International audienceThis paper addresses the understanding and characterization of residual networks (ResNet), which are among the state-of-the-art deep learning architectures for a variety of supervised learning problems. We focus on the mapping component of ResNets, which map the embedding space towards a new unknown space where the prediction or classification can be stated according to linear criteria. We show that this mapping component can be regarded as the numerical implementation of continuous flows of diffeomorphisms governed by ordinary differential equations. Especially, ResNets with shared weights are fully characterized as numerical approximation of exponential diffeomorphic operators. We stress both theoretically and numeri...
Deep residual networks (ResNets) have shown state-of-the-art performance in various real-world appli...
Recently, deep residual networks have been successfully applied in many computer vision and natural ...
We show that ResNets converge, in the infinite depth limit, to a generalization of image registratio...
International audienceThis paper addresses the understanding and characterization of residual networ...
We introduce a GP generalization of ResNets (including ResNets as a particular case). We show that R...
Submitted to T-PAMIIn deformable registration, the geometric framework - large deformation diffeomor...
Diffusion, a fundamental internal mechanism emerging in many physical processes, describes the inter...
Residual connections are ubiquitous in deep learning, since besides residual networks and their vari...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Deep learning has made significant applications in the field of data science and natural science. So...
Various powerful deep neural network architectures have made great contribution to the exciting succ...
We investigate the asymptotic properties of deep Residual networks (ResNets) as the number of layers...
We propose a scalable framework for the learning of high-dimensional parametric maps via adaptively ...
In this paper we propose a Deep Learning architecture to approximate diffeomorphisms diffeotopic to ...
In this article, we explore the effects of memory terms in continuous-layer Deep Residual Networks b...
Deep residual networks (ResNets) have shown state-of-the-art performance in various real-world appli...
Recently, deep residual networks have been successfully applied in many computer vision and natural ...
We show that ResNets converge, in the infinite depth limit, to a generalization of image registratio...
International audienceThis paper addresses the understanding and characterization of residual networ...
We introduce a GP generalization of ResNets (including ResNets as a particular case). We show that R...
Submitted to T-PAMIIn deformable registration, the geometric framework - large deformation diffeomor...
Diffusion, a fundamental internal mechanism emerging in many physical processes, describes the inter...
Residual connections are ubiquitous in deep learning, since besides residual networks and their vari...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Deep learning has made significant applications in the field of data science and natural science. So...
Various powerful deep neural network architectures have made great contribution to the exciting succ...
We investigate the asymptotic properties of deep Residual networks (ResNets) as the number of layers...
We propose a scalable framework for the learning of high-dimensional parametric maps via adaptively ...
In this paper we propose a Deep Learning architecture to approximate diffeomorphisms diffeotopic to ...
In this article, we explore the effects of memory terms in continuous-layer Deep Residual Networks b...
Deep residual networks (ResNets) have shown state-of-the-art performance in various real-world appli...
Recently, deep residual networks have been successfully applied in many computer vision and natural ...
We show that ResNets converge, in the infinite depth limit, to a generalization of image registratio...