Faculty Research

AquaAI: Smart Detection Beneath the Waves
The marine environment covering approximately two-thirds of the Earth’s total surface area boasts a wide diversity of objects, thereby necessitating detection of marine objects as a pivotal aspect. Marine Object Detection encompasses a broad range of applications spanning from maritime surveillance to submarine cable detection, underwater pipeline monitoring, underwater oil spill detection. Additionally, MOD plays a crucial role in marine organism detection, underwater trash detection, underwater cultural artifacts, underwater navigation and numerous other applications. Although numerous of methodologies pertaining to general object detection have been suggested over the years but the challenges encountered in detecting marine objects are unique that requires advanced detection methods.
Several methods for MOD have been proposed over a decade, ranging from conventional-based approach to Advance Learning (AL) based approach. Despite of this progress, MOD still remains a challenging task. The complex characteristics of maritime settings poses significant challenges in detecting marine objects. The images captured in marine environments often encounter issues such as haziness, low contrast, color distortion and uneven lightning causing severe degradation in quality of the images.
