Dual Stream Encoder–Decoder Architecture with Feature Fusion Model for Underwater Object Detection
Mehvish Nissar,
Amit Kumar Mishra () and
Badri Narayan Subudhi
Additional contact information
Mehvish Nissar: Department of Electrical Engineering, Indian Institute of Technology Jammu, Jammu 181221, India
Amit Kumar Mishra: Faculty of Business and Physical Sciences, Aberystwyth University, Aberystwyth SY23 3FL, UK
Badri Narayan Subudhi: Department of Electrical Engineering, Indian Institute of Technology Jammu, Jammu 181221, India
Mathematics, 2024, vol. 12, issue 20, 1-22
Abstract:
Underwater surveillance is an imminent and fascinating exploratory domain, particularly in monitoring aquatic ecosystems. This field offers valuable insights into underwater behavior and activities, which have broad applications across various domains. Specifically, underwater surveillance involves detecting and tracking moving objects within aquatic environments. However, the complex properties of water make object detection a challenging task. Background subtraction is a commonly employed technique for detecting local changes in video scenes by segmenting images into the background and foreground to isolate the object of interest. Within this context, we propose an innovative dual-stream encoder–decoder framework based on the VGG-16 and ResNet-50 models for detecting moving objects in underwater frames. The network includes a feature fusion module that effectively extracts multiple-level features. Using a limited set of images and performing training in an end-to-end manner, the proposed framework yields accurate results without post-processing. The efficacy of the proposed technique is confirmed through visual and quantitative comparisons with eight cutting-edge methods using two standard databases. The first one employed in our experiments is the Underwater Change Detection Dataset, which includes five challenges, each challenge comprising approximately 1000 frames. The categories in this dataset were recorded under various underwater conditions. The second dataset used for practical analysis is the Fish4Knowledge dataset, where we considered five challenges. Each category, recorded in different aquatic settings, contains a varying number of frames, typically exceeding 1000 per category. Our proposed method surpasses all methods used for comparison by attaining an average F-measure of 0.98 on the Underwater Change Detection Dataset and 0.89 on the Fish4Knowledge dataset.
Keywords: underwater surveillance; object detection; deep learning; CNN; background subtraction; video surveillance; foreground segmentation (search for similar items in EconPapers)
JEL-codes: C (search for similar items in EconPapers)
Date: 2024
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