Using Voice Guidance, an Intelligent Walking Assistance Mechanism for the Blind

  • S. Suman Rajest
  • R. Regin
  • Shynu T
  • Steffi. R
Keywords: Intelligent Walking Assistance, Mechanism, Visually Impaired People, Voice Assistance

Abstract

This study develops a perfect blind stick that may be used by the sight handicapped to feel their way around and find things. This study suggests a high-tech blind stick, which, with the help of enhanced equipment, enables visually impaired people to move around with relative ease and take a break, if necessary. The stick features a GPS, Bluetooth, a foldable seat, and an ultrasonic sensor. Our proposed model uses ultrasonic sensors that emit ultrasonic waves ahead of it to detect obstacles. When an obstacle is detected, the sensor relays that information to a Raspberry Pi 3, which then processes the information and calculates how close the obstacle is. If the Raspberry Pi 3 detects an impending danger, a buzzing sound will be issued. The circuit does not react if the identified barrier is too far away. The GPS system on the stick can be used anywhere. The Raspberry Pi 3 will vibrate as a warning if the detected obstacles are within a safe distance. The stick also has a capability that lets the user feel how much light is in a certain area. The blind individual can locate the stick without any difficulty. A remote is fitted with a button for this function. The stick's buzzer can be activated via remote control, making it easier for the blind person to locate it. In an emergency, a GPS module can be used to get to a certain location and contact a specific person by text message. The advanced blind stick also features a tripod support at its base, allowing the visually impaired to extend the stick and unfold it into a seat. The hardware of the system consists of a microcontroller and various sensors, including a proximity sensor and a ping sonar sensor. The stick's handle has been redesigned to fold out into a flat seating surface when not in use.

Downloads

Download data is not yet available.

References

1. C. Gearhart, A. Herold, B. Self, C Birdsong, L Silvovsky, Use of ultrasonic sensors in the advancement of an Electronic Travel Aid, Sensors Applications Symposium, 2009, SAS 2009, IEE, pp.275-280, 17-19 Feb.
2. Hashino, S.; Ghurchian, R.; A visually impaired direction framework for road intersections dependent on ultrasonic sensors. Data and Automation (ICIA), 2010 IEEE International Conference on June 2010.
3. J. M. Benjamine, N. An Ali, and A. F. Schepis, a laser stick for the visually impaired, continuing of the San Diego Biomedical Symposium, 1973, Vol. 12, pp 53-57.
4. Johan Borenstein and Yoram Koren, The Guide Cane-A Computerized Travel Guide For The Active Guidance For The Blind Pedestrians, procedures of the IEEE International Conference on Robotics and Automation, Albuquerque, 1997, page 1283-1288, April 21-27.
5. V. Subba Rao, “Design and implementation of a low-cost obstacle avoiding uav,” J. Mech. Contin. Math. Sci., vol. 14, no. 6, 2019.
6. Prince, Ananda Shankar Hati , Prasun Chakrabarti , Jemal Hussein , Ng Wee Keong , "Development of Energy Efficient Drive for Ventilation System using Recurrent Neural Network" , Neural Computing and Applications , 33 : 8659 , 2021.
7. Ashish Kumar Sinha, Ananda Shankar Hati , Mohamed Benbouzid , Prasun Chakrabarti , “ANN-based Pattern Recognition for Induction Motor Broken Rotor Bar Monitoring under Supply Frequency Regulation”, Machines , 9(5):87, 2021.
8. Chakrabarti P., Bhuyan B., Chaudhuri A. and Bhunia C.T., “A novel approach towards realizing optimum data transfer and Automatic Variable Key(AVK)” , International Journal of Computer Science and Network Security, 8(5), pp.241-250, 2008.
9. Chakrabarti P. , Goswami P.S., “Approach towards realizing resource mining and secured information transfer”, International Journal of Computer Science and Network Security, 8(7), pp.345-350, 2008.
10. Chakrabarti P., Choudhury A., Naik N. , Bhunia C.T., “Key generation in the light of mining and fuzzy rule”, International Journal of Computer Science and Network Security, 8(9), pp.332-337, 2008.
11. Chakrabarti P., De S.K., Sikdar S.C., “Statistical Quantification of Gain Analysis in Strategic Management” , International Journal of Computer Science and Network Security,9(11), pp.315-318, 2009.
12. Chakrabarti P. , Basu J.K. , Kim T.H., “Business Planning in the light of Neuro-fuzzy and Predictive Forecasting”, Communications in Computer and Information Science , 123, pp.283-290, 2010.
13. Prasad A. , Chakrabarti P., “Extending Access Management to maintain audit logs in cloud computing", International Journal of Advanced Computer Science and Applications ,5(3),pp.144-147, 2014.
14. Sharma A.K., Panwar A., Chakrabarti P. ,Viswakarma S., “Categorization of ICMR Using Feature Extraction Strategy and MIR with Ensemble Learning”, Procedia Computer Science, 57,pp.686-694,2015.
15. Patidar H. , Chakrabarti P., “A Novel Edge Cover based Graph Coloring Algorithm”, International Journal of Advanced Computer Science and Applications , 8(5),pp.279-286,2017.
16. Patidar H., Chakrabarti P., Ghosh A., “Parallel Computing Aspects in Improved Edge Cover based Graph Coloring Algorithm”, Indian Journal of Science and Technology ,10(25),pp.1-9,2017.
17. Tiwari M., Chakrabarti P, Chakrabarti T., “Novel work of diagnosis in liver cancer using Tree classifier on liver cancer dataset ( BUPA liver disorder )” , Communications in Computer and Information Science , 837, pp.155-160, 2018.
18. Verma K., Srivastava P. , Chakrabarti P., “Exploring structure oriented feature tag weighting algorithm for web documents identification”, Communications in Computer and Information Science ,837, pp.169-180, 2018.
19. Tiwari M., Chakrabarti P , Chakrabarti T., “Performance analysis and error evaluation towards the liver cancer diagnosis using lazy classifiers for ILPD”, Communications in Computer and Information Science , 837, pp.161-168,2018.
20. Patidar H. , Chakrabarti P., “A Tree-based Graphs Coloring Algorithm Using Independent Set”, Advances in Intelligent Systems and Computing, 714, pp. 537-546, 2019.
21. Chakrabarti P., Satpathy B., Bane S., Chakrabarti T., Chaudhuri N.S. , Siano P., “Business forecasting in the light of statistical approaches and machine learning classifiers”, Communications in Computer and Information Science , 1045, pp.13-21, 2019.
22. Shah K., Laxkar P. , Chakrabarti P., “A hypothesis on ideal Artificial Intelligence and associated wrong implications”, Advances in Intelligent Systems and Computing, 989, pp.283-294, 2020.
23. Kothi N., Laxkar P. Jain A. , Chakrabarti P., “Ledger based sorting algorithm”, Advances in Intelligent Systems and Computing, 989, pp. 37-46, 2020.
24. Chakrabarti P. ,Chakrabarti T., Sharma M . , Atre D, Pai K.B., “Quantification of Thought Analysis of Alcohol-addicted persons and memory loss of patients suffering from stage-4 liver cancer”, Advances in Intelligent Systems and Computing, 1053, pp.1099-1105, 2020.
25. Chakrabarti P., Bane S.,Satpathy B.,Goh M, Datta B N , Chakrabarti T., “Compound Poisson Process and its Applications in Business”, Lecture Notes in Electrical Engineering, 601, pp.678-685,2020.
26. Chakrabarti P., Chakrabarti T., Satpathy B., SenGupta I . Ware J A., “Analysis of strategic market management in the light of stochastic processes, recurrence relation, Abelian group and expectation”, Advances in Artificial Intelligence and Data Engineering, 1133 , pp.701-710, 2020.
27. Priyadarshi N., Bhoi A.K., Sharma A.K., Mallick P.K. , Chakrabarti P., “An efficient fuzzy logic control-based soft computing technique for grid-tied photovoltaic system”, Advances in Intelligent Systems and Computing, 1040,pp.131-140,2020.
28. Priyadarshi N., Bhoi A.K., Sahana S.K., Mallick P.K. , Chakrabarti P., Performance enhancement using novel soft computing AFLC approach for PV power system”, Advances in Intelligent Systems and Computing, 1040, pp.439-448,2020.
29. Magare A., Lamin M., Chakrabarti P., “Inherent Mapping Analysis of Agile Development Methodology through Design Thinking”, Lecture Notes on Data Engineering and Communications Engineering, 52, pp.527-534,2020.
30. Ali Y., Shreemali J., Chakrabarti T., Chakrabarti P. , Poddar S., “Prediction of Reaction Parameters on Reaction Kinetics for Treatment of Industrial Wastewater: A Machine Learning Perspective”, Materials Today :Proceedings, 2020.
31. Chakrabarti P., Satpathy B., Bane S., Chakrabarti T., Poddar S., “Business gain forecasting in Materials Industry - A linear dependency, exponential growth, moving average, neuro-associator and compound Poisson process perspective”, Materials Today: Proceedings, 2020.
32. Shameem, A., Ramachandran, K. K., Sharma, A., Singh, R., Selvaraj, F. J., & Manoharan, G. (2023). The rising importance of AI in boosting the efficiency of online advertising in developing countries. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
33. Ramachandran, K. K., Lakshmi, K. K., Singh, J., Prusty, A., Panduro-Ramirez, J., & Lourens, M. (2023). The impact of the metaverse on organizational culture and Communication. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
34. Mittal, A., Ramachandran, K. K., Lakshmi, K. K., Hasbullah, N. N., Ravichand, M., & Lourens, M. (2023). Human-cantered Artificial Intelligence in Education, present and future opportunities. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
35. Raman, R., Joshi, K., Saravana Kumar, G., Ramachandran, K. K., Bothe, S., & Trivedi, S. (2023). Benefits of implementing an ad-hoc network for hospitality businesses with IOT smart devices. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
36. Ramachandran, K. K., K. K, K., Semwal, A., Singh, S. P., Al-Hilali, A. A., & Alazzam, M. B. (2023). AI-powered decision making in management: A review and Future Directions. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
37. Ramachandran, K. K., Lamba, F. L., Rawat, R., Gehlot, A., Raju, A. M., & Ponnusamy, R. (2023). An investigation of block chains for attaining Sustainable Society. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
38. Saravana Kumar, G., Ramachandran, K. K., Sharma, S., Ramesh, R., Qureshi, K., & Ganesh, K. (2023). Ai-Assisted Resource Allocation for improved business efficiency and profitability. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
39. Ramachandran, K. K., K, K. K., Singh, K., R, R., Ganesh, C., & Kumar, S. (2023). Machine learning approaches for statistical analysis of customer satisfaction in Service Management. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
40. Ramachandran, K. K., K, K. K., Semwal, A., Shravan, M., Srinivas, K., & Lourens, M. (2023). Ai-supported Decision Making System. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
41. Nagarjuna, B., Ramachandran, K. K., Nautiyal, A., Singh, S. P., Nayak, B. B., & Ganguly, P. (2023). Sustainability in the field of supply chain using technolgy: A Deep Review. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
42. H. Lakhani, D. Undaviya, H. Dave, S. Degadwala, and D. Vyas, “PET-MRI Sequence Fusion using Convolution Neural Network,” in 2023 International Conference on Inventive Computation Technologies (ICICT), 2023, pp. 317–321.
43. F. Ahamad, D. K. Lobiyal, S. Degadwala, and D. Vyas, “Inspecting and Finding Faults in Railway Tracks Using Wireless Sensor Networks,” in 2023 International Conference on Inventive Computation Technologies (ICICT), 2023, pp. 1241–1245.
44. D. Rathod, K. Patel, A. J. Goswami, S. Degadwala, and D. Vyas, “Exploring Drug Sentiment Analysis with Machine Learning Techniques,” in 2023 International Conference on Inventive Computation Technologies (ICICT), 2023, pp. 9–12.
45. C. H. Patel, D. Undaviya, H. Dave, S. Degadwala, and D. Vyas, “EfficientNetB0 for Brain Stroke Classification on Computed Tomography Scan,” in 2023 2nd International Conference on Applied Artificial Intelligence and Computing (ICAAIC), 2023, pp. 713–718.
46. V. Desai, S. Degadwala, and D. Vyas, “Multi-Categories Vehicle Detection For Urban Traffic Management,” in 2023 Second International Conference on Electronics and Renewable Systems (ICEARS), 2023, pp. 1486–1490.
47. D. Vyas and V. V Kapadia, “Evaluation of Adversarial Attacks and Detection on Transfer Learning Model,” in 2023 7th International Conference on Computing Methodologies and Communication (ICCMC), 2023, pp. 1116–1124.
48. D. D. Pandya, S. K. Patel, A. H. Qureshi, A. J. Goswami, S. Degadwala, and D. Vyas, “Multi-Class Classification of Vector Borne Diseases using Convolution Neural Network,” in 2023 2nd International Conference on Applied Artificial Intelligence and Computing (ICAAIC), 2023, pp. 1–8.
49. D. D. Pandya, A. K. Patel, J. M. Purohit, M. N. Bhuptani, S. Degadwala, and D. Vyas, “Forecasting Number of Indian Startups using Supervised Learning Regression Models,” in 2023 International Conference on Inventive Computation Technologies (ICICT), 2023, pp. 948–952.
50. S. Degadwala, D. Vyas, D. D. Pandya, and H. Dave, “Multi-Class Pneumonia Classification Using Transfer Deep Learning Methods,” in 2023 Third International Conference on Artificial Intelligence and Smart Energy (ICAIS), 2023, pp. 559–563.
51. D. D. Pandya, A. Jadeja, S. Degadwala, and D. Vyas, “Diagnostic Criteria for Depression based on Both Static and Dynamic Visual Features,” in 2023 International Conference on Intelligent Data Communication Technologies and Internet of Things (IDCIoT), 2023, pp. 635–639.
52. M. M. Kirmani and A. Wahid, “Revised use case point (re-UCP) model for software effort estimation,” International Journal of Advanced Computer Science and Applications, vol. 6, no. 3, 2015.
53. M. M. Kirmani and A. Wahid, “Impact of modification made in re-UCP on software effort estimation,” Journal of Software Engineering and Applications, vol. 08, no. 06, pp. 276–289, 2015.
54. Syed Immamul Ansarullah, Syed Mohsin Saif, Syed Abdul Basit Andrabi, Sajadul Hassan Kumhar, Mudasir M. Kirmani, Dr. Pradeep Kumar, "An Intelligent and Reliable Hyperparameter Optimization Machine Learning Model for Early Heart Disease Assessment Using Imperative Risk Attributes", Journal of Healthcare Engineering, vol. 2022, Article ID 9882288, 12 pages, 2022.
55. Syed Immamul Ansarullah, Syed Mohsin Saif, Pradeep Kumar, Mudasir Manzoor Kirmani, "Significance of Visible Non-Invasive Risk Attributes for the Initial Prediction of Heart Disease Using Different Machine Learning Techniques", Computational Intelligence and Neuroscience, vol. 2022, Article ID 9580896, 12 pages, 2022.
56. K. Venkata Ramana and K. Venugopal Rao, “Investigation of source code mining using novel code mining parameter matrix: Recent state of art,” International Journal of Latest Trends in Engineering and Technology, vol. 7, no. 3, 2016.
57. K. Venkata Ramana and Dr. K. Venugopla Rao, “A novel automatic source code defects detection framework and evaluation on popular java open source APIs,” International Journal of Advanced Research in Computer Science, vol. 8, no. 5, pp. 1741–1746, 2017.
58. K. Venkata Ramana and K. Venugopala Rao, “An evaluation of popular code mining frameworks through severity based defect rule,” International Journal of Emerging Technology and Advanced Engineering, Vol.7, No.6, PP.375-380.
59. K. Venkata Ramana and Dr. K. Venugopal Rao, “A severity based source code defect finding framework and improvements over methods,” International Journal of Applied Engineering Research Vol.7, No.3, PP.15202-15214.
60. J. Aswini, B. Yamini, K. Venkata Ramana, and J. Jegan Amarnath, “An efficient liver disease prediction using mask-regional convolutional neural network and pelican optimization algorithm,” IETE J. Res., pp. 1–12, 2023.
61. Umapathy VR, Natarajan PM, Swamikannu B. Comprehensive Review on Development of Early Diagnostics on Oral Cancer with a Special Focus on Biomarkers. Applied Sciences. 2022; 12(10):4926.
62. Vidhya Rekha U, Prabhu MN, Bhuminathan. S. Review on Anticancer properties of Piperine in Oral cancer: Therapeutic Perspectives. Research Journal of Pharmacy and Technology. 2022; 15(7):3338-2.
63. Natarajan PM, Rekha V, Murali A, Swamikannu B. Newer congeners of doxycycline – do they hold promise for periodontal therapy?. Archives of Medical Science - Civilization Diseases. 2022;7(1):16-23.
64. Bose BB, Natarajan PM, Kannan AL, et al. Evaluation of Block Allograft Efficacy in Lateral Alveolar Ridge Augmentation. J Contemp Dent Pract 2022;23(8):807–812.
65. Pei J, Palanisamy CP, Alugoju P, Anthikapalli NVA, Natarajan PM, Umapathy VR, Swamikannu B, Jayaraman S, Rajagopal P, Poompradub S. A Comprehensive Review on Bio-Based Materials for Chronic Diabetic Wounds. Molecules. 2023; 28(2):604.
66. Umapathy VR, Natarajan PM, Swamikannu B. Review Insights on Salivary Proteomics Biomarkers in Oral Cancer Detection and Diagnosis. Molecules. 2023; 28(13):5283.
67. Umapathy VR, Natarajan PM, Swamikannu B. Review of the Role of Nanotechnology in Overcoming the Challenges Faced in Oral Cancer Diagnosis and Treatment. Molecules. 2023; 28(14):5395.
68. Maashi, M., Alamro, H., Mohsen, H, Negm, N., Mohammed, G., Ahmed, N., Ibrahim, S. and Alsaid, M. Modelling of Reptile Search Algorithm with Deep Learning Approach for Copy Move Image Forgery Detection (2023), IEEE Access.
69. Maashi, M,Al-Hagery,M., Rizwanullah, M & Osman, A.,(2023 (Automated Gesture Recognition Using African Vulture Optimization with Deep Learning for Visually Impaired People on Sensory Modality Data, Journal of Disability Research, 1-12.
70. Maashi, M., Ali, Y., Motwakel, A., Aziz, A., Hamza, A. and Abdelmageed, A. (2023) Anas Platyrhynchos Optimizer with Deep Transfer Learning based Gastric Cancer Classification on Endoscopic Images, Electronic Research Archive, 31(6) 3200-3217.
71. Alshareef, H, and Maashi. M, (2022). Application of Multi-Objective Hyper-Heuristics to Solve the Multi-Objective Software Module Clustering Problem, Applied Sciences, 12(1).5649.
72. Maashi, M. (2022). A Comprehensive Review of Software Testing Methodologies Based on Search-based Software Engineering, Webology ,19( 2) 5716- 5728.
73. Ben Zayed, H, and Maashi, M. (2021) Optimizing the Software Testing Problem Using Search-Based Software Engineering Techniques, Intelligent Automation & Soft Computing .29(1),307-317.
74. Albalawi. F., and Maashi, M. (2021) A Methodology for Selection and Optimization the Software Development Life Cycles based on Genetic Algorithm, Intelligent Automation & Soft Computing. ,28(1), 39-52.
75. Maashi, M., Almanea, G., Alqurashi, R., Alharbi, N., Alharkan, R., Alsadhan, F. (2019) A greedy linear heuristic to solve Group-Project allocation problem: A case study at SWE-KSU”. International Conference on Communication, Management and Information Technology- ICCMIT’19, Vienna, Austria, March.
76. Maashi, M., Kendall, G., and Özcan, E. (2015). Choice function based hyper-heuristics for multi-objective optimization, Applied Soft Computing,28, 312-326.
77. Maashi, M., Özcan, E. and Kendall, G. (2014). “A multi-objective hyper-heuristic based on choice function”, Expert Systems with Applications, 41(9) 4475-4493.
78. MD.Mobin Akhtar, Abdallah Saleh Ali Shatat, Shabi Alam Hameed Ahamad, Sara Dilshad & Faizan Samdani,”Optimized cascaded CNN for intelligent rainfall prediction model: a research towards Statistic based machine learning,” Theoretical Issues in Ergonomics Science, Taylor & Francis Volume 24,no. 5 p. 564 2022.
79. Md. Mobin Akhtar, Abu Sarwar Zamani, Shakir Khan, Abdallah Saleh Ali Shatat, Faizan Samdani, Sara Dilshad. “Stock market prediction based on statistical data using machine learning algorithms”, Journal of King Saud University – Science, Vol.34, no.2, 2022.
80. MD. Mobin Akhtar, Raid Saleh Ali, Abdallah Saleh Ali Shatat, Shatat,Shabi Alam Hameed, Sakher (M.A) Ibrahim Alnajdawi. “IoMT-based smart healthcare monitoring system using adaptive wavelet entropy deep feature fusion and improved RNN”, Multimedia Tools and Applications, Springer Nature.
81. MD. Mobin Akhtar, Danish Ahamad, Abdallah Saleh Ali Shatat & Alameen, Eltoum M. Abdalrahman.”Enhanced heuristic algorithm-based energy-aware resource optimization for cooperative IoT”, International Journal of Computers and Applications, Taylor & Francis, Vol.44,no.10, 2022.
82. MD Mobin Akhtar, Danish Ahamad, Alameen Eltoum M. Abdalrahman, Abdallah Saleh Ali Shatat,| Ahmad Saleh Ali Shatat, ” A novel hybrid meta-heuristic concept for green communication in IoT networks: An intelligent clustering model”, International journal communication systems, wiley, Vol.35,no.6,2021.
83. Abu Sarwar Zamani, Md. Mobin Akhtar, Abdallah Saleh Ali Shatat, Rashid Ayub, Irfan Ahmad Khan, Faizan Samdani, “Cloud Network Design and Requirements for the Virtualization System for IoT Networks”, IJCSNS International Journal of Computer Science and Network Security. Vol.22,no.11,2022.
84. Alarood, A. A., Faheem, M., Al‐Khasawneh, M. A., Alzahrani, A. I., & Alshdadi, A. A. (2023). Secure medical image transmission using deep neural network in e‐health applications. Healthcare Technology Letters, 10(4), 87-98.
85. Markkandeyan, S., Gupta, S., Narayanan, G. V., Reddy, M. J., Al-Khasawneh, M. A., Ishrat, M., & Kiran, A. (2023). Deep learning based semantic segmentation approach for automatic detection of brain tumor. International Journal of Computers Communications & Control, 18(4).
86. Al-Khasawneh, M. A., Alzahrani, A., & Alarood, A. (2023). Alzheimer’s Disease Diagnosis Using MRI Images. In Data Analysis for Neurodegenerative Disorders (pp. 195-212). Singapore: Springer Nature Singapore.
87. Al-Khasawneh, M. A., Alzahrani, A., & Alarood, A. (2023). An Artificial Intelligence Based Effective Diagnosis of Parkinson Disease Using EEG Signal. In Data Analysis for Neurodegenerative Disorders (pp. 239-251). Singapore: Springer Nature Singapore.
88. Al-Khasawneh, M. A., Faheem, M., Aldhahri, E. A., Alzahrani, A., & Alarood, A. A. (2023). A MapReduce Based Approach for Secure Batch Satellite Image Encryption. IEEE Access.
89. K. Peddireddy, "Streamlining Enterprise Data Processing, Reporting and Realtime Alerting using Apache Kafka," 2023 11th International Symposium on Digital Forensics and Security (ISDFS), Chattanooga, TN, USA, 2023, pp. 1-4.
90. Kiran Peddireddy. Kafka-based Architecture in Building Data Lakes for Real-time Data Streams. International Journal of Computer Applications 185(9):1-3, May 2023.
91. Anitha Peddireddy, Kiran Peddireddy, "Next-Gen CRM Sales and Lead Generation with AI," International Journal of Computer Trends and Technology, vol. 71, no. 3, pp. 21-26, 2023.
92. Peddireddy, K., and D. Banga. "Enhancing Customer Experience through Kafka Data Steams for Driven Machine Learning for Complaint Management." International Journal of Computer Trends and Technology 71.3 (2023): 7-13.
93. K Peddireddy "Effective Usage of Machine Learning in Aero Engine test data using IoT based data driven predictive analysis ", IJARCCCE International Journal of Advanced Research in Computer and Communication Engineering, vol. 12, no. 10, pp. 18-25, 2023.
94. S. Rangineni and D. Marupaka, “Data Mining Techniques Appropriate for the Evaluation of Procedure Information,” International Journal of Management, IT & Engineering, vol. 13, no. 9, pp. 12–25, Sep. 2023.
95. S. Rangineni, “An Analysis of Data Quality Requirements for Machine Learning Development Pipelines Frameworks,” International Journal of Computer Trends and Technology, vol. 71, no. 9, pp. 16–27, 2023.
96. S. Agarwal, “Unleashing the Power of Data: Enhancing Physician Outreach through Machine Learning,” International Research Journal of Engineering and Technology, vol. 10, no. 8, pp. 717–725, Aug. 2023.
97. S. Agarwal, “An Intelligent Machine Learning Approach for Fraud Detection in Medical Claim Insurance: A Comprehensive Study,” Scholars Journal of Engineering and Technology, vol. 11, no. 9, pp. 191–200, Sep. 2023.
98. Bhanushali, K. Sivagnanam, K. Singh, B. K. Mittapally, L. T. Reddi, and P. Bhanushali, “Analysis of Breast Cancer Prediction Using Multiple Machine Learning Methodologies”, Int J Intell Syst Appl Eng, vol. 11, no. 3, pp. 1077–1084, Jul. 2023.
99. S. Parate, H. P. Josyula, and L. T. Reddi, “Digital Identity Verification: Transforming Kyc Processes In Banking Through Advanced Technology And Enhanced Security Measures,” International Research Journal of Modernization in Engineering Technology and Science, vol. 5, no. 9, pp. 128–137, Sep. 2023.
100. K. Peddireddy and D. Banga, “Enhancing Customer Experience through Kafka Data Steams for Driven Machine Learning for Complaint Management,” International Journal of Computer Trends and Technology, vol. 71, no. 3, pp. 7-13, 2023.
101. K. Peddireddy, “Kafka-based Architecture in Building Data Lakes for Real-time Data Streams,” International Journal of Computer Applications, vol. 185, no. 9, pp. 1-3, May 2023.
102. R. Kandepu, “IBM FileNet P8: Evolving Traditional ECM Workflows with AI and Intelligent Automation,” International Journal of Innovative Analyses and Emerging Technology, vol. 3, no. 9, pp. 23–30, Sep. 2023.
103. R. Kandepu, “Leveraging FileNet Technology for Enhanced Efficiency and Security in Banking and Insurance Applications and its future with Artificial Intelligence (AI) and Machine Learning,” International Journal of Advanced Research in Computer and Communication Engineering, vol. 12, no. 8, pp. 20–26, Aug. 2023.
104. Rina Bora, Deepa Parasar, Shrikant Charhate , A detection of tomato plant diseases using deep learning MNDLNN classifier, , Signal, Image and Video Processing, April 2023.
Published
2023-11-06
How to Cite
S. Suman Rajest, R. Regin, Shynu T, & Steffi. R. (2023). Using Voice Guidance, an Intelligent Walking Assistance Mechanism for the Blind. Central Asian Journal of Theoretical and Applied Science, 4(11), 41-63. Retrieved from https://cajotas.centralasianstudies.org/index.php/CAJOTAS/article/view/1335