We introduce a new framework for manipulating and interacting with deep generative models that we call network bending. We present a comprehensive set of deterministic transformations that can be inserted as distinct layers into the computational graph of a trained generative neural network and applied during inference. In addition, we present a novel algorithm for analysing the deep generative model and clustering features based on their spatial activation maps. This allows features to be grouped together based on spatial similarity in an unsupervised fashion. This results in the meaningful manipulation of sets of features that correspond to the generation of a broad array of semantically significant features of the generated images. We ou...
Generative Adversarial Networks (GAN) are emerging as an exciting training paradigm which promises a...
Deep Learning is based on deep neural networks trained over huge sets of examples. It enabled comp...
© 2020, Springer Nature Switzerland AG. A deep generative model such as a GAN learns to model a rich...
This paper presents the network bending framework, a new approach for manipulating and interacting w...
This paper presents the network bending framework, a new approach for manipulating and interacting w...
This paper presents the network bending framework, a new approach for manipulating and interacting w...
We investigate the role of neurons within the internal computations of deep neural networks for comp...
Generative models, especially ones that are parametrized by deep neural networks, are powerful unsup...
Deep Convolutional Neural Networks, which are a family of biologically inspired machine vision algor...
Deep Convolutional Neural Networks, which are a family of biologically inspired machine vision algor...
The generation of data has traditionally been specified using hand-crafted algorithms. However, oft...
Modern AI algorithms are rapidly becoming ubiquitous in everyday life and have even been touted as t...
The generation of data has traditionally been specified using hand-crafted algorithms. However, oft...
Over the past years, deep neural networks have achieved significant progress in a wide range of real...
We explore a method for reconstructing visual stimuli from brain activity. Using large databases of ...
Generative Adversarial Networks (GAN) are emerging as an exciting training paradigm which promises a...
Deep Learning is based on deep neural networks trained over huge sets of examples. It enabled comp...
© 2020, Springer Nature Switzerland AG. A deep generative model such as a GAN learns to model a rich...
This paper presents the network bending framework, a new approach for manipulating and interacting w...
This paper presents the network bending framework, a new approach for manipulating and interacting w...
This paper presents the network bending framework, a new approach for manipulating and interacting w...
We investigate the role of neurons within the internal computations of deep neural networks for comp...
Generative models, especially ones that are parametrized by deep neural networks, are powerful unsup...
Deep Convolutional Neural Networks, which are a family of biologically inspired machine vision algor...
Deep Convolutional Neural Networks, which are a family of biologically inspired machine vision algor...
The generation of data has traditionally been specified using hand-crafted algorithms. However, oft...
Modern AI algorithms are rapidly becoming ubiquitous in everyday life and have even been touted as t...
The generation of data has traditionally been specified using hand-crafted algorithms. However, oft...
Over the past years, deep neural networks have achieved significant progress in a wide range of real...
We explore a method for reconstructing visual stimuli from brain activity. Using large databases of ...
Generative Adversarial Networks (GAN) are emerging as an exciting training paradigm which promises a...
Deep Learning is based on deep neural networks trained over huge sets of examples. It enabled comp...
© 2020, Springer Nature Switzerland AG. A deep generative model such as a GAN learns to model a rich...