Underwater No‐Reference Image Quality Assessment for Display Module of ROV

D Wu, F Yuan, E Cheng - Scientific Programming, 2020 - Wiley Online Library
D Wu, F Yuan, E Cheng
Scientific Programming, 2020Wiley Online Library
The optical images collected by remotely operated vehicles (ROV) contain a lot of
information about underwater (such as distributions of underwater creatures and minerals),
which plays an important role in ocean exploration. However, due to the absorption and
scattering characteristics of the water medium, some of the images suffer from serious color
distortion. These distorted color images usually need to be enhanced so that we can
analyze them further. However, at present, no image enhancement algorithm performs well …
The optical images collected by remotely operated vehicles (ROV) contain a lot of information about underwater (such as distributions of underwater creatures and minerals), which plays an important role in ocean exploration. However, due to the absorption and scattering characteristics of the water medium, some of the images suffer from serious color distortion. These distorted color images usually need to be enhanced so that we can analyze them further. However, at present, no image enhancement algorithm performs well in any scene. Therefore, in order to monitor image quality in the display module of ROV, a no‐reference image quality predictor (NIPQ) is proposed in this paper. A unique property that differentiates the proposed NIPQ metric from existing works is the consideration of the viewing behavior of the human visual system and imaging characteristics of the underwater image in different water types. The experimental results based on the underwater optical image quality database (UOQ) show that the proposed metric can provide an accurate prediction for the quality of the enhanced image.
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