Nicolas Audebert

Membre associé
Personal website: https://nicolas.audebert.at
Office: 37.1.41

Nicolas Audebert is an associate professor of Computer Science since 2019. His research focuses on representation learning for automated mapping, image generation and interpreation, and video games.

2023

Articles de conférence

  1. Doubinsky, P.; Audebert, N.; Crucianu, M. and Le Borgne, H. Wasserstein Loss for Semantic Editing in the Latent Space of GANs. In 20th International Conference on Content-based Multimedia Indexing, Orléans, France, 2023. www 

Non publié

  1. Doubinsky, P.; Audebert, N.; Crucianu, M. and Le Borgne, H. Semantic Generative Augmentations for Few-Shot Counting. , working paper or preprint. www 

2022

Articles de revue

  1. Castillo-Navarro, J.; Le Saux, B.; Boulch, A.; Audebert, N. and Lefèvre, S. Semi-Supervised Semantic Segmentation in Earth Observation: The MiniFrance suite, dataset analysis and multi-task network study. In Machine Learning, 111: 3125-3160, 2022. doi  www 
  1. Doubinsky, P.; Audebert, N.; Crucianu, M. and Le Borgne, H. Multi-attribute balanced sampling for disentangled GAN controls. In Pattern Recognition Letters, 162: 56-62, 2022. doi  www 
  1. Doubinsky, P.; Audebert, N.; Crucianu, M. and Le Borgne, H. Multi-attribute balanced sampling for disentangled GAN controls. In Pattern Recognition Letters, 162: 56-62, 2022. doi  www 

Articles de conférence

  1. Audebert, N. and Laporte, M. Caractérisation du répertoire vocal des chimpanzés par apprentissage profond. In Reconnaissance des Formes, Image, Apprentissage et Perception (RFIAP), Vannes, France, 2022. www 
  1. Ramzi, E.; Audebert, N.; Thome, N.; Rambour, C. and Bitot, X. Hierarchical Average Precision Training for Pertinent Image Retrieval. In ECCV 2022, Tel-Aviv, Israel, 2022. www 
  1. Boige, R.; Audebert, N.; Rambour, C. and Levieux, G. Now you see me: finding the right observation space to learn diverse behaviours by reinforcement in games. In Conférence sur l'Apprentissage automatique (CAp), Vannes, France, 2022. www 
  1. Cheng, X.; Zayani, R.; Ferecatu, M. and Audebert, N. Efficient Autoprecoder-based deep learning for massive MU-MIMO Downlink under PA Non-Linearities. In IEEE Wireless Communications and Networking Conference, Austin, United States, 2022. www 

2021

Articles de conférence

  1. Foscarin, F.; Audebert, N. and Fournier-S'Niehotta, R. PKSpell: Data-Driven Pitch Spelling and Key Signature Estimation. In International Society for Music Information Retrieval Conference (ISMIR), Online, India, 2021. www 
  1. Dang, C.; Randrianarivo, H.; Fournier-S'Niehotta, R. and Audebert, N. Web Image Context Extraction with Graph Neural Networks and Sentence Embeddings on the DOM tree. In GEM: Graph Embedding and Mining - ECML/PKDD Workshops, pages 258-267, IEEE, Bilbao, Spain, 2021. doi  www 
  1. Ramzi, E.; Thome, N.; Rambour, C.; Audebert, N. and Bitot, X. Robust and Decomposable Average Precision for Image Retrieval. In Thirty-fifth Conference on Neural Information Processing Systems (NeurIPS 2021), Sydney, Australia, 2021. www 

2020

Articles de revue

  1. Rambour, C.; Audebert, N.; Koeniguer, E.; Le Saux, B.; Crucianu, M. and Datcu, M. Flood detection in time series of optical and sar images. In ISPRS International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, XLIII-B2-2020: 1343-1346, 2020. doi  www 

Articles de conférence

  1. Dubucq, D.; Audebert, N.; Achard, V.; Alakian, A.; Fabre, S.; Credoz, A.; Deliot, P. and Le Saux, B. A real-world hyperspectral image processing workflow for vegetation stress and hydrocarbon indirect detection. In XXIV ISPRS Congress, Nice, France, The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences XLIII-B3-2020, 2020. doi  www 

2019

Articles de revue

  1. Audebert, N.; Saux, B. Le and Lefèvre, S. Deep Learning for Classification of Hyperspectral Data: A Comparative Review. In IEEE geoscience and remote sensing magazine, 7 (2): 159-173, 2019. doi  www 
  1. Audebert, N.; Boulch, A.; Le Saux, B. and Lefèvre, S. Distance transform regression for spatially-aware deep semantic segmentation. In Computer Vision and Image Understanding, 189: 102809, 2019. doi  www 

Articles de conférence

  1. Audebert, N.; Herold, C.; Slimani, K. and Vidal, C. Multimodal deep networks for text and image-based document classification. In Conférence Nationale sur les Applications Pratiques de l'Intelligence Artificielle (APIA), Toulouse, France, 2019. www 
  1. Castillo-Navarro, J.; Audebert, N.; Boulch, A.; Le Saux, B. and Lefèvre, S. What Data are needed for Semantic Segmentation in Earth Observation?. In 2019 Joint Urban Remote Sensing Event (JURSE), pages 1-4, IEEE, Vannes, France, 2019. doi  www 

2018

Articles de revue

  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Beyond RGB: Very High Resolution Urban Remote Sensing With Multimodal Deep Networks. In ISPRS Journal of Photogrammetry and Remote Sensing, 140: 20-32, 2018. doi  www 

Articles de conférence

  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Generative Adversarial Networks for Realistic Synthesis of Hyperspectral Samples. In International Geoscience and Remote Sensing Symposium (IGARSS 2018), Valencia, Spain, 2018. doi  www 
  1. Chan-Hon-Tong, A. and Audebert, N. Object detection in remote sensing images with center only. In IGARSS 2018 - 2018 IEEE International Geoscience and Remote Sensing Symposium, Valence, Spain, 2018. doi  www 
  1. Huang, B.; Lu, K.; Audebert, N.; Khalel, A.; Tarabalka, Y.; Malof, J.; Boulch, A.; Le Saux, B.; Collins, L.; Bradbury, K.; Lefèvre, S. and El-Saban, M. Large-scale semantic classification: outcome of the first year of Inria aerial image labeling benchmark. In IGARSS 2018 - IEEE International Geoscience and Remote Sensing Symposium, pages 1-4, Valencia, Spain, 2018. doi  www 
  1. Audebert, N.; Boulch, A.; Le Saux, B. and Lefèvre, S. Segmentation sémantique profonde par régression sur cartes de distances signées. In Reconnaissance des Formes, Image, Apprentissage et Perception (RFIAP), Marne-la-Vallée, France, 2018. www 

Thèses et habilitations

  1. Audebert, N. Classification de données massives de télédétection. Ph.D. Thesis, Université de Bretagne Sud, 2018.

2017

Articles de revue

  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Segment-before-Detect: Vehicle Detection and Classification through Semantic Segmentation of Aerial Images. In Remote Sensing, 9 (4): page 1-18, 2017. doi  www 
  1. Boulch, A.; Guerry, J.; Le Saux, B. and Audebert, N. SnapNet: 3D point cloud semantic labeling with 2D deep segmentation networks. In Computers and Graphics, 71: 189-198, 2017. doi  www 

Articles de conférence

  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Réseaux de neurones profonds et fusion de données pour la segmentation sémantique d'images aériennes. In ORASIS, Colleville-sur-Mer, France, 2017. www 
  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Fusion of Heterogeneous Data in Convolutional Networks for Urban Semantic Labeling (Invited Paper). In Joint Urban Remote Sensing Event (JURSE), Dubai, United Arab Emirates, Joint Urban Remote Sensing Event 2017 , 2017. doi  www 
  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Couplage de données géographiques participatives et d'images aériennes par apprentissage profond. In GRETSI, Juan-les-Pins, France, 2017. www 
  1. Audebert, N.; Boulch, A.; Randrianarivo, H.; Le Saux, B.; Ferecatu, M.; Lefèvre, S. and Marlet, R. Deep learning for urban remote sensing. In Joint Urban Remote Sensing Event (JURSE), Dubai, United Arab Emirates, 2017. doi  www 
  1. Ben Hamida, A.; Benoit, A.; Lambert, P.; Klein, L; Ben Amar, C.; Audebert, N. and Lefèvre, S. DEEP LEARNING FOR SEMANTIC SEGMENTATION OF REMOTE SENSING IMAGES WITH RICH SPECTRAL CONTENT. In IEEE International Geoscience and Remote Sensing Symposium, Fort Worth, United States, 2017. www 
  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Joint Learning from Earth Observation and OpenStreetMap Data to Get Faster Better Semantic Maps. In EARTHVISION 2017 IEEE/ISPRS CVPR Workshop. Large Scale Computer Vision for Remote Sensing Imagery, Honolulu, United States, 2017. doi  www 

2016

Articles de conférence

  1. Audebert, N.; Le Saux, B. and Lefèvre, S. Semantic Segmentation of Earth Observation Data Using Multimodal and Multi-scale Deep Networks. In Asian Conference on Computer Vision (ACCV16), Taipei, Taiwan, 2016. doi  www 
  1. Audebert, N.; Le Saux, B. and Lefèvre, S. On the usability of deep networks for object-based image analysis. In International Conference on Geographic Object-Based Image Analysis (GEOBIA), Enschede, Netherlands, 2016. www 
  1. Audebert, N.; Le Saux, B. and Lefèvre, S. How Useful is Region-based Classification of Remote Sensing Images in a Deep Learning Framework?. In IEEE International Geosciences and Remote Sensing Symposium (IGARSS), Beijing, China, 2016. doi  www 
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