Data Science and Artificial Intelligence

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!colspan="3"| 12:20 - Lunch - 14:00
 
!colspan="3"| 12:20 - Lunch - 14:00
 
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| <i>Long presentation</i> ||Argheesh Bhanot IMAGeS Online dictionary learning for single-subject fMRI data unmixing
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| <i>Long presentation</i> ||Argheesh Bhanot || IMAGeS || Online dictionary learning for single-subject fMRI data unmixing
 
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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
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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
 
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| <i>Long presentation</i> ||Hyewon Seo Other Generating 3D Facial Expressions with RNN
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| <i>Long presentation</i> ||Hyewon Seo || Other || Generating 3D Facial Expressions with RNN
 
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| <i>Long presentation</i> ||Simon Chatelin AVR Machine learning for elasticity imaging in biological soft tissue
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| <i>Long presentation</i> ||Simon Chatelin || AVR || Machine learning for elasticity imaging in biological soft tissue
 
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| <i>Long presentation</i> ||Stella MARC-ZWECKER SDC Spatio-temporal data modeling using graphs
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| <i>Long presentation</i> ||Stella MARC-ZWECKER || SDC || Spatio-temporal data modeling using graphs
 
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| <i>Long presentation</i> ||Thomas Weber CSTB RADMEL: An ensemble predictor to reveal disease-relevant missense variants with low degree of uncertainty
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| <i>Long presentation</i> ||Thomas Weber || CSTB || RADMEL: An ensemble predictor to reveal disease-relevant missense variants with low degree of uncertainty
 
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| <i>Long presentation</i> ||Baptiste Lafabregue SDC A comparison of unsupervised representation learning  methods for time series
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| <i>Long 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 18:37

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).

Google map direction

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
Long presentation Hyewon Seo Other Generating 3D Facial Expressions with RNN
Long presentation Simon Chatelin AVR Machine learning for elasticity imaging in biological soft tissue
Long presentation Stella MARC-ZWECKER SDC Spatio-temporal data modeling using graphs
Long presentation Thomas Weber CSTB RADMEL: An ensemble predictor to reveal disease-relevant missense variants with low degree of uncertainty
Long presentation Baptiste Lafabregue SDC A comparison of unsupervised representation learning methods for time series