The present phase of Machine Learning is characterized by supervised learning algorithms relying on large sets of labeled examples (n → ∞). The next phase is likely to focus on algorithms capable of learning from very few labeled examples (n → 1), like humans seem able to do. We propose an approach to this problem and describe the underlying theory, based on the unsupervised, automatic learning of a “good” representation for supervised learning, characterized by small sample complexity. We consider the case of visual object recognition, though the theory also applies to other domains like speech. The starting point is the conjecture, proved in specific cases, that image representations which are invariant to translation, scaling and other t...
We study the problem of learning from data representations that are invariant to transformations, an...
A means for establishing transformation-invariant representations of ob-jects is proposed and analyz...
Autonomous learning is demonstrated by living beings that learn visual invariances during their visu...
The present phase of Machine Learning is characterized by supervised learning algorithms relying on ...
Abstract: Recognition of speech, and in particular the ability to generalize and learn from small se...
There are two aspects to unsupervised learning of invariant representations of images: First, we can...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to ...
A means for establishing transformation-invariant representations of objects is proposed and analyze...
The power of deep neural networks comes mainly from huge labeled datasets. Even though it shines on ...
Recognition of speech, and in particular the ability to generalize and learn from small sets of labe...
One approach to computer object recognition and modeling the brain’s ventral stream involves unsuper...
We study unsupervised learning of occluding objects in images of visual scenes. The derived learning...
We review and apply a computational theory of the feedforward path of the ventral stream in visual c...
International audienceThis work proposes a new representation learning technique called convolutiona...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...
We study the problem of learning from data representations that are invariant to transformations, an...
A means for establishing transformation-invariant representations of ob-jects is proposed and analyz...
Autonomous learning is demonstrated by living beings that learn visual invariances during their visu...
The present phase of Machine Learning is characterized by supervised learning algorithms relying on ...
Abstract: Recognition of speech, and in particular the ability to generalize and learn from small se...
There are two aspects to unsupervised learning of invariant representations of images: First, we can...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to ...
A means for establishing transformation-invariant representations of objects is proposed and analyze...
The power of deep neural networks comes mainly from huge labeled datasets. Even though it shines on ...
Recognition of speech, and in particular the ability to generalize and learn from small sets of labe...
One approach to computer object recognition and modeling the brain’s ventral stream involves unsuper...
We study unsupervised learning of occluding objects in images of visual scenes. The derived learning...
We review and apply a computational theory of the feedforward path of the ventral stream in visual c...
International audienceThis work proposes a new representation learning technique called convolutiona...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...
We study the problem of learning from data representations that are invariant to transformations, an...
A means for establishing transformation-invariant representations of ob-jects is proposed and analyz...
Autonomous learning is demonstrated by living beings that learn visual invariances during their visu...