Humans regularly reason from visual information, engaging in simple object search in a scene to abstract mathematical thinking. In recent decades, the field of machine learning has extensively focused on visual tasks with the aim to model human visual reasoning. However, machine learning approaches still do not match human performance on simple visual tasks such as the Synthetic Visual Reasoning Test (SVRT; Fleuret et al. 2011). While this set of tasks is trivial for humans to solve, the current state-of-the-art machine learning algorithms struggle with the SVRT. We argue that the reason for the difference in human reasoning and machines’ performance in the SVRT is the ways humans and machines represent the world and v...
Relational reasoning is an emerging theme in Machine Learning in general and in Computer Vision in p...
Accepted at IJCAI19 Neural-Symbolic Learning and Reasoning Workshop (https://sites.google.com/view/n...
Is analogical reasoning a task that must be learned to solve from scratch by applying deep learning ...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...
Visual understanding requires comprehending complex visual relations between objects within a scene....
Relational reasoning is central to many cognitive processes, ranging from “lower” processes like ob...
Deep neural networks learn representations of data to facilitate problem-solving in their respective...
Human visual reasoning is characterized by an ability to identify abstract patterns from only a smal...
People readily generalize knowledge to novel domains and stimuli. We present a theory, instantiated ...
In the history of the quest for human-level artificial intelligence, a number of rival paradigms hav...
In visual reasoning, the achievement of deep learning significantly improved the accuracy of results...
Reasoning about visual relationships is central to how humans interpret the visual world. This task ...
In the field of visual reasoning, image features are widely used as the input of neural networks to ...
How a system represents information tightly constrains the kinds of problems it can solve. Humans ro...
International audienceA fundamental component of human vision is our ability to parse complex visual...
Relational reasoning is an emerging theme in Machine Learning in general and in Computer Vision in p...
Accepted at IJCAI19 Neural-Symbolic Learning and Reasoning Workshop (https://sites.google.com/view/n...
Is analogical reasoning a task that must be learned to solve from scratch by applying deep learning ...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...
Visual understanding requires comprehending complex visual relations between objects within a scene....
Relational reasoning is central to many cognitive processes, ranging from “lower” processes like ob...
Deep neural networks learn representations of data to facilitate problem-solving in their respective...
Human visual reasoning is characterized by an ability to identify abstract patterns from only a smal...
People readily generalize knowledge to novel domains and stimuli. We present a theory, instantiated ...
In the history of the quest for human-level artificial intelligence, a number of rival paradigms hav...
In visual reasoning, the achievement of deep learning significantly improved the accuracy of results...
Reasoning about visual relationships is central to how humans interpret the visual world. This task ...
In the field of visual reasoning, image features are widely used as the input of neural networks to ...
How a system represents information tightly constrains the kinds of problems it can solve. Humans ro...
International audienceA fundamental component of human vision is our ability to parse complex visual...
Relational reasoning is an emerging theme in Machine Learning in general and in Computer Vision in p...
Accepted at IJCAI19 Neural-Symbolic Learning and Reasoning Workshop (https://sites.google.com/view/n...
Is analogical reasoning a task that must be learned to solve from scratch by applying deep learning ...