A connectionist system has been designed for learning and simultaneous recognition of flat industrial objects (based an the concepts of conventional and structured connectionist computing) by integrating the psychological hypotheses with the generalized Hough transform technique. The psychological facts include the evidence of separation of two regions for identification ("what it is") and pose estimation ("where it is"). The system uses the mechanism of selective attention for initial hypotheses generation. A special two-stage training paradigm has been developed for learning the structural relationships between the features and objects and the importance values of the features with respect to the objects. The performance of the system has...
Image processing systems have typically exhibited a high degree of application specificity. This mak...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...
Many cognitive tasks that are easy for humans to perform are proving difficult to emulate in compute...
A connectionist system has been designed for learning and simultaneous recognition of flat industria...
Abstract-A connectionist system has been designed for learn-ing and simultaneous recognition of liat...
An overview of different connectionist approaches for object recognition is presented. These approac...
A difficult problem in vision research is specifying how meaningful objects are recognized using the...
Despite several decades of research in the field of computer vision, there still exists no recogniti...
Computational or information-processing theories of vision describe object recognition in terms of a...
A difficult problem in vision research is specifying how meaningful objects are recognized using the...
This paper presents a new connectionist model of the grounding of linguistic quantifiers in percepti...
Distributed connectionist models of mental representation (also termed PDP or parallel distributed p...
This paper introduces a new approach to assess visual representations under-lying the recognition of...
A connectionist architecture is developed that can be used for modeling choice probabilities and rea...
Thesis (Ph.D.)--University of Adelaide, Depts. of Psychology and Electrical and Electronic Engineeri...
Image processing systems have typically exhibited a high degree of application specificity. This mak...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...
Many cognitive tasks that are easy for humans to perform are proving difficult to emulate in compute...
A connectionist system has been designed for learning and simultaneous recognition of flat industria...
Abstract-A connectionist system has been designed for learn-ing and simultaneous recognition of liat...
An overview of different connectionist approaches for object recognition is presented. These approac...
A difficult problem in vision research is specifying how meaningful objects are recognized using the...
Despite several decades of research in the field of computer vision, there still exists no recogniti...
Computational or information-processing theories of vision describe object recognition in terms of a...
A difficult problem in vision research is specifying how meaningful objects are recognized using the...
This paper presents a new connectionist model of the grounding of linguistic quantifiers in percepti...
Distributed connectionist models of mental representation (also termed PDP or parallel distributed p...
This paper introduces a new approach to assess visual representations under-lying the recognition of...
A connectionist architecture is developed that can be used for modeling choice probabilities and rea...
Thesis (Ph.D.)--University of Adelaide, Depts. of Psychology and Electrical and Electronic Engineeri...
Image processing systems have typically exhibited a high degree of application specificity. This mak...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...
Many cognitive tasks that are easy for humans to perform are proving difficult to emulate in compute...