Différences entre les versions de « Data Science and Artificial Intelligence Workshop »
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| <i>Long presentation</i> ||Birgitta Dresp-Langley || IGG || The quantization error in the Self-Organizing Map (SOM) output as a diagnostic tool for single-pixel change in complex patterns | | <i>Long presentation</i> ||Birgitta Dresp-Langley || IGG || The quantization error in the Self-Organizing Map (SOM) output as a diagnostic tool for single-pixel change in complex patterns | ||
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− | | <i> | + | | <i>Short presentation</i> ||Hyewon Seo || Other || Generating 3D Facial Expressions with RNN |
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− | | <i> | + | | <i>Short presentation</i> ||Simon Chatelin || AVR || Machine learning for elasticity imaging in biological soft tissue |
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− | | <i> | + | | <i>Short presentation</i> ||Stella MARC-ZWECKER || SDC || Spatio-temporal data modeling using graphs |
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− | | <i> | + | | <i>Short presentation</i> ||Thomas Weber || CSTB || RADMEL: An ensemble predictor to reveal disease-relevant missense variants with low degree of uncertainty |
|- | |- | ||
− | | <i> | + | | <i>Short presentation</i> ||Baptiste Lafabregue || SDC || A comparison of unsupervised representation learning methods for time series |
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Version du 30 septembre 2019 à 18:38
ICube Data Science and Artificial Intelligence
When
Thursday November 7th, 2019
9:00am - 15:30pm
Where
ICube Laboratory, 300 Bd Sébastien Brant, 67400 Illkirch-Graffenstaden
(Room A207).
Registration
If you want to attend the workshop, please register here: [link]
Temporary program
09:00 - Introduction | |||
---|---|---|---|
Long presentation | Romain Orhand | CSTB | Towards autonomy and explainability in Artificial Intelligence |
Long presentation | Vinkle Srivastav | AVR | Human Pose Estimation on Privacy-Preserving Low-Resolution Depth Images |
Short presentation | Pascal Guehl | IGG | Creative AI for Texture Synthesis |
Short presentation | Hugo Gangloff | IMAGeS | Automatic Segmentation of Atherosclerotic Cross-Sections of Arteries with Deep Learning |
Meet&Match | Yves-Andre Chapuis | MaCEPV | Accelerated Development of Materials and Devices via Data Analytics and Artificial Intelligence |
Meet&Match | Pei Zhang | CSIP | Inventive design in AI context |
Meet&Match | Enagnon Aguénounon | IPP | Fast spatial frequency imaging parameters extraction using generative network |
Meet&Match | Morgan Madec | SMH | Optical recognition of bacteria |
10:30 - Coffee break - 11:00 | |||
Long presentation | Emmanuelle Claeys | SDC | Reinforcement learning with time series |
Long presentation | Anne Jeannin-Girardon | CSTB | Transfer Learning: review and recent advances |
Short presentation | Bertrand Goldman | Other | Stellar streams in the Gaia mission area |
Short presentation | Chinedu Nwoye | AVR | Weakly-supervised convolutional LSTM approach for surgical tool tracking in laparoscopic videos. |
Short presentation | Xin Ni | CSIP | An approach merging the IDM-related knowledge |
Short presentation | Michal Parusinski | SERTIT | AI at SERTIT for remote sensing |
12:20 - Lunch - 14:00 | |||
Long presentation | Argheesh Bhanot | IMAGeS | Online dictionary learning for single-subject fMRI data unmixing |
Long presentation | Birgitta Dresp-Langley | IGG | The quantization error in the Self-Organizing Map (SOM) output as a diagnostic tool for single-pixel change in complex patterns |
Short presentation | Hyewon Seo | Other | Generating 3D Facial Expressions with RNN |
Short presentation | Simon Chatelin | AVR | Machine learning for elasticity imaging in biological soft tissue |
Short presentation | Stella MARC-ZWECKER | SDC | Spatio-temporal data modeling using graphs |
Short presentation | Thomas Weber | CSTB | RADMEL: An ensemble predictor to reveal disease-relevant missense variants with low degree of uncertainty |
Short presentation | Baptiste Lafabregue | SDC | A comparison of unsupervised representation learning methods for time series |