Multitasking learning method using deep neural networks: application to the identification of respiratory suffering

Type
Doctoral project
Start date
1 Sep 2019
End date
31 Aug 2022
Location
Paris

Multitasking learning method using deep neural networks: application to the identification of respiratory suffering

Start date
1 Sep 2019
End date
31 Aug 2022
Type
Doctoral project
Location
Paris

Dyspnea is a threatening sensation of respiratory discomfort and alleviating it is a primary target in the management of patients who experience it.

This is particularly difficult when verbal communication is impaired or impossible (due to impaired consciousness, ventilatory support, or disease-related language disorders). The aim of this thesis is to design robust automatic facial expression analysis methods that rely on transfer learning and multitasking to identify, characterize, and monitor respiratory discomfort in the absence of direct human interaction. This study provides long-term prospects for innovative applications such as the automatic monitoring of intubated patients or the design of intelligent ventilators that can adapt to the patient's sense of discomfort.