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dc.contributor.advisorMustafa, Mohamad
dc.contributor.authorPatil, Ravindra Rajaram
dc.date.accessioned2024-02-14T08:37:31Z
dc.date.available2024-02-14T08:37:31Z
dc.date.issued2024-02-28
dc.description.abstract<p>Artificial intelligence (AI) encompasses a range of techniques that enable machines to perceive, learn, and make intelligent decisions and it has emerged as transformative technology in many applications. This thesis presents the development of an AI model, focusing on the significance of the primary representative dataset and the effectiveness of transfer learning and fine-tuning techniques for model development. The research demonstrates the affirmative impact of methodical approaches on the accuracy, efficiency, and robustness of AI systems. Moreover, the application of the detection model is demonstrated in wastewater management i.e., for urban wastewater systems, thus underpinning the application of AI to real world scenarios. <p>The research approach followed in this work includes critical literature review, site surveys, intensive experimentations, and robust validation processes which allowed to identify and address existing gaps and limitations and helped to develop AI detection models for the selected application. <p>Deep neural networks, a prominent AI technique, chosen for developing AI model in this work has exceptional capabilities in handling complex tasks by learning from vast amounts of data. But the availability of high-quality and representative datasets to effectively train deep neural network models is critical. The comprehensive and diverse datasets provide effective training examples, reduce biases, and enhance the detection models’ ability to handle complex inputs. <p>In the present case, the representative dataset was not available. Therefore, critical multiclass representative image dataset was generated in the laboratory with unparalleled authenticity using model sewer network and named as Sewer-Blockages Imagery Recognition Dataset (S-BIRD) which served as a benchmark for real-time detection and recognition models. The research also addressed the need for dataset curation, data integrity, and biases. <p>Using S-BIRD, deep neural object detection models were developed through transfer learning and fine-tuning. Inductive transfer learning technique used for development of models, improved convergence, training times, and performance on target detection tasks, enabling adaptation to different domains with minimal additional training. Transfer learning parameters were optimised for desired outcomes. The effectiveness of the developed model for detecting sewer blockages was evaluated by performance metrics. The model achieved high accuracy rate of 96.30% at an IoU of 0.5 in detecting different blockages validating efficacy of dataset and the applicability of the techniques used for developing the model. <p>AI detector trained on the S-BIRD dataset was then imported on advanced GPU-based single-board computer that formed an embedded vision-based automation system for the detecting sewer blockages. The output of the present research contributes to the advancement of AI and its application in wastewater management. The knowledge and findings acquired from this research form a strong foundation for future explorations and advancements in the AI field and facilitating its widespread implementation across various domains. <p>For future research work integration of AI techniques like semantic segmentation, instance segmentation and panoptic segmentation, can be investigated to reinforce detection tasks. To enhance model robustness, expansion of representative datasets coupled with continuous learning approaches is recommended. For further practical application of the outcome of the thesis, collaboration with industry will yield advancements in AI innovation.en_US
dc.description.doctoraltypeph.d.en_US
dc.description.popularabstractArtificial intelligence (AI) is revolutionizing the way we solve complex problems, and in my PhD thesis, I've focused on harnessing the power of AI to address a critical issue: sewer blockages in urban wastewater systems. This work has far-reaching implications for improving wastewater management in cities and beyond. Why is this important? Sewer blockages are a common and costly problem in urban areas. They can lead to sewage backups, environmental pollution, and significant maintenance expenses. Traditional methods for detecting and addressing these blockages are often slow and reactive. In contrast, AI offers a proactive and efficient solution. Creating the Right Dataset: S-BIRD One of the key challenges in AI is having high-quality data to train models effectively. In my research, I tackled this problem head-on by creating the Sewer-Blockages Imagery Recognition Dataset (S-BIRD). This dataset captures real-world sewer blockage scenarios with unprecedented authenticity. It became the foundation for developing accurate and robust AI models. Training AI Models I used deep neural networks, a cutting-edge AI technique, to develop detection models for sewer blockages. But to make these models work effectively, they needed to learn from diverse and representative data. S-BIRD played a crucial role in providing this data. The models were trained using transfer learning and fine-tuning techniques, allowing them to adapt to different situations with minimal additional training. Impressive Results The results of our experiments were remarkable. Our AI models achieved a high accuracy rate of 96.30% in detecting various types of sewer blockages. This demonstrated not only the effectiveness of the S-BIRD dataset but also the applicability of the techniques used for developing the models. Real-World Application But AI is not just about algorithms; it's about solving real-world problems. We took our AI detector, trained on the S-BIRD dataset, and embedded it in a vision-based automation system. This system can now detect sewer blockages in real-time, making urban wastewater management more efficient and reliable. Looking Ahead There are exciting avenues for further exploration: • We can explore additional AI techniques like semantic, instance or panoptic segmentation to enhance detection tasks further. • Expanding the dataset with more classes and challenging scenarios can make our models even more effective. • Collaboration with industry partners can help implement these AI-driven solutions on a larger scale, benefiting cities worldwide. In conclusion, my PhD thesis demonstrates how AI can revolutionize wastewater management by addressing sewer blockages efficiently. With the S-BIRD dataset, advanced AI models, and real-time detection systems, we are paving the way for a cleaner and more sustainable urban environment. This work is not only significant for the field of AI but also for improving the quality of life in our cities.en_US
dc.description.sponsorshipI am grateful to SPRING, a Horizon 2020 EU-India Project for providing funding to my PhD studies through Grant No. GOI No. BT/IN/EU-WR/60/SP/2018 and No. 821423. The financial support from PEERS (UTF 2020/10131) for my research-stay at UiT- The Arctic University of Norway, Narvik, Norway is acknowledged.en_US
dc.identifier.isbn978-82-7823-255-2
dc.identifier.issn978-82-7823-256-9
dc.identifier.urihttps://hdl.handle.net/10037/32925
dc.language.isoengen_US
dc.publisherUiT Norges arktiske universiteten_US
dc.publisherUiT The Arctic University of Norwayen_US
dc.relation.haspart<p>Paper 1: Patil, R.R., Calay, R.K., Mustafa, M.Y. & Ansari, S.M. (2023). AI-Driven High-Precision Model for Blockage Detection in Urban Wastewater Systems. <i>Electronics, 12</i>(17), 3606. Also available in Munin at <a href=https://hdl.handle.net/10037/30516> https://hdl.handle.net/10037/30516</a>. <p>Paper 2: Patil, R.R., Mustafa, M.Y., Calay, R.K. & Ansari, S.M. (2023). S-BIRD: A Novel Critical Multi-Class Imagery Dataset for Sewer Monitoring and Maintenance Systems. <i>Sensors, 23</i>(6), 2966. Also available in Munin at <a href=https://hdl.handle.net/10037/30546>https://hdl.handle.net/10037/30546</a>. <p>Paper 3: Patil, R.R., Ansari, S.M., Calay, R.K. & Mustafa, M.Y. (2021). Review of the State-of-the-art Sewer Monitoring and Maintenance Systems Pune Municipal Corporation-A Case Study. <i>TEM Journal, 10</i>(4), 1500–1508. Also available in Munin at <a href=https://hdl.handle.net/10037/23759>https://hdl.handle.net/10037/23759</a>.en_US
dc.rights.accessRightsopenAccessen_US
dc.rights.holderCopyright 2024 The Author(s)
dc.subject.courseIDDOKTOR-008
dc.subjectComputer Vision, Object Detection, AI, S-BIRD dataset, Sewer Monitoring, Transfer Learningen_US
dc.titleEnhancing AI Systems through Representative Dataset, Transfer Learning, and Embedded Visionen_US
dc.typeDoctoral thesisen_US
dc.typeDoktorgradsavhandlingen_US


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