Papers
Topics
Authors
Recent
Search
2000 character limit reached

Artificial Neural Network for Estimation of Physical Parameters of Sea Water using LiDAR Waveforms

Published 5 Dec 2023 in eess.SP, cs.AI, and cs.LG | (2312.10068v2)

Abstract: Light Detection and Ranging (LiDAR) are fast emerging sensors in the field of Earth Observation. It is a remote sensing technology that utilizes laser beams to measure distances and create detailed three-dimensional representations of objects and environments. The potential of Full Waveform LiDAR is much greater than just height estimation and 3D reconstruction only. Overall shape of signal provides important information about properties of water body. However, the shape of FWL is unexplored as most LiDAR software work on point cloud by utilizing the maximum value within the waveform. Existing techniques in the field of LiDAR data analysis include depth estimation through inverse modeling and regression of logarithmic intensity and depth for approximating the attenuation coefficient. However, these methods suffer from limitations in accuracy. Depth estimation through inverse modeling provides only approximate values and does not account for variations in surface properties, while the regression approach for the attenuation coefficient is only able to generalize a value through several data points which lacks precision and may lead to significant errors in estimation. Additionally, there is currently no established modeling method available for predicting bottom reflectance. This research proposed a novel solution based on neural networks for parameter estimation in LIDAR data analysis. By leveraging the power of neural networks, the proposed solution successfully learned the inversion model, was able to do prediction of parameters such as depth, attenuation coefficient, and bottom reflectance. Performance of model was validated by testing it on real LiDAR data. In future, more data availability would enable more accuracy and reliability of such models.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (47)
  1. \APACrefYearMonthDay2012. \BBOQ\APACrefatitleWa-LiD: A New LiDAR Simulator for Waters Wa-lid: A new lidar simulator for waters.\BBCQ \APACjournalVolNumPagesIEEE Geoscience and Remote Sensing Letters94744–748. {APACrefDOI} \doi10.1109/LGRS.2011.2180506 \PrintBackRefs\CurrentBib
  2. \APACrefYearMonthDay2021mar. \BBOQ\APACrefatitleReview of deep learning: concepts, CNN architectures, challenges, applications, future directions Review of deep learning: concepts, cnn architectures, challenges, applications, future directions.\BBCQ \APACjournalVolNumPagesJournal of Big Data81. {APACrefURL} https://doi.org/10.1186%2Fs40537-021-00444-8 {APACrefDOI} \doi10.1186/s40537-021-00444-8 \PrintBackRefs\CurrentBib
  3. \APACrefYearMonthDay2005. \BBOQ\APACrefatitleEstimating forest canopy fuel parameters using LIDAR data Estimating forest canopy fuel parameters using lidar data.\BBCQ \APACjournalVolNumPagesRemote Sensing of Environment944441-449. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0034425704003438 {APACrefDOI} \doihttps://doi.org/10.1016/j.rse.2004.10.013 \PrintBackRefs\CurrentBib
  4. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleQuantitative Evaluation of Bathymetric LiDAR Sensors and Acquisition Approaches in Lærdal River in Norway Quantitative evaluation of bathymetric lidar sensors and acquisition approaches in lærdal river in norway.\BBCQ \APACjournalVolNumPagesRemote Sensing151. {APACrefURL} https://www.mdpi.com/2072-4292/15/1/263 {APACrefDOI} \doi10.3390/rs15010263 \PrintBackRefs\CurrentBib
  5. \APACrefYearMonthDay2021. \BBOQ\APACrefatitleDeep Learning for LiDAR Waveforms with Multiple Returns Deep learning for lidar waveforms with multiple returns.\BBCQ \BIn \APACrefbtitle28th European Signal Processing Conference (EUSIPCO) 28th european signal processing conference (eusipco) (\BPG 1571-1575). {APACrefDOI} \doi10.23919/Eusipco47968.2020.9287545 \PrintBackRefs\CurrentBib
  6. \APACrefYearMonthDay2011apr. \BBOQ\APACrefatitleThe Relevance of GLAS/ICESat Elevation Data for the Monitoring of River Networks The relevance of GLAS/ICESat elevation data for the monitoring of river networks.\BBCQ \APACjournalVolNumPagesRemote Sensing34708–720. {APACrefURL} https://doi.org/10.3390%2Frs3040708 {APACrefDOI} \doi10.3390/rs3040708 \PrintBackRefs\CurrentBib
  7. \APACinsertmetastarReview2BALTSAVIAS1999199{APACrefauthors}Baltsavias, E.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleAirborne laser scanning: basic relations and formulas Airborne laser scanning: basic relations and formulas.\BBCQ \APACjournalVolNumPagesISPRS Journal of Photogrammetry and Remote Sensing542199-214. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0924271699000155 {APACrefDOI} \doihttps://doi.org/10.1016/S0924-2716(99)00015-5 \PrintBackRefs\CurrentBib
  8. \APACinsertmetastarReviewBALTSAVIAS199983{APACrefauthors}Baltsavias, E\BPBIP.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleA comparison between photogrammetry and laser scanning A comparison between photogrammetry and laser scanning.\BBCQ \APACjournalVolNumPagesISPRS Journal of Photogrammetry and Remote Sensing54283-94. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0924271699000143 {APACrefDOI} \doihttps://doi.org/10.1016/S0924-2716(99)00014-3 \PrintBackRefs\CurrentBib
  9. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn promoting the use of lidar systems in forest ecosystem research On promoting the use of lidar systems in forest ecosystem research.\BBCQ \APACjournalVolNumPagesForest Ecology and Management450117484. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0378112719306218 {APACrefDOI} \doihttps://doi.org/10.1016/j.foreco.2019.117484 \PrintBackRefs\CurrentBib
  10. \APACinsertmetastarNoise_10.1162/neco.1995.7.1.108{APACrefauthors}Bishop, C\BPBIM.  \APACrefYearMonthDay199501. \BBOQ\APACrefatitleTraining with Noise is Equivalent to Tikhonov Regularization Training with Noise is Equivalent to Tikhonov Regularization.\BBCQ \APACjournalVolNumPagesNeural Computation71108-116. {APACrefURL} https://doi.org/10.1162/neco.1995.7.1.108 {APACrefDOI} \doi10.1162/neco.1995.7.1.108 \PrintBackRefs\CurrentBib
  11. \APACrefYearMonthDay2014oct. \BBOQ\APACrefatitleLearning about physical parameters: the importance of model discrepancy Learning about physical parameters: the importance of model discrepancy.\BBCQ \APACjournalVolNumPagesInverse Problems3011114007. {APACrefURL} https://dx.doi.org/10.1088/0266-5611/30/11/114007 {APACrefDOI} \doi10.1088/0266-5611/30/11/114007 \PrintBackRefs\CurrentBib
  12. \APACrefYearMonthDay2000jan. \BBOQ\APACrefatitleArtificial neural networks for parameter estimation in geophysics Artificial neural networks for parameter estimation in geophysics.\BBCQ \APACjournalVolNumPagesGeophysical Prospecting48121–47. {APACrefURL} https://doi.org/10.1046%2Fj.1365-2478.2000.00171.x {APACrefDOI} \doi10.1046/j.1365-2478.2000.00171.x \PrintBackRefs\CurrentBib
  13. \APACrefYearMonthDay2022aug. \BBOQ\APACrefatitleDCPLD-Net: A diffusion coupled convolution neural network for real-time power transmission lines detection from UAV-Borne LiDAR data DCPLD-net: A diffusion coupled convolution neural network for real-time power transmission lines detection from UAV-borne LiDAR data.\BBCQ \APACjournalVolNumPagesInternational Journal of Applied Earth Observation and Geoinformation112102960. {APACrefURL} https://doi.org/10.1016%2Fj.jag.2022.102960 {APACrefDOI} \doi10.1016/j.jag.2022.102960 \PrintBackRefs\CurrentBib
  14. \APACrefYearMonthDay2010. \BBOQ\APACrefatitleCapabilities of the bathymetric Hawk Eye LiDAR for coastal habitat mapping: A case study within a Basque estuary Capabilities of the bathymetric hawk eye lidar for coastal habitat mapping: A case study within a basque estuary.\BBCQ \APACjournalVolNumPagesEstuarine, Coastal and Shelf Science893200–213. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0272771410002477 {APACrefDOI} \doihttps://doi.org/10.1016/j.ecss.2010.07.002 \PrintBackRefs\CurrentBib
  15. \APACrefYearMonthDay2021nov. \BBOQ\APACrefatitleDiffuse Attenuation Coefficient (Kd) from ICESat-2 ATLAS Spaceborne Lidar Using Random-Forest Regression Diffuse attenuation coefficient (kd) from icesat-2 atlas spaceborne lidar using random-forest regression.\BBCQ \APACjournalVolNumPagesPhotogrammetric Engineering and Remote Sensing8711831–840. {APACrefURL} https://doi.org/10.14358%2Fpers.21-00013r2 {APACrefDOI} \doi10.14358/pers.21-00013r2 \PrintBackRefs\CurrentBib
  16. \APACrefYearMonthDay2017. \BBOQ\APACrefatitleOptimal Transport for Domain Adaptation Optimal transport for domain adaptation.\BBCQ \APACjournalVolNumPagesIEEE Transactions on Pattern Analysis and Machine Intelligence3991853-1865. {APACrefDOI} \doi10.1109/TPAMI.2016.2615921 \PrintBackRefs\CurrentBib
  17. \APACrefYearMonthDay2013. \BBOQ\APACrefatitleLidar measurement of snow depth: a review Lidar measurement of snow depth: a review.\BBCQ \APACjournalVolNumPagesJournal of Glaciology59215467–479. {APACrefDOI} \doi10.3189/2013JoG12J154 \PrintBackRefs\CurrentBib
  18. \APACrefYearMonthDay2008. \BBOQ\APACrefatitleActive localization on the ocean floor with multibeam sonar Active localization on the ocean floor with multibeam sonar.\BBCQ \BIn \APACrefbtitleOCEANS 2008 Oceans 2008 (\BPG 1-10). {APACrefDOI} \doi10.1109/OCEANS.2008.5151853 \PrintBackRefs\CurrentBib
  19. \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA Brief Review of Domain Adaptation A brief review of domain adaptation.\BBCQ \APACjournalVolNumPagesCoRRabs/2010.03978. {APACrefURL} https://arxiv.org/abs/2010.03978 \PrintBackRefs\CurrentBib
  20. \APACrefYearMonthDay2020. \BBOQ\APACrefatitleSemantic Segmentation of LiDAR Points Clouds: Rasterization Beyond Digital Elevation Models Semantic segmentation of lidar points clouds: Rasterization beyond digital elevation models.\BBCQ \APACjournalVolNumPagesIEEE Geoscience and Remote Sensing Letters17112016–2019. {APACrefDOI} \doi10.1109/LGRS.2019.2958858 \PrintBackRefs\CurrentBib
  21. \APACrefYearMonthDay2011. \BBOQ\APACrefatitleExploring full-waveform LiDAR parameters for tree species classification Exploring full-waveform lidar parameters for tree species classification.\BBCQ \APACjournalVolNumPagesInternational Journal of Applied Earth Observation and Geoinformation131152-160. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0303243410001145 {APACrefDOI} \doihttps://doi.org/10.1016/j.jag.2010.09.010 \PrintBackRefs\CurrentBib
  22. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleCharacterizing vegetated rivers using novel unmanned aerial vehicle-borne topo-bathymetric green lidar: Seasonal applications and challenges Characterizing vegetated rivers using novel unmanned aerial vehicle-borne topo-bathymetric green lidar: Seasonal applications and challenges.\BBCQ \APACjournalVolNumPagesRiver Research and Applications38144-58. {APACrefURL} https://onlinelibrary.wiley.com/doi/abs/10.1002/rra.3875 {APACrefDOI} \doihttps://doi.org/10.1002/rra.3875 \PrintBackRefs\CurrentBib
  23. \APACrefYearMonthDay2023. \APACrefbtitleData Fusion for Multi-Task Learning of Building Extraction and Height Estimation. Data fusion for multi-task learning of building extraction and height estimation. {APACrefURL} https://doi.org/10.48550/arXiv.2308.02960 {APACrefDOI} \doi10.48550/arXiv.2308.02960 \PrintBackRefs\CurrentBib
  24. \APACrefYearMonthDay2006. \BBOQ\APACrefatitleInversion of a lidar waveform model for forest biophysical parameter estimation Inversion of a lidar waveform model for forest biophysical parameter estimation.\BBCQ \APACjournalVolNumPagesIEEE Geoscience and Remote Sensing Letters3149–53. {APACrefDOI} \doi10.1109/LGRS.2005.856706 \PrintBackRefs\CurrentBib
  25. \APACrefYearMonthDay2020. \BBOQ\APACrefatitleChapter 2 - Topo-bathymetric airborne LiDAR for fluvial-geomorphology analysis Chapter 2 - topo-bathymetric airborne lidar for fluvial-geomorphology analysis.\BBCQ \BIn P. Tarolli \BBA S\BPBIM. Mudd (\BEDS), \APACrefbtitleRemote Sensing of Geomorphology Remote sensing of geomorphology (\BVOL 23, \BPG 25-54). \APACaddressPublisherElsevier. {APACrefURL} https://www.sciencedirect.com/science/article/pii/B9780444641779000023 {APACrefDOI} \doihttps://doi.org/10.1016/B978-0-444-64177-9.00002-3 \PrintBackRefs\CurrentBib
  26. \APACrefYearMonthDay2022jan. \BBOQ\APACrefatitleClassification of Land-Water Continuum Habitats Using Exclusively Airborne Topobathymetric Lidar Green Waveforms and Infrared Intensity Point Clouds Classification of land-water continuum habitats using exclusively airborne topobathymetric lidar green waveforms and infrared intensity point clouds.\BBCQ \APACjournalVolNumPagesRemote Sensing142341. {APACrefURL} https://doi.org/10.3390%2Frs14020341 {APACrefDOI} \doi10.3390/rs14020341 \PrintBackRefs\CurrentBib
  27. \APACrefYearMonthDay2021. \BBOQ\APACrefatitleClassification of coastal and estuarine ecosystems using full-waveform topo-bathymetric lidar data and artificial intelligence Classification of coastal and estuarine ecosystems using full-waveform topo-bathymetric lidar data and artificial intelligence.\BBCQ \BIn \APACrefbtitleOCEANS 2021: San Diego – Porto Oceans 2021: San diego – porto (\BPG 1-10). {APACrefDOI} \doi10.23919/OCEANS44145.2021.9705797 \PrintBackRefs\CurrentBib
  28. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleUSING BISPECTRAL FULL-WAVEFORM LIDAR TO MAP SEAMLESS COASTAL HABITATS IN 3D Using bispectral full-waveform lidar to map seamless coastal habitats in 3d.\BBCQ \APACjournalVolNumPagesThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information SciencesXLIII-B3-2022463–470. {APACrefURL} https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLIII-B3-2022/463/2022/ {APACrefDOI} \doi10.5194/isprs-archives-XLIII-B3-2022-463-2022 \PrintBackRefs\CurrentBib
  29. \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTowards 3D Mapping of Seagrass Meadows with Topo-Bathymetric Lidar Full Waveform Processing Towards 3d mapping of seagrass meadows with topo-bathymetric lidar full waveform processing.\BBCQ \BIn \APACrefbtitle2021 IEEE International Geoscience and Remote Sensing Symposium IGARSS 2021 ieee international geoscience and remote sensing symposium igarss (\BPGS 8069–8072). {APACrefDOI} \doi10.1109/IGARSS47720.2021.9554262 \PrintBackRefs\CurrentBib
  30. \APACrefYearMonthDay2018. \BBOQ\APACrefatitleDeep Learning for Fusion of APEX Hyperspectral and Full-Waveform LiDAR Remote Sensing Data for Tree Species Mapping Deep learning for fusion of apex hyperspectral and full-waveform lidar remote sensing data for tree species mapping.\BBCQ \APACjournalVolNumPagesIEEE Access668716–68729. {APACrefDOI} \doi10.1109/ACCESS.2018.2880083 \PrintBackRefs\CurrentBib
  31. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDeep-learning for super-resolution full-waveform lidar Deep-learning for super-resolution full-waveform lidar.\BBCQ \BIn Q. Dai, T. Shimura\BCBL \BBA Z. Zheng (\BEDS), \APACrefbtitleOptoelectronic Imaging and Multimedia Technology VI Optoelectronic imaging and multimedia technology vi (\BVOL 11187, \BPG 1118714). \APACaddressPublisherSPIE. {APACrefURL} https://doi.org/10.1117/12.2536719 {APACrefDOI} \doi10.1117/12.2536719 \PrintBackRefs\CurrentBib
  32. \APACrefYearMonthDay2009. \BBOQ\APACrefatitleFull-waveform topographic lidar: State-of-the-art Full-waveform topographic lidar: State-of-the-art.\BBCQ \APACjournalVolNumPagesISPRS Journal of Photogrammetry and Remote Sensing6411–16. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0924271608000993 {APACrefDOI} \doihttps://doi.org/10.1016/j.isprsjprs.2008.09.007 \PrintBackRefs\CurrentBib
  33. \APACrefYearMonthDay2011. \BBOQ\APACrefatitleRelevance assessment of full-waveform lidar data for urban area classification Relevance assessment of full-waveform lidar data for urban area classification.\BBCQ \APACjournalVolNumPagesISPRS Journal of Photogrammetry and Remote Sensing666, SupplementS71-S84. {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0924271611001055 \APACrefnoteAdvances in LIDAR Data Processing and Applications {APACrefDOI} \doihttps://doi.org/10.1016/j.isprsjprs.2011.09.008 \PrintBackRefs\CurrentBib
  34. \APACrefYearMonthDay2009September. \BBOQ\APACrefatitleA stochastic approach for modelling airborne lidar waveforms A stochastic approach for modelling airborne lidar waveforms.\BBCQ \BIn \APACrefbtitleLaserscanning. Laserscanning. \APACaddressPublisherParis, France. {APACrefURL} https://hal.science/hal-02384727 \PrintBackRefs\CurrentBib
  35. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleBuilding Extraction From LiDAR Data Applying Deep Convolutional Neural Networks Building extraction from lidar data applying deep convolutional neural networks.\BBCQ \APACjournalVolNumPagesIEEE Geoscience and Remote Sensing Letters161155–159. {APACrefDOI} \doi10.1109/LGRS.2018.2867736 \PrintBackRefs\CurrentBib
  36. \APACrefYearMonthDay2009. \BBOQ\APACrefatitleOptimisation of LiDAR derived terrain models for river flow modelling Optimisation of lidar derived terrain models for river flow modelling.\BBCQ \APACjournalVolNumPagesHydrology and Earth System Sciences1381453–1466. {APACrefURL} https://hess.copernicus.org/articles/13/1453/2009/ {APACrefDOI} \doi10.5194/hess-13-1453-2009 \PrintBackRefs\CurrentBib
  37. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleAn Approach Based on Deep Learning for Tree Species Classification in LiDAR Data Acquired in Mixed Forest An approach based on deep learning for tree species classification in lidar data acquired in mixed forest.\BBCQ \APACjournalVolNumPagesIEEE Geoscience and Remote Sensing Letters191-5. {APACrefDOI} \doi10.1109/LGRS.2022.3181680 \PrintBackRefs\CurrentBib
  38. \APACrefYearMonthDay2020. \BBOQ\APACrefatitleReview on Lidar Technology Review on lidar technology.\BBCQ \APACjournalVolNumPagesSSRN Electronic Journal. {APACrefURL} https://doi.org/10.2139%2Fssrn.3604309 {APACrefDOI} \doi10.2139/ssrn.3604309 \PrintBackRefs\CurrentBib
  39. \APACrefYearMonthDay2022. \BBOQ\APACrefatitlePlausible Precipitation Trends over the Large River Basins of Pakistan in Twenty First Century Plausible precipitation trends over the large river basins of pakistan in twenty first century.\BBCQ \APACjournalVolNumPagesAtmosphere132. {APACrefURL} https://www.mdpi.com/2073-4433/13/2/190 {APACrefDOI} \doi10.3390/atmos13020190 \PrintBackRefs\CurrentBib
  40. \APACrefYearMonthDay2020. \BBOQ\APACrefatitleApplication of Machine Learning Techniques to Delineate Homogeneous Climate Zones in River Basins of Pakistan for Hydro-Climatic Change Impact Studies Application of machine learning techniques to delineate homogeneous climate zones in river basins of pakistan for hydro-climatic change impact studies.\BBCQ \APACjournalVolNumPagesApplied Sciences1019. {APACrefURL} https://www.mdpi.com/2076-3417/10/19/6878 {APACrefDOI} \doi10.3390/app10196878 \PrintBackRefs\CurrentBib
  41. \APACrefYearMonthDay202307. \APACrefbtitleEmoji Prediction in Tweets using BERT. Emoji prediction in tweets using bert. {APACrefURL} https://arxiv.org/abs/2307.02054 {APACrefDOI} \doi10.48550/arXiv.2307.02054 \PrintBackRefs\CurrentBib
  42. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleTemporal Convolutional Neural Network for the Classification of Satellite Image Time Series Temporal convolutional neural network for the classification of satellite image time series.\BBCQ \APACjournalVolNumPagesRemote Sensing115. {APACrefURL} https://www.mdpi.com/2072-4292/11/5/523 {APACrefDOI} \doi10.3390/rs11050523 \PrintBackRefs\CurrentBib
  43. \APACrefYearMonthDay2020apr. \BBOQ\APACrefatitleA Survey on LiDAR Scanning Mechanisms A survey on LiDAR scanning mechanisms.\BBCQ \APACjournalVolNumPagesElectronics95741. {APACrefURL} https://doi.org/10.3390%2Felectronics9050741 {APACrefDOI} \doi10.3390/electronics9050741 \PrintBackRefs\CurrentBib
  44. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleThe Use of Green Laser in LiDAR Bathymetry: State of the Art and Recent Advancements The use of green laser in lidar bathymetry: State of the art and recent advancements.\BBCQ \APACjournalVolNumPagesSensors231. {APACrefURL} https://www.mdpi.com/1424-8220/23/1/292 {APACrefDOI} \doi10.3390/s23010292 \PrintBackRefs\CurrentBib
  45. \APACrefYearMonthDay2018. \BBOQ\APACrefatitleSqueezeSeg: Convolutional Neural Nets with Recurrent CRF for Real-Time Road-Object Segmentation from 3D LiDAR Point Cloud Squeezeseg: Convolutional neural nets with recurrent crf for real-time road-object segmentation from 3d lidar point cloud.\BBCQ \BIn \APACrefbtitle2018 IEEE International Conference on Robotics and Automation (ICRA) 2018 ieee international conference on robotics and automation (icra) (\BPGS 1887–1893). {APACrefDOI} \doi10.1109/ICRA.2018.8462926 \PrintBackRefs\CurrentBib
  46. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleMeasurement of the Attenuation Coefficient in Fresh Water Using the Adjacent Frame Difference Method Measurement of the attenuation coefficient in fresh water using the adjacent frame difference method.\BBCQ \APACjournalVolNumPagesPhotonics910. {APACrefURL} https://www.mdpi.com/2304-6732/9/10/713 {APACrefDOI} \doi10.3390/photonics9100713 \PrintBackRefs\CurrentBib
  47. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleFull-Waveform Airborne LiDAR Data Classification Using Convolutional Neural Networks Full-waveform airborne lidar data classification using convolutional neural networks.\BBCQ \APACjournalVolNumPagesIEEE Transactions on Geoscience and Remote Sensing57108255–8261. {APACrefDOI} \doi10.1109/TGRS.2019.2919472 \PrintBackRefs\CurrentBib

Summary

Paper to Video (Beta)

Whiteboard

No one has generated a whiteboard explanation for this paper yet.

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Continue Learning

We haven't generated follow-up questions for this paper yet.

Authors (1)

Collections

Sign up for free to add this paper to one or more collections.