2019
DOI: 10.1016/j.asoc.2019.04.025
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The extended marine underwater environment database and baseline evaluations

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Cited by 58 publications
(37 citation statements)
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“…When the light transferring in the water, the energy will be attenuated or absorbed due to underwater dissolved organic matter and suspended particles, but some proposed method can produce reliable and promising results. [19][20][21] The result of GI under the underwater conditions for different turbidities has confirmed that GI can be a better alternative for underwater optical imaging. 22,23 The energy attenuation of light propagation through seawater means the low transmittance.…”
Section: Introductionmentioning
confidence: 64%
“…When the light transferring in the water, the energy will be attenuated or absorbed due to underwater dissolved organic matter and suspended particles, but some proposed method can produce reliable and promising results. [19][20][21] The result of GI under the underwater conditions for different turbidities has confirmed that GI can be a better alternative for underwater optical imaging. 22,23 The energy attenuation of light propagation through seawater means the low transmittance.…”
Section: Introductionmentioning
confidence: 64%
“…More recently, in Reference [87] and in its extension in Reference [88], a database specifically designed for the benchmarking of saliency estimation methods for underwater object detection is proposed. The database, named Marine Underwater Environment Database (MUED), is collected in an artificial pool mimicking the variabilities in illumination, background, and pose that are normally encountered in the real environment.…”
Section: Resources and Benchmarkingmentioning
confidence: 99%
“…A total of 8600 underwater images (resolution 648 × 486) of 430 distinct objects is contained in the database. Reference [88] presents also a baseline evaluation with a wide range of known general methods, including Graph Regularization [55], Patch-Distinctness [54], Dense and Sparse Reconstruction [89], Nonlinearity covariance [46], Multiscale Super-Pixel [90], Cellular Automata [91], QDWB [51], and PD and LC [53] (the last methods being proposed by the same team who published the database). Methods are compared with respect to the task of object detection computing the precision, recall, and F-score of detected salient object rectangle with respect to the ground-truth rectangle.…”
Section: Resources and Benchmarkingmentioning
confidence: 99%
“…For most online systems, it is even more crucial to establish feature correspondence between consecutive frames accurately and robustly for proper functionality. However, in low-visibility conditions, the saliencies in the visual images can be highly impaired, where the pixel-based feature methods can fail easily, for example, in underwater environment [6]. Such failures can pose negative impacts on those computational tasks.…”
Section: Introductionmentioning
confidence: 99%