Location-based species recommendation -geolifeclef 2019 challenge, CLEF working notes, p.2019, 2019. ,
A compilation of environmental geographic rasters for sdm covering france (version 1) [data set ,
, , 2019.
Pl@ntnet queries 2017-2018 in france, Zenodo, 2019. ,
Overview of geolifeclef 2019: plant species prediction using environment and animal occurrences, CLEF working notes 2019, 2019.,
URL : https://hal.archives-ouvertes.fr/hal-02190170
Sensor network for the monitoring of ecosystem: Bird species recognition. In: Intelligent Sensors, Sensor Networks and Information, 2007. ,
Bird sound classification using convolutional neural networks, CLEF working notes 2019, 2019. ,
Plant identification on amazonian and guiana shield flora: Neuon submission to lifeclef 2019 plant, CLEF (Working Notes, 2019. ,
Bird species identification using neural networks, CLEF working notes 2019, 2019. ,
Non-local densenet for plant clef 2019 contest, CLEF (Working Notes, 2019. ,
Automated species identification: why not?, Philosophical Transactions of the Royal Society of London B, vol.359, pp.655-667, 1444. ,
Plant identification using deep neural networks via optimization of transfer learning parameters, Neurocomputing, vol.235, pp.228-235, 2017. ,
, Proc. 1st workshop on Machine Learning for Bioacoustics -ICML4B. ICML, 2013.
Plant identification based on noisy web data: the amazing performance of deep learning, CLEF 2017-Conference and Labs of the Evaluation Forum, pp.1-13, 2017. ,
Plant identification based on noisy web data: the amazing performance of deep learning, Working Notes of CLEF 2017, 2017. ,
Overview of expertlifeclef 2018: how far automated identification systems are from the best experts ?, CLEF working notes 2018, 2018. ,
Overview of lifeclef plant identification task 2019: diving into data deficient tropical countries, Working Notes of CLEF 2019, 2019. ,
The imageclef 2013 plant identification task, CLEF 2013, 2013. ,
, The imageclef 2011 plant images classification task. In: CLEF 2011, 2011.
Imageclef2012 plant images identification task, CLEF 2012, 2012. ,
The imageclef plant identification task, Proceedings of the 2nd ACM international workshop on Multimedia analysis for ecological data, pp.23-28, 2013. ,
Inception-v3 based method of lifeclef 2019 bird recognition, CLEF working notes 2019, 2019. ,
Interactive plant identification based on social image data, Ecological Informatics, vol.23, pp.22-34, 2014.,
URL : https://hal.archives-ouvertes.fr/hal-00908872
Overview of birdclef 2019: Large-scale bird recognition in soundscapes, CLEF (Working Notes, 2019.,
URL : https://hal.archives-ouvertes.fr/hal-02345644
The unreasonable effectiveness of noisy data for fine-grained recognition, European Conference on Computer Vision, pp.301-320, 2016. ,
, Species recommendation using machine learning -geolifeclef 2019. CLEF working notes 2019, 2019.
Bird species identification in soundscapes, CLEF working notes 2019, 2019. ,
Contour matching for a fish recognition and migration-monitoring system, Optics East, pp.37-48, 2004. ,
Multi-organ plant classification based on convolutional and recurrent neural networks, IEEE Transactions on Image Processing, vol.27, issue.9, pp.4287-4301, 2018. ,
Species recommendation using intensity models and sampling bias correction (geolifeclef 2019: Lof of lof team), CLEF working notes 2019, 2019.,
URL : https://hal.archives-ouvertes.fr/hal-02288944
Plant prediction from cnn model trained with other kingdom species (geolifeclef 2019: Lirmm team), CLEF working notes, p.2019, 2019. ,
, NIPS Int. Conf.: Proc. Neural Information Processing Scaled for Bioacoustics, from Neurons to Big Data, 2013.
Recognition of the amazonian flora by inception networks with test-time class prior estimation, CLEF (Working Notes, 2019. ,
Species recommendation using environment and biotic associations, CLEF working notes, p.2019, 2019. ,
A toolbox for animal call recognition, Bioacoustics, vol.21, issue.2, pp.107-125, 2012. ,
Automated species recognition of antbirds in a mexican rainforest using hidden markov models, The Journal of the Acoustical Society of America, vol.123, p.2424, 2008. ,