessment of stereoscopic 3d image compression by binocular integration behaviors. IEEE Transactions on Image Processing, 23(4)s, 2014, 1527–1542.

  7. F Shao, K Li, G Jiang, M Yu, C Yu. Monocular-binocular feature fidelity induced index for stereoscopic image quality assessment. Applied Optics, 54(33), 2015, 9671–9680, 2015.

  8. F Shao, W Lin, S Wang, G Jiang, M Yu. Blind image quality assessment for stereoscopic images using binocular guided quality lookup and visual codebook. IEEE Transactions on Broadcasting, 61(2), 2015, 154–165, 2015.

  9. W Zhang, L Ma, J Guan, R Huang. Learning structure of stereo- scopic image for no-reference quality assessment with convolutional neural network. Pattern Recognition, 59(C), 2016, 176–187.

  10. Y Lecun, Y Bengio, G Hinton. Deep learning. Nature, 521, 2015, 436-444.

  11. J Schmidhuber. Deep learning in neural networks: An overview. Neural Networks, 61, 2015, 85–117.

  12. J Yang, B Jiang, B Li, K Tian, Z Lv. A fast image retrieval method designed for network big data. IEEE Transactions on Industrial Informatics, 13(5), 2017, 2350–2359.

  13. ZH Ling, SY Kang, H Zen, A Senior, M Schuster, XJ Qian, HM Meng, L Deng. Deep learning for acoustic modeling in parametric speech generation: A systematic review of existing techniques and future trends. IEEE Signal Processing Magazine, 32(3), 2015, 35–52.

  14. D Holden, J Saito, T Komura. A deep learning framework for character motion synthesis and editing. Acm Transactions on Graphics, 35(4), 2016,1–11.

  15. Z Dong, Y Wu, M Pei, Y Jia. Vehicle type classification using a semisupervised convolutional neural network. IEEE Transactions on Intelligent Transportation Systems, 16(4), 2015, 2247– 2256.

  16. T. He, W. Huang, Y. Qiao, and J. Yao. Text-attentional convolutional neural network for scene text detection. IEEE Transactions on Image Processing, 25(6):2529–2541, 2016.

  17. J. Wu and R. Jafari. Seamless vision-assisted placement calibration for wearable inertial sensors. Acm Transactions on Embedded Computing Systems, 16(3):1–22, 2017.

  18. A Brutti, A Cavallaro. Online cross-modal adaptation for audio- visual person identification with wearable cameras. IEEE Transactions on Human-Machine Systems, 47(1), 2017, 40–51.

  19. M Bolanos, M Dimiccoli, P Radeva. Toward storytelling from visual lifelogging: An overview. IEEE Transactions on Human-Machine Systems, 47(1), 2016, 77–90.

  20. H. Lin, W. Xu, N. Guan, D. Ji, Y. Wei, and W. Yi. Noninvasive and continuous blood pressure monitoring using wearable body sensor networks. IEEE Intelligent Systems, 30(6):38–48, 2015.

  21. E Nemati, MJ Deen, T Mondal. A wireless wearable ecg sensor for long-term applications. IEEE Communications Magazine, 50(1), 2012, 36– 43.

  22. R Fensli, PE Pedersen, T Gundersen, O Hejlesen. Sensor acceptance model - measuring patient acceptance of wearable sensors. Methods of Information in Medicine, 47(1), 2008, 89–95.

  23. Y Wong, S Chen, S Mau, C Sanderson. Patch-based probabilistic image quality assessment for face selection and improved video-based face recognition. In Computer Vision and Pattern Recognition Work- shops, 2011, 74–81

  24. D Gur, DA Rubin, BH Kart, AM Peterson, CR Fuhrman, HE Rockette, JL King. Forced choice and ordinal discrete rating assessment of image quality: A comparison. Journal of Digital Imaging, 10(3), 1997, 103–107.

  25. S Wei, S Wang, C Zhou, K. Liu, X Fan. Binocular vision measurement using dammann grating. Applied Optics, 54(11), 2015, 3246– 3251.

Abstract Views: 1
PDF Views: 141

Advanced Search

News/Events

Indira School of Bus...

Indira School of Mangement Studies PGDM, Pune Organizing Internatio...

Indira Institute of ...

Indira Institute of Management, Pune Organizing International Confe...

D. Y. Patil Internat...

D. Y. Patil International University, Akurdi-Pune Organizing Nation...

ISBM College of Engi...

ISBM College of Engineering, Pune Organizing International Conferen...

Periyar Maniammai In...

Department of Commerce Periyar Maniammai Institute of Science &...

Institute of Managem...

Vivekanand Education Society's Institute of Management Studies ...

Institute of Managem...

Deccan Education Society Institute of Management Development and Re...

S.B. Patil Institute...

Pimpri Chinchwad Education Trust's S.B. Patil Institute of Mana...

D. Y. Patil IMCAM, A...

D. Y. Patil Institute of Master of Computer Applications & Managem...

Vignana Jyothi Insti...

Vignana Jyothi Institute of Management International Conference on ...

By continuing to use this website, you consent to the use of cookies in accordance with our Cookie Policy.