The world is fundamentally compositional, so it is natural to think of visual recognition as the recognition of basic visually primitives that are composed according to well-defined rules. This strategy allows us to recognize unseen complex concepts from simple visual primitives. However, the current trend in visual recognition follows a data greedy approach where huge amounts of data are required to learn models for any desired visual concept. In this paper, we build on the compositionality principle and develop an "algebra" to compose classifiers for complex visual concepts. To this end, we learn neural network modules to perform boolean algebra operations on simple visual classifiers. Since these modules form a complete functional set, a...
Visual perception is one of the core building blocks of achieving general machine intelligence. Deep...
Neural network models of categorical perception (compression of within-category similarity and dilat...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...
Deep neural networks learn representations of data to facilitate problem-solving in their respective...
International audienceA fundamental component of human vision is our ability to parse complex visual...
Using object recognition in simple scenes as the task, this research focuses on two fundamental prob...
There is a trend in recent OCR development to improve system performance by combining recognition re...
Interpretation of complex scenes involves analysing multiple objects being composed of several parts...
Humans are highly efficient learners, with the ability to grasp the meaning of a new concept from ju...
We present an architecture for object recognition based on artificial neural networks (ANN). The sys...
Visual recognition of semantically meaningful entities like objects, actions, and poses in images an...
Using scene analysis as the task, this research focuses on three fundamental problems in neural netw...
Understanding and interacting with one’s environment requires parsing the image of the environment ...
Abstract — This paper shows the advantage of using neural network modularity over conventional learn...
Neural net models of categorical perception (compression of within-category similarities and separat...
Visual perception is one of the core building blocks of achieving general machine intelligence. Deep...
Neural network models of categorical perception (compression of within-category similarity and dilat...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...
Deep neural networks learn representations of data to facilitate problem-solving in their respective...
International audienceA fundamental component of human vision is our ability to parse complex visual...
Using object recognition in simple scenes as the task, this research focuses on two fundamental prob...
There is a trend in recent OCR development to improve system performance by combining recognition re...
Interpretation of complex scenes involves analysing multiple objects being composed of several parts...
Humans are highly efficient learners, with the ability to grasp the meaning of a new concept from ju...
We present an architecture for object recognition based on artificial neural networks (ANN). The sys...
Visual recognition of semantically meaningful entities like objects, actions, and poses in images an...
Using scene analysis as the task, this research focuses on three fundamental problems in neural netw...
Understanding and interacting with one’s environment requires parsing the image of the environment ...
Abstract — This paper shows the advantage of using neural network modularity over conventional learn...
Neural net models of categorical perception (compression of within-category similarities and separat...
Visual perception is one of the core building blocks of achieving general machine intelligence. Deep...
Neural network models of categorical perception (compression of within-category similarity and dilat...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...