We study the problem of generating a training-free task-dependent visual classifier from text descriptions without visual samples. This \textit{Text-to-Model} (T2M) problem is closely related to zero-shot learning, but unlike previous work, a T2M model infers a model tailored to a task, taking into account all classes in the task. We analyze the symmetries of T2M, and characterize the equivariance and invariance properties of corresponding models. In light of these properties, we design an architecture based on hypernetworks that given a set of new class descriptions predicts the weights for an object recognition model which classifies images from those zero-shot classes. We demonstrate the benefits of our approach compared to zero-shot lea...
Abstract Zero-shot learning (ZSL) models use semantic representations of visual classes to transfer ...
Frequently, Text Classification is limited by insufficient training data. This problem is addressed ...
Frequently, Text Classification is limited by insufficient training data. This problem is addressed ...
The main question we address in this paper is how to use purely textual description of categories wi...
The main question we address in this paper is how to use purely textual description of categories wi...
This thesis focuses on zero-shot visual recognition, which aims to recognize images from unseen cate...
Human beings have the remarkable ability to recognize novel visual objects only based on the descrip...
In recent years, the community of natural language processing (NLP) has seen amazing progress in the...
International audienceThis paper addresses the task of learning an image clas-sifier when some categ...
There is a growing interest in dataset generation recently due to the superior generative capacity o...
In this article, we present a conceptually simple but effective framework called knowledge distillat...
Zero-shot learning (ZSL) aims at recognizing classes for which no visual sample is available at trai...
Visual recognition systems are often limited to the object categories previously trained on and thus...
International audienceThis paper addresses the task of learning an image clas-sifier when some categ...
Over the last decade, great improvements have been achieved in image classifica-tion performances f...
Abstract Zero-shot learning (ZSL) models use semantic representations of visual classes to transfer ...
Frequently, Text Classification is limited by insufficient training data. This problem is addressed ...
Frequently, Text Classification is limited by insufficient training data. This problem is addressed ...
The main question we address in this paper is how to use purely textual description of categories wi...
The main question we address in this paper is how to use purely textual description of categories wi...
This thesis focuses on zero-shot visual recognition, which aims to recognize images from unseen cate...
Human beings have the remarkable ability to recognize novel visual objects only based on the descrip...
In recent years, the community of natural language processing (NLP) has seen amazing progress in the...
International audienceThis paper addresses the task of learning an image clas-sifier when some categ...
There is a growing interest in dataset generation recently due to the superior generative capacity o...
In this article, we present a conceptually simple but effective framework called knowledge distillat...
Zero-shot learning (ZSL) aims at recognizing classes for which no visual sample is available at trai...
Visual recognition systems are often limited to the object categories previously trained on and thus...
International audienceThis paper addresses the task of learning an image clas-sifier when some categ...
Over the last decade, great improvements have been achieved in image classifica-tion performances f...
Abstract Zero-shot learning (ZSL) models use semantic representations of visual classes to transfer ...
Frequently, Text Classification is limited by insufficient training data. This problem is addressed ...
Frequently, Text Classification is limited by insufficient training data. This problem is addressed ...