Matches in SemOpenAlex for { <https://semopenalex.org/work/W4307811644> ?p ?o ?g. }
- W4307811644 abstract "Estimating the depth of a construction scene from a single red-green-blue image is a crucial prerequisite for various applications, including work zone safety, localization, productivity analysis, activity recognition, and scene understanding. Recently, self-supervised representation learning methods have made significant progress and demonstrated state-of-the-art performance on monocular depth estimation. However, the two leading open challenges are the ambiguity of estimated depth up to an unknown scale and representation transferability for a downstream task, which severely hinders the practical deployment of self-supervised methods. We propose a prior information-based method, not depending on additional sensors, to recover the unknown scale in monocular vision and predict per-pixel absolute depth. Moreover, a new learning paradigm for a self-supervised monocular depth estimation model is constructed to transfer the pre-trained self-supervised model to other downstream construction scene analysis tasks. Meanwhile, we also propose a novel depth loss to enforce depth consistency when transferring to a new downstream task and two new metrics to measure transfer performance. Finally, we verify the effectiveness of scale recovery and representation transferability in isolation. The new learning paradigm with our new metrics and depth loss is expected to estimate the monocular depth of a construction scene without depth ground truth like light detection and ranging. Our models will serve as a good foundation for further construction scene analysis tasks." @default.
- W4307811644 created "2022-11-06" @default.
- W4307811644 creator A5001219455 @default.
- W4307811644 creator A5001233601 @default.
- W4307811644 creator A5005589071 @default.
- W4307811644 creator A5061813660 @default.
- W4307811644 date "2022-10-28" @default.
- W4307811644 modified "2023-09-24" @default.
- W4307811644 title "A self‐supervised monocular depth estimation model with scale recovery and transfer learning for construction scene analysis" @default.
- W4307811644 cites W1891739196 @default.
- W4307811644 cites W2080873731 @default.
- W4307811644 cites W2115579991 @default.
- W4307811644 cites W2190832554 @default.
- W4307811644 cites W2194775991 @default.
- W4307811644 cites W2402527940 @default.
- W4307811644 cites W2529764756 @default.
- W4307811644 cites W2609883120 @default.
- W4307811644 cites W2732719441 @default.
- W4307811644 cites W2736832651 @default.
- W4307811644 cites W2887848798 @default.
- W4307811644 cites W2894295805 @default.
- W4307811644 cites W2895944074 @default.
- W4307811644 cites W2902593794 @default.
- W4307811644 cites W2916798096 @default.
- W4307811644 cites W2921440296 @default.
- W4307811644 cites W2937691869 @default.
- W4307811644 cites W2944397195 @default.
- W4307811644 cites W2948242301 @default.
- W4307811644 cites W2962843773 @default.
- W4307811644 cites W2963855133 @default.
- W4307811644 cites W2966126335 @default.
- W4307811644 cites W2967776630 @default.
- W4307811644 cites W2969365860 @default.
- W4307811644 cites W2985775862 @default.
- W4307811644 cites W2990873191 @default.
- W4307811644 cites W2992989584 @default.
- W4307811644 cites W3003610113 @default.
- W4307811644 cites W3013062812 @default.
- W4307811644 cites W3021070601 @default.
- W4307811644 cites W3026728621 @default.
- W4307811644 cites W3034604951 @default.
- W4307811644 cites W3035749845 @default.
- W4307811644 cites W3035957914 @default.
- W4307811644 cites W3048510980 @default.
- W4307811644 cites W3084438944 @default.
- W4307811644 cites W3103298250 @default.
- W4307811644 cites W3105126405 @default.
- W4307811644 cites W3127615386 @default.
- W4307811644 cites W3129944514 @default.
- W4307811644 cites W3130100862 @default.
- W4307811644 cites W3135887287 @default.
- W4307811644 cites W3173274332 @default.
- W4307811644 cites W3174211490 @default.
- W4307811644 cites W3176258611 @default.
- W4307811644 cites W3176276772 @default.
- W4307811644 cites W3180194985 @default.
- W4307811644 cites W3189310703 @default.
- W4307811644 cites W3203943632 @default.
- W4307811644 cites W3211125938 @default.
- W4307811644 cites W4200072515 @default.
- W4307811644 cites W4214558638 @default.
- W4307811644 doi "https://doi.org/10.1111/mice.12938" @default.
- W4307811644 hasPublicationYear "2022" @default.
- W4307811644 type Work @default.
- W4307811644 citedByCount "0" @default.
- W4307811644 crossrefType "journal-article" @default.
- W4307811644 hasAuthorship W4307811644A5001219455 @default.
- W4307811644 hasAuthorship W4307811644A5001233601 @default.
- W4307811644 hasAuthorship W4307811644A5005589071 @default.
- W4307811644 hasAuthorship W4307811644A5061813660 @default.
- W4307811644 hasConcept C119857082 @default.
- W4307811644 hasConcept C121332964 @default.
- W4307811644 hasConcept C136389625 @default.
- W4307811644 hasConcept C146849305 @default.
- W4307811644 hasConcept C150899416 @default.
- W4307811644 hasConcept C153180895 @default.
- W4307811644 hasConcept C154945302 @default.
- W4307811644 hasConcept C17744445 @default.
- W4307811644 hasConcept C199360897 @default.
- W4307811644 hasConcept C199539241 @default.
- W4307811644 hasConcept C2776359362 @default.
- W4307811644 hasConcept C2778755073 @default.
- W4307811644 hasConcept C2780522230 @default.
- W4307811644 hasConcept C31972630 @default.
- W4307811644 hasConcept C41008148 @default.
- W4307811644 hasConcept C50644808 @default.
- W4307811644 hasConcept C62520636 @default.
- W4307811644 hasConcept C65909025 @default.
- W4307811644 hasConcept C94625758 @default.
- W4307811644 hasConceptScore W4307811644C119857082 @default.
- W4307811644 hasConceptScore W4307811644C121332964 @default.
- W4307811644 hasConceptScore W4307811644C136389625 @default.
- W4307811644 hasConceptScore W4307811644C146849305 @default.
- W4307811644 hasConceptScore W4307811644C150899416 @default.
- W4307811644 hasConceptScore W4307811644C153180895 @default.
- W4307811644 hasConceptScore W4307811644C154945302 @default.
- W4307811644 hasConceptScore W4307811644C17744445 @default.
- W4307811644 hasConceptScore W4307811644C199360897 @default.
- W4307811644 hasConceptScore W4307811644C199539241 @default.
- W4307811644 hasConceptScore W4307811644C2776359362 @default.