Matches in SemOpenAlex for { <https://semopenalex.org/work/W3206763408> ?p ?o ?g. }
- W3206763408 endingPage "3953" @default.
- W3206763408 startingPage "3953" @default.
- W3206763408 abstract "The ability to accurately classify land cover in periods before appropriate training and validation data exist is a critical step towards understanding subtle long-term impacts of climate change. These trends cannot be properly understood and distinguished from individual disturbance events or decadal cycles using only a decade or less of data. Understanding these long-term changes in low lying coastal areas, home to a huge proportion of the global population, is of particular importance. Relatively simple deep learning models that extract representative spatiotemporal patterns can lead to major improvements in temporal generalizability. To provide insight into major changes in low lying coastal areas, our study (1) developed a recurrent convolutional neural network that incorporates spectral, spatial, and temporal contexts for predicting land cover class, (2) evaluated this model across time and space and compared this model to conventional Random Forest and Support Vector Machine methods as well as other deep learning approaches, and (3) applied this model to classify land cover across 20 years of Landsat 5 data in the low-lying coastal plain of North Carolina, USA. We observed striking changes related to sea level rise that support evidence on a smaller scale of agricultural land and forests transitioning into wetlands and “ghost forests”. This work demonstrates that recurrent convolutional neural networks should be considered when a model is needed that can generalize across time and that they can help uncover important trends necessary for understanding and responding to climate change in vulnerable coastal regions." @default.
- W3206763408 created "2021-10-25" @default.
- W3206763408 creator A5006121426 @default.
- W3206763408 creator A5039648188 @default.
- W3206763408 creator A5042648332 @default.
- W3206763408 creator A5043276600 @default.
- W3206763408 creator A5053180513 @default.
- W3206763408 creator A5062221799 @default.
- W3206763408 date "2021-10-02" @default.
- W3206763408 modified "2023-10-15" @default.
- W3206763408 title "Temporally Generalizable Land Cover Classification: A Recurrent Convolutional Neural Network Unveils Major Coastal Change through Time" @default.
- W3206763408 cites W1118887426 @default.
- W3206763408 cites W1903029394 @default.
- W3206763408 cites W1970618421 @default.
- W3206763408 cites W2012973015 @default.
- W3206763408 cites W2022224360 @default.
- W3206763408 cites W2026590445 @default.
- W3206763408 cites W2038958764 @default.
- W3206763408 cites W2045692755 @default.
- W3206763408 cites W2053782962 @default.
- W3206763408 cites W2071634982 @default.
- W3206763408 cites W2082291024 @default.
- W3206763408 cites W2090986923 @default.
- W3206763408 cites W2107583574 @default.
- W3206763408 cites W2111096131 @default.
- W3206763408 cites W2121601221 @default.
- W3206763408 cites W2125105545 @default.
- W3206763408 cites W2140908571 @default.
- W3206763408 cites W2151260935 @default.
- W3206763408 cites W2151456308 @default.
- W3206763408 cites W2153820558 @default.
- W3206763408 cites W2162096224 @default.
- W3206763408 cites W2199321793 @default.
- W3206763408 cites W2238226927 @default.
- W3206763408 cites W2288273411 @default.
- W3206763408 cites W2307094448 @default.
- W3206763408 cites W2346062110 @default.
- W3206763408 cites W2538244214 @default.
- W3206763408 cites W2581639175 @default.
- W3206763408 cites W2584952387 @default.
- W3206763408 cites W2604086375 @default.
- W3206763408 cites W2618530766 @default.
- W3206763408 cites W2735042947 @default.
- W3206763408 cites W2737391801 @default.
- W3206763408 cites W2742878349 @default.
- W3206763408 cites W2782522152 @default.
- W3206763408 cites W2789676998 @default.
- W3206763408 cites W2794436271 @default.
- W3206763408 cites W2794891691 @default.
- W3206763408 cites W2884821113 @default.
- W3206763408 cites W2885667473 @default.
- W3206763408 cites W2890765171 @default.
- W3206763408 cites W2892035503 @default.
- W3206763408 cites W2897285410 @default.
- W3206763408 cites W2903282641 @default.
- W3206763408 cites W2907158154 @default.
- W3206763408 cites W2918120629 @default.
- W3206763408 cites W2919115771 @default.
- W3206763408 cites W2922152173 @default.
- W3206763408 cites W2933858965 @default.
- W3206763408 cites W2934881312 @default.
- W3206763408 cites W2940726923 @default.
- W3206763408 cites W2944178563 @default.
- W3206763408 cites W2944277284 @default.
- W3206763408 cites W2946890109 @default.
- W3206763408 cites W2949321026 @default.
- W3206763408 cites W2952142982 @default.
- W3206763408 cites W2953011380 @default.
- W3206763408 cites W2967165937 @default.
- W3206763408 cites W2972854400 @default.
- W3206763408 cites W2976120863 @default.
- W3206763408 cites W2978131366 @default.
- W3206763408 cites W2981830988 @default.
- W3206763408 cites W2990259822 @default.
- W3206763408 cites W3003387640 @default.
- W3206763408 cites W3003421670 @default.
- W3206763408 cites W3008154860 @default.
- W3206763408 cites W3009367059 @default.
- W3206763408 cites W3026692533 @default.
- W3206763408 cites W3027201985 @default.
- W3206763408 cites W3034847898 @default.
- W3206763408 cites W3035032629 @default.
- W3206763408 cites W3035217787 @default.
- W3206763408 cites W3104839310 @default.
- W3206763408 cites W3122084549 @default.
- W3206763408 cites W3125697162 @default.
- W3206763408 cites W3149912006 @default.
- W3206763408 cites W4240485910 @default.
- W3206763408 cites W639708223 @default.
- W3206763408 cites W787717938 @default.
- W3206763408 doi "https://doi.org/10.3390/rs13193953" @default.
- W3206763408 hasPublicationYear "2021" @default.
- W3206763408 type Work @default.
- W3206763408 sameAs 3206763408 @default.
- W3206763408 citedByCount "8" @default.
- W3206763408 countsByYear W32067634082021 @default.
- W3206763408 countsByYear W32067634082022 @default.
- W3206763408 countsByYear W32067634082023 @default.