Matches in SemOpenAlex for { <https://semopenalex.org/work/W4309738966> ?p ?o ?g. }
- W4309738966 endingPage "5869" @default.
- W4309738966 startingPage "5869" @default.
- W4309738966 abstract "Combining deep learning and UAV images to map wetland vegetation distribution has received increasing attention from researchers. However, it is difficult for one multi-classification convolutional neural network (CNN) model to meet the accuracy requirements for the overall classification of multi-object types. To resolve these issues, this paper combined three decision fusion methods (Majority Voting Fusion, Average Probability Fusion, and Optimal Selection Fusion) with four CNNs, including SegNet, PSPNet, DeepLabV3+, and RAUNet, to construct different fusion classification models (FCMs) for mapping wetland vegetations in Huixian Karst National Wetland Park, Guilin, south China. We further evaluated the effect of one-class and multi-class FCMs on wetland vegetation classification using ultra-high-resolution UAV images and compared the performance of one-class classification (OCC) and multi-class classification (MCC) models for karst wetland vegetation. The results highlight that (1) the use of additional multi-dimensional UAV datasets achieved better classification performance for karst wetland vegetation using CNN models. The OCC models produced better classification results than MCC models, and the accuracy (average of IoU) difference between the two model types was 3.24–10.97%. (2) The integration of DSM and texture features improved the performance of FCMs with an increase in accuracy (MIoU) from 0.67% to 8.23% when compared to RGB-based karst wetland vegetation classifications. (3) The PSPNet algorithm achieved the optimal pixel-based classification in the CNN-based FCMs, while the DeepLabV3+ algorithm produced the best attribute-based classification performance. (4) Three decision fusions all improved the identification ability for karst wetland vegetation compared to single CNN models, which achieved the highest IoUs of 81.93% and 98.42% for Eichhornia crassipes and Nelumbo nucifera, respectively. (5) One-class FCMs achieved higher classification accuracy for karst wetland vegetation than multi-class FCMs, and the highest improvement in the IoU for karst herbaceous plants reached 22.09%." @default.
- W4309738966 created "2022-11-29" @default.
- W4309738966 creator A5000183666 @default.
- W4309738966 creator A5006581779 @default.
- W4309738966 creator A5053042883 @default.
- W4309738966 creator A5053344101 @default.
- W4309738966 creator A5059723326 @default.
- W4309738966 creator A5074166685 @default.
- W4309738966 creator A5084848491 @default.
- W4309738966 creator A5088892425 @default.
- W4309738966 creator A5091304020 @default.
- W4309738966 date "2022-11-19" @default.
- W4309738966 modified "2023-10-14" @default.
- W4309738966 title "Evaluation of Decision Fusions for Classifying Karst Wetland Vegetation Using One-Class and Multi-Class CNN Models with High-Resolution UAV Images" @default.
- W4309738966 cites W2056696899 @default.
- W4309738966 cites W2128768787 @default.
- W4309738966 cites W2560023338 @default.
- W4309738966 cites W2577861134 @default.
- W4309738966 cites W2752983793 @default.
- W4309738966 cites W2755012395 @default.
- W4309738966 cites W2770221842 @default.
- W4309738966 cites W2796232579 @default.
- W4309738966 cites W2808854305 @default.
- W4309738966 cites W2883560370 @default.
- W4309738966 cites W2885667473 @default.
- W4309738966 cites W2910136527 @default.
- W4309738966 cites W2924359790 @default.
- W4309738966 cites W2945246435 @default.
- W4309738966 cites W2947698013 @default.
- W4309738966 cites W2950123062 @default.
- W4309738966 cites W2963881378 @default.
- W4309738966 cites W2975228400 @default.
- W4309738966 cites W2975946879 @default.
- W4309738966 cites W2981464168 @default.
- W4309738966 cites W3004687703 @default.
- W4309738966 cites W3004968762 @default.
- W4309738966 cites W3008502799 @default.
- W4309738966 cites W3008571545 @default.
- W4309738966 cites W3011596392 @default.
- W4309738966 cites W3015547804 @default.
- W4309738966 cites W3020212216 @default.
- W4309738966 cites W3037944196 @default.
- W4309738966 cites W3116806450 @default.
- W4309738966 cites W3126601769 @default.
- W4309738966 cites W3136563782 @default.
- W4309738966 cites W3139939049 @default.
- W4309738966 cites W3174745900 @default.
- W4309738966 cites W3186597588 @default.
- W4309738966 cites W3193873866 @default.
- W4309738966 cites W3200827251 @default.
- W4309738966 cites W3204157259 @default.
- W4309738966 cites W3207366993 @default.
- W4309738966 cites W4205379146 @default.
- W4309738966 cites W4221065202 @default.
- W4309738966 cites W4256384256 @default.
- W4309738966 cites W4289524775 @default.
- W4309738966 doi "https://doi.org/10.3390/rs14225869" @default.
- W4309738966 hasPublicationYear "2022" @default.
- W4309738966 type Work @default.
- W4309738966 citedByCount "3" @default.
- W4309738966 countsByYear W43097389662022 @default.
- W4309738966 countsByYear W43097389662023 @default.
- W4309738966 crossrefType "journal-article" @default.
- W4309738966 hasAuthorship W4309738966A5000183666 @default.
- W4309738966 hasAuthorship W4309738966A5006581779 @default.
- W4309738966 hasAuthorship W4309738966A5053042883 @default.
- W4309738966 hasAuthorship W4309738966A5053344101 @default.
- W4309738966 hasAuthorship W4309738966A5059723326 @default.
- W4309738966 hasAuthorship W4309738966A5074166685 @default.
- W4309738966 hasAuthorship W4309738966A5084848491 @default.
- W4309738966 hasAuthorship W4309738966A5088892425 @default.
- W4309738966 hasAuthorship W4309738966A5091304020 @default.
- W4309738966 hasBestOaLocation W43097389661 @default.
- W4309738966 hasConcept C142724271 @default.
- W4309738966 hasConcept C153180895 @default.
- W4309738966 hasConcept C154945302 @default.
- W4309738966 hasConcept C160633673 @default.
- W4309738966 hasConcept C166957645 @default.
- W4309738966 hasConcept C182348080 @default.
- W4309738966 hasConcept C18903297 @default.
- W4309738966 hasConcept C205649164 @default.
- W4309738966 hasConcept C2776054349 @default.
- W4309738966 hasConcept C2776133958 @default.
- W4309738966 hasConcept C2777212361 @default.
- W4309738966 hasConcept C41008148 @default.
- W4309738966 hasConcept C62649853 @default.
- W4309738966 hasConcept C67715294 @default.
- W4309738966 hasConcept C71924100 @default.
- W4309738966 hasConcept C81363708 @default.
- W4309738966 hasConcept C86803240 @default.
- W4309738966 hasConceptScore W4309738966C142724271 @default.
- W4309738966 hasConceptScore W4309738966C153180895 @default.
- W4309738966 hasConceptScore W4309738966C154945302 @default.
- W4309738966 hasConceptScore W4309738966C160633673 @default.
- W4309738966 hasConceptScore W4309738966C166957645 @default.
- W4309738966 hasConceptScore W4309738966C182348080 @default.
- W4309738966 hasConceptScore W4309738966C18903297 @default.
- W4309738966 hasConceptScore W4309738966C205649164 @default.