International audienceLearning word meanings during natural interaction with a human faces noise and ambiguity that can be solved by analysing regularities across different situations. We propose a model of this cross-situational learning capacity and apply it to learning nouns and adjectives from noisy and ambiguous speeches and continuous visual input. This model uses two different strategy: a statistical filtering to remove noise in the speech part and the Non Negative Matrix Factorization algorithm to discover word-meaning in the visual domain. We present experiments on learning object names and color names showing the performance of the model in real interactions with humans, dealing in particular with strong noise in the speech recogn...
International audienceFuture intelligent robots are expected to be able to adapt continuously to the...
For robots to effectively bootstrap the acquisition of language, they must handle referential uncert...
Spoken conversation between two present interlocutors is the foundation of natural language interact...
International audienceHumans can learn word-object associations from ambiguous data using cross-situ...
The issue of how children learn the meaning of words is fundamental to developmental psychology. The...
Future applications of robotics, especially personal service robots, will require continuous adaptab...
The issue of how children learn the meaning of words is fundamental to developmental psychology. The...
International audienceUnderstanding the mechanisms enabling children to learn rapidly word-to-meanin...
Future applications of robotics, especially personal service robots, will require continuous adaptab...
The issue of how children learn the meaning of words is fundamental to developmental psychology. The...
International audienceHumans can learn word-object associations from ambiguous data using cross-situ...
https://splu-robonlp2021.github.io/International audienceHow pre-trained transformer-based language ...
How do children acquire language through unsupervised or noisy supervision? How do their brain proce...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
International audienceFuture intelligent robots are expected to be able to adapt continuously to the...
For robots to effectively bootstrap the acquisition of language, they must handle referential uncert...
Spoken conversation between two present interlocutors is the foundation of natural language interact...
International audienceHumans can learn word-object associations from ambiguous data using cross-situ...
The issue of how children learn the meaning of words is fundamental to developmental psychology. The...
Future applications of robotics, especially personal service robots, will require continuous adaptab...
The issue of how children learn the meaning of words is fundamental to developmental psychology. The...
International audienceUnderstanding the mechanisms enabling children to learn rapidly word-to-meanin...
Future applications of robotics, especially personal service robots, will require continuous adaptab...
The issue of how children learn the meaning of words is fundamental to developmental psychology. The...
International audienceHumans can learn word-object associations from ambiguous data using cross-situ...
https://splu-robonlp2021.github.io/International audienceHow pre-trained transformer-based language ...
How do children acquire language through unsupervised or noisy supervision? How do their brain proce...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
International audienceFuture intelligent robots are expected to be able to adapt continuously to the...
For robots to effectively bootstrap the acquisition of language, they must handle referential uncert...
Spoken conversation between two present interlocutors is the foundation of natural language interact...