Semantic Segmentation in Underwater Ship Inspections: Benchmark and Dataset
Permanent link
https://hdl.handle.net/10037/28006Date
2022-12-23Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
In this article, we present the first large-scale data
set for underwater ship lifecycle inspection, analysis and condition information (LIACI). It contains 1893 images with pixel
annotations for ten object categories: defects, corrosion, paint
peel, marine growth, sea chest gratings, overboard valves, propeller, anodes, bilge keel and ship hull. The images have been
collected during underwater ship inspections and annotated by
human domain experts. We also present a benchmark evaluation
of state-of-the-art semantic segmentation approaches based on
standard performance metrics. Consequently, we propose to use
U-Net with a MobileNetV2 backbone for the segmentation task due
to its balanced tradeoff between performance and computational
efficiency, which is essential if used for real-time evaluation. Also,
we demonstrate its benefits for in-water inspections by providing
quantitative evaluations of the inspection findings. With a variety
of use cases, the proposed segmentation pipeline and the LIACI
data set create new promising opportunities for future research in
underwater ship inspections.
Publisher
IEEECitation
Waszak, Cardaillac, Elvesæter, Rødølen, Ludvigsen. Semantic Segmentation in Underwater Ship Inspections: Benchmark and Dataset. IEEE Journal of Oceanic Engineering. 2022Metadata
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