Deep Trekker is leading the AI ROV Ship Modeling and Detection Project that was introduced on September 12, 2024, at the ALL IN Conference.
The initiative harnesses remotely operated vehicle (ROV) technology integrated with advanced AI to redefine ship hull inspections for greater precision and efficiency.
The project brings together Canada’s Ocean Supercluster (OSC), Qii.AI, The Department of National Defence, Kongsberg Discovery Canada Limited, and ABS Global Canada.
At the core of this project are Deep Trekker’s ROVs, designed with ultra high-resolution 4K cameras, multibeam imaging sonar, and robust sensor arrays, which allow for detailed and accurate data collection in real time.
The use of Qii.AI’s software plays a pivotal role in processing the data. By leveraging sophisticated machine learning algorithms, the software analyzes sonar and video footage to detect structural defects, corrosion, or biofouling, as well as any other critical features.
Inspection results will be consolidated into a detailed data dashboard, which includes 3D models, video, sonar clips, and high-resolution images. This will offer a thorough assessment tool by providing inspectors and engineers with a comprehensive visualization of the hull’s condition.
Advanced Sensor Integration
Key to the system’s performance is its integration of advanced positioning sensors, which enable precision navigation even in areas with poor visibility or difficult underwater conditions.
This positioning capability is essential for ensuring the ROV maintains a stable course along the hull, minimizing drift and improving data accuracy.
The integration of ROV GPS, USBL, and dead reckoning technology allows for continued tracking when external GPS signals are lost, ensuring consistent operation in confined or murky waters.
Real-Time Data Processing and Visualization
Deep Trekker’s ROVs provide real-time data to operators, reducing the need for lengthy post-inspection analysis.
The Qii.AI software integrates with the ROV to automatically analyze the data while the inspection is ongoing. The software’s ability to flag issues in real-time streamlines the inspection process, helping operators make informed decisions quickly.
The project also supports the creation of a comprehensive inspection dashboard, which allows users to access, store, and share 3D models, sonar data, and annotated imagery with ease.
Industry-Wide Benefits
With a project value of $8,108,000, and a $3,405,306 contribution from Canada’s Ocean Supercluster, the AI ROV Ship Modeling and Detection Project stands to revolutionize the maritime industry’s approach to hull inspections.
It not only enhances the safety and operational reliability of ships but also supports environmental stewardship by identifying issues before they escalate.
Beyond technological advancements, the project is expected to improve safety standards, support and promote environmental responsibility, and enhance economic outcomes in Canada’s maritime industry by driving job creation and reinforcing Canada’s proficiency in AI-driven ocean technologies.
The technology reduces inspection times, lowers costs, and improves the accuracy of inspections compared to traditional diver-led methods, which are labor-intensive and subject to human error.
Kendra MacDonald, CEO of Canada’s Ocean Supercluster, commented, “We are proud to announce the AI ROV Ship Modeling and Detection Project led by Deep Trekker together with partners across the country. By co-investing with the industry in the important advancement of AI in the ocean sector, we are also contributing to advancements in ship modeling and detection as well as increased safety, environmental protection, economic efficiency, and job creation.”
Sam Macdonald, President of Deep Trekker, added, “This project represents a significant leap in our ROV capabilities. Our vehicles are engineered to perform in the harshest maritime environments, and by integrating AI, we can now provide highly detailed inspections that were previously unattainable. Operators will have access to detailed visual outputs such as 3D models, sonar clips, and annotated high-resolution images, all of which can be processed and analyzed immediately.”
The Honourable François-Philippe Champagne, Minister of Innovation, Science and Industry, stated, “Projects like this demonstrate how the Ocean Cluster is working with partners to advance competitiveness in the ocean industry through the use of innovative and responsible technologies in AI. AI is one of the greatest technological transformations of our age, and through advances like this, Canada is leading the way.”