We present a system for object recognition that is largely inspired by physiologically identified processing streams in the visual cortex, specifically in the ventral stream. It consists of neural units organized in a hierarchy of layers with encoding features of increasing complexity. A key feature of the system is that the neural units learn their preferred patterns from visual input alone. Through this "soft wiring" of neural units the system becomes tuned for target object classes through passive visual experience and no labels are required in this stage. Object labels are only introduced in the last step to train a classifier on the system's output. While this tuning process is purely feed-forward we also present a neural mechanism for...
The ventral visual stream underlies key human visual object recognition abilities. However, neural e...
In this paper we discuss the biological plausibility of the object recognition system described in d...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
We present a neural-based learning system for object recognition in still gray-scale images, The sys...
We present a neural-based learning system for object recognition in still gray-scale images. The sys...
Over the past 40 years, neurobiology and computational neuroscience has proved that deeper understan...
This thesis focuses on the topics of biologically inspired hierarchical machine learning methods for...
In this paper, a new artificial neural network model is proposed for visual object recognition, in w...
Electrophysiological studies have shown that mammalian primary visual cortex are selective for the o...
Abstract. In this paper we propose an object recognition system imple-menting three basic principles...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
We describe a biologically-inspired system for classifying objects in still images. Our system learn...
Human brain is an information processing system, which is perfectly designed to deal with complex vi...
A preprocessor based on a computational model of simple cells in the mammalian primary visual cortex...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
The ventral visual stream underlies key human visual object recognition abilities. However, neural e...
In this paper we discuss the biological plausibility of the object recognition system described in d...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
We present a neural-based learning system for object recognition in still gray-scale images, The sys...
We present a neural-based learning system for object recognition in still gray-scale images. The sys...
Over the past 40 years, neurobiology and computational neuroscience has proved that deeper understan...
This thesis focuses on the topics of biologically inspired hierarchical machine learning methods for...
In this paper, a new artificial neural network model is proposed for visual object recognition, in w...
Electrophysiological studies have shown that mammalian primary visual cortex are selective for the o...
Abstract. In this paper we propose an object recognition system imple-menting three basic principles...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
We describe a biologically-inspired system for classifying objects in still images. Our system learn...
Human brain is an information processing system, which is perfectly designed to deal with complex vi...
A preprocessor based on a computational model of simple cells in the mammalian primary visual cortex...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
The ventral visual stream underlies key human visual object recognition abilities. However, neural e...
In this paper we discuss the biological plausibility of the object recognition system described in d...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...