2022
DOI: 10.1007/s00521-022-07593-8
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Prediction of hydraulic blockage at culverts from a single image using deep learning

Abstract: Cross-drainage hydraulic structures such as culverts and bridges in urban landscapes are prone to get blocked by the transported debris (e.g., urban, vegetated), which often reduces their hydraulic capacity and triggers flash floods. Unavailability of relevant data from blockage-originated flooding events and complex nature of debris accumulation are highlighted factors hindering the research within the blockage management domain. Wollongong City Council (WCC) blockage conduit policy is the leading formal guid… Show more

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Cited by 16 publications
(1 citation statement)
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References 43 publications
(51 reference statements)
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“…However, the performance did not exceed the fine-tuned pre-trained models. These findings align with what is commonly discussed in current research [32,33], emphasizing that simpler models can be easily affected by minor changes. This highlights the need for cautious interpretations and emphasizes the extra computing work needed when starting from scratch with new models.…”
supporting
confidence: 90%
“…However, the performance did not exceed the fine-tuned pre-trained models. These findings align with what is commonly discussed in current research [32,33], emphasizing that simpler models can be easily affected by minor changes. This highlights the need for cautious interpretations and emphasizes the extra computing work needed when starting from scratch with new models.…”
supporting
confidence: 90%