Bax I, Heidemann G, Ritter H. Hierarchical feed-forward network for object detection tasks. Optical Engineering. 2006;45(6): 067203.Recent research on neocognitron-like neural feed-forward architectures, which have formerly been successfully applied to the recognition of artificial stimuli such as paperclip objects, now also opens up application to more natural stimuli. Such networks exhibit high-recognition performance with respect to translation, rotation, scaling and cluttered surroundings. In this contribution, we introduce a new type of hierarchical model, which is trained using a non-negative matrix factorization algorithm. In contrast to previous work, our approach cannot only classify objects but is also capable of rapid object dete...
This paper describes a neural network approach to multiclass object detection problems in which both...
The paper presents a novel artificial neural network type, which is based on the learning rule of th...
This research is concerned with the application of neural network techniques to the problems of clas...
We present a neural-based learning system for object recognition in still gray-scale images, The sys...
We present a system for object recognition that is largely inspired by physiologically identified pr...
Bax I, Heidemann G, Ritter H. Face Detection and Identification Using a Hierarchical Feed-forward Re...
A supervised learning feedforward neural net, which combines the advantages of Neocognitron and Perc...
We have recently witnessed the revolution of deep learning and convolutional neural networks enabled...
We present a method for performing hierarchical object detection in images guided by a deep reinforc...
Human visual perception mechanism is known to be effective and fast for object recognition problems ...
The feedforward multilayer perceptron (MLP) with back-propagation of error is described. Since use o...
Abstract. A neural network model for a mechanism of visual pattern recognition is proposed in this p...
This thesis deals with biologically-inspired interactive neural networks for the task of object reco...
This paper presents a new artificial neuron model capable of learning its receptive field in the top...
ii In this thesis, we present a method for learning problem-specific hierarchical features spe-ciali...
This paper describes a neural network approach to multiclass object detection problems in which both...
The paper presents a novel artificial neural network type, which is based on the learning rule of th...
This research is concerned with the application of neural network techniques to the problems of clas...
We present a neural-based learning system for object recognition in still gray-scale images, The sys...
We present a system for object recognition that is largely inspired by physiologically identified pr...
Bax I, Heidemann G, Ritter H. Face Detection and Identification Using a Hierarchical Feed-forward Re...
A supervised learning feedforward neural net, which combines the advantages of Neocognitron and Perc...
We have recently witnessed the revolution of deep learning and convolutional neural networks enabled...
We present a method for performing hierarchical object detection in images guided by a deep reinforc...
Human visual perception mechanism is known to be effective and fast for object recognition problems ...
The feedforward multilayer perceptron (MLP) with back-propagation of error is described. Since use o...
Abstract. A neural network model for a mechanism of visual pattern recognition is proposed in this p...
This thesis deals with biologically-inspired interactive neural networks for the task of object reco...
This paper presents a new artificial neuron model capable of learning its receptive field in the top...
ii In this thesis, we present a method for learning problem-specific hierarchical features spe-ciali...
This paper describes a neural network approach to multiclass object detection problems in which both...
The paper presents a novel artificial neural network type, which is based on the learning rule of th...
This research is concerned with the application of neural network techniques to the problems of clas...