TY - GEN
T1 - Underwater Change Detection Using Multiple Sampling-Based Probabilistic Learner and Feature Preservance Discriminator
AU - Nissar, Mehvish
AU - Subudhi, Badri Narayan
AU - Jakhetiya, Vinit
AU - Mishra, Amit Kumar
PY - 2024/10/27
Y1 - 2024/10/27
N2 - Surveillance can be defined as the process of monitoring the behavior and activities of different objects to generate meaningful insights into a video scene. In the context of underwater, surveillance can be elucidated as one of the processes of detecting and tracking the moving objects present in underwater videos. Many methods have been put forth to separate moving objects from underwater environments. Nevertheless, such methods cannot maintain the minute details that are crucial for determining an object’s boundary. This is mainly due to the intricate natural properties of water and some of its characteristics, such as excessive turbidity, scattering, low visibility, etc. In this regard, we put forth an adversarial learning-based end-to-end deep learning architecture to detect underwater moving objects. The proposed architecture uses two modules for underwater object detection. The initial module is a generator comprised of a probabilistic learner which is based on multiple down-sampling and up-sampling modules. Further, the discriminator network is composed of a multi-level feature concatenation module which can perpetuate specifics at distinct levels. The effectiveness of the proposed method is confirmed using two underwater benchmark datasets by contrasting its outcomes with those of eight state-of-the-art methods.
AB - Surveillance can be defined as the process of monitoring the behavior and activities of different objects to generate meaningful insights into a video scene. In the context of underwater, surveillance can be elucidated as one of the processes of detecting and tracking the moving objects present in underwater videos. Many methods have been put forth to separate moving objects from underwater environments. Nevertheless, such methods cannot maintain the minute details that are crucial for determining an object’s boundary. This is mainly due to the intricate natural properties of water and some of its characteristics, such as excessive turbidity, scattering, low visibility, etc. In this regard, we put forth an adversarial learning-based end-to-end deep learning architecture to detect underwater moving objects. The proposed architecture uses two modules for underwater object detection. The initial module is a generator comprised of a probabilistic learner which is based on multiple down-sampling and up-sampling modules. Further, the discriminator network is composed of a multi-level feature concatenation module which can perpetuate specifics at distinct levels. The effectiveness of the proposed method is confirmed using two underwater benchmark datasets by contrasting its outcomes with those of eight state-of-the-art methods.
KW - underwater object detection
KW - deep learning
KW - adversarial learning
KW - multi-level feature-preserving
U2 - 10.1109/icip51287.2024.10647921
DO - 10.1109/icip51287.2024.10647921
M3 - Conference Proceeding (Non-Journal item)
SN - 9798350349405
T3 - IEEE International Conference on Image Processing
SP - 3924
EP - 3930
BT - 2024 IEEE International Conference on Image Processing
PB - IEEE Press
T2 - 2024 IEEE International Conference on Image Processing (ICIP)
Y2 - 27 October 2024 through 30 October 2024
ER -