This is a presentation of a new system for invariant recognition of 2D objects with overlapping classes, that can not be effectively recognized with the traditional methods. The translation, scale and partial rotation invariant contour object description is transformed in a DCT spectrum space. The obtained frequency spectrums are decomposed into frequency bands in order to feed different BPG neural nets (NNs). The NNs are structured in three stages - filtering and full rotation invariance; partial recognition; general classification. The designed multi-stage BPG Neural Structure shows very good accuracy and flexibility when tested with 2D objects used in the discontinuous production. The reached speed and the opportunuty for an easy restruc...
A lot of progress in the field of invariant object recognition has been made in recent years using ...
The study discusses adaptive neuro-fuzzy methods of recognition of the multidimensional overlapping ...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
The paper deals with the invariant recognition of patterns, and aims at developing (i) their pulse-c...
than artificial systems. During the last years several basic principleswere derived fromneurophysiol...
The recognition of 3-D objects from sequences of their 2-D views is modeled by a neural architecture...
A supervised learning feedforward neural net, which combines the advantages of Neocognitron and Perc...
The thesis is about Neural Networks as applied to Vision Systems in recognizing three dimensional ob...
Analog coupled neurons (CN) can be used in trainable pattern recognition systems. A training algorit...
Abstract—This article gives all-inclusive idea into one of the main branches of pattern recognition ...
Abstract- An approach for invariant clustering and recognition of objects (situation) in dynamic env...
We present some novel schemes for (i)pulse coding for invariant representation of shape; and(ii) a n...
Abstract-Adaptive threshold logic elements called ADALINES can be used in trainable pattern recognit...
A second-order architecture is presented here for translation, rotation and scale invariant processi...
A three stage recognition architecture that can be trained to different recognition or segmentation ...
A lot of progress in the field of invariant object recognition has been made in recent years using ...
The study discusses adaptive neuro-fuzzy methods of recognition of the multidimensional overlapping ...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
The paper deals with the invariant recognition of patterns, and aims at developing (i) their pulse-c...
than artificial systems. During the last years several basic principleswere derived fromneurophysiol...
The recognition of 3-D objects from sequences of their 2-D views is modeled by a neural architecture...
A supervised learning feedforward neural net, which combines the advantages of Neocognitron and Perc...
The thesis is about Neural Networks as applied to Vision Systems in recognizing three dimensional ob...
Analog coupled neurons (CN) can be used in trainable pattern recognition systems. A training algorit...
Abstract—This article gives all-inclusive idea into one of the main branches of pattern recognition ...
Abstract- An approach for invariant clustering and recognition of objects (situation) in dynamic env...
We present some novel schemes for (i)pulse coding for invariant representation of shape; and(ii) a n...
Abstract-Adaptive threshold logic elements called ADALINES can be used in trainable pattern recognit...
A second-order architecture is presented here for translation, rotation and scale invariant processi...
A three stage recognition architecture that can be trained to different recognition or segmentation ...
A lot of progress in the field of invariant object recognition has been made in recent years using ...
The study discusses adaptive neuro-fuzzy methods of recognition of the multidimensional overlapping ...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...