A lot of progress in the field of invariant object recognition has been made in recent years using so called deep neural networks with several layers to be trained which can learn patterns of increasing complexity. This architectural feature can alreay be found in older neural models as, e.g., the Neocognitron and HMAX but also newer ones as Convolutional Nets. Additionally researchers emphasized the importance of temporal continuity in input data and devised learning rules utilizing it (e.g. the trace rule by F\"oldiak used by Rolls in VisNet). Finally Jeff Hawkins collected a lot of these ideas concerning functioning of the neocortex in a coherent framework and proposed three basic principles for neocortical computations (later...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...
A means for establishing transformation-invariant representations of objects is proposed and analyze...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...
A lot of progress in the field of invariant object recognition has been made in recent years using...
than artificial systems. During the last years several basic principleswere derived fromneurophysiol...
Abstract. We propose the Temporal Correlation Net (TCN) as an ob-ject recognition system implementin...
It has been proposed that invariant pattern recognition might be implemented using a learning rule t...
A competitive network is described which learns to classify objects on the basis of temporal as well...
A competitive network is described which learns to classify objects on the basis of temporal as well...
Real world objects have persistent structure. However, as we move about in the world the spatio-temp...
On one hand, the visual system has the ability to differentiate between very similar objects. On th...
Abstract. In this paper we propose an object recognition system imple-menting three basic principles...
Neurophysiological evidence for invariant representations of objects and faces in the primate inferi...
We show in a 4-layer competitive neuronal network that continuous transformation learning, which use...
AbstractWe show in a 4-layer competitive neuronal network that continuous transformation learning, w...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...
A means for establishing transformation-invariant representations of objects is proposed and analyze...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...
A lot of progress in the field of invariant object recognition has been made in recent years using...
than artificial systems. During the last years several basic principleswere derived fromneurophysiol...
Abstract. We propose the Temporal Correlation Net (TCN) as an ob-ject recognition system implementin...
It has been proposed that invariant pattern recognition might be implemented using a learning rule t...
A competitive network is described which learns to classify objects on the basis of temporal as well...
A competitive network is described which learns to classify objects on the basis of temporal as well...
Real world objects have persistent structure. However, as we move about in the world the spatio-temp...
On one hand, the visual system has the ability to differentiate between very similar objects. On th...
Abstract. In this paper we propose an object recognition system imple-menting three basic principles...
Neurophysiological evidence for invariant representations of objects and faces in the primate inferi...
We show in a 4-layer competitive neuronal network that continuous transformation learning, which use...
AbstractWe show in a 4-layer competitive neuronal network that continuous transformation learning, w...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...
A means for establishing transformation-invariant representations of objects is proposed and analyze...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...