To characterize a physical system to behave as desired, either its underlying governing rules must be known a priori or the system itself be accurately measured. The complexity of full measurements of the system scales with its size. When exposed to real-world conditions, such as perturbations or time-varying settings, the system calibrated for a fixed working condition might require non-trivial re-calibration, a process that could be prohibitively expensive, inefficient and impractical for real-world use cases. In this thesis, a learning procedure for solving highly ill-posed problems of modeling a system's forward and backward response functions is proposed. In particular, deep neural networks are used to infer the input of a system from ...
International audienceUnderstanding how sensory systems process information depends crucially on ide...
∗ denotes equal contribution Abstract—Grasping and manipulating a previously unknown object without ...
International audienceEffective inclusion of physics-based knowledge into deep neural network models...
Analog computers model logical and mathematical operations by exploiting the physical properties of ...
The output of physical systems, such as the scrambled pattern formed by shining the spot of a laser ...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
In this thesis, we examine two kinds of models of the primary visual cor- tex: a deep neural network...
Neural networks are developed for controlling a robot-arm and camera system and for processing image...
Human scene understanding involves not just localizing objects,but also inferring latent attributes ...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
Retinal prostheses for treating incurable blindness are designed to electrically stimulate surviving...
International audienceUnderstanding how sensory systems process information depends crucially on ide...
∗ denotes equal contribution Abstract—Grasping and manipulating a previously unknown object without ...
International audienceEffective inclusion of physics-based knowledge into deep neural network models...
Analog computers model logical and mathematical operations by exploiting the physical properties of ...
The output of physical systems, such as the scrambled pattern formed by shining the spot of a laser ...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
In this thesis, we examine two kinds of models of the primary visual cor- tex: a deep neural network...
Neural networks are developed for controlling a robot-arm and camera system and for processing image...
Human scene understanding involves not just localizing objects,but also inferring latent attributes ...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
Retinal prostheses for treating incurable blindness are designed to electrically stimulate surviving...
International audienceUnderstanding how sensory systems process information depends crucially on ide...
∗ denotes equal contribution Abstract—Grasping and manipulating a previously unknown object without ...
International audienceEffective inclusion of physics-based knowledge into deep neural network models...