Recent developments in vision-based dynamics models have helped researchers achieve state-of-the-art results in a number of fields. For instance, in model-based reinforcement learning, vision-based methods perform extremely well on a variety of games and control tasks while using orders of magnitudes less data than model-free methods. One example is GameGAN, which learns to simulate the dynamics of observed games solely from visual and action inputs. However, there is very little understanding of these models and how they work. To address this lack of understanding, we apply the Network Dissection framework to analyze vision-based dynamics prediction models. We inspect individual trained neurons in convolutional layers of these models and m...
In the past decade, deep learning has fueled a number of exciting developments in artificial intelli...
Traditional models of retinal system identification analyze the neural response to artificial stimul...
Understanding the computational principles that underlie human vision is a key challenge for neurosc...
We investigate the role of neurons within the internal computations of deep neural networks for comp...
We present a dynamic nonlinear generative model for visual motion based on a latent representation o...
Mathematical modeling has broad applications in neuroscience whether we are modeling the dynamics of...
Mathematical modeling has broad applications in neuroscience whether we are modeling the dynamics of...
International audienceIn sensory systems, a range of computational rules are presumed to be implemen...
We study the problem of synthesizing a number of likely future frames from a single input image. In ...
Systems-level neurophysiological data reveal coherent activity that is distributed across large regi...
In higher animals, complex and robust behaviors are produced by the microscopic details of large str...
Endowing robots with human-like physical reasoning abilities remains challenging. We argue that exis...
A key requirement for any agent that wishes to interact with the visual world is the ability to unde...
Recent models of spiking neuronal networks have been trained to perform behaviors in static environm...
A core problem in visual object learning is using a finite number of images of a new object to accur...
In the past decade, deep learning has fueled a number of exciting developments in artificial intelli...
Traditional models of retinal system identification analyze the neural response to artificial stimul...
Understanding the computational principles that underlie human vision is a key challenge for neurosc...
We investigate the role of neurons within the internal computations of deep neural networks for comp...
We present a dynamic nonlinear generative model for visual motion based on a latent representation o...
Mathematical modeling has broad applications in neuroscience whether we are modeling the dynamics of...
Mathematical modeling has broad applications in neuroscience whether we are modeling the dynamics of...
International audienceIn sensory systems, a range of computational rules are presumed to be implemen...
We study the problem of synthesizing a number of likely future frames from a single input image. In ...
Systems-level neurophysiological data reveal coherent activity that is distributed across large regi...
In higher animals, complex and robust behaviors are produced by the microscopic details of large str...
Endowing robots with human-like physical reasoning abilities remains challenging. We argue that exis...
A key requirement for any agent that wishes to interact with the visual world is the ability to unde...
Recent models of spiking neuronal networks have been trained to perform behaviors in static environm...
A core problem in visual object learning is using a finite number of images of a new object to accur...
In the past decade, deep learning has fueled a number of exciting developments in artificial intelli...
Traditional models of retinal system identification analyze the neural response to artificial stimul...
Understanding the computational principles that underlie human vision is a key challenge for neurosc...