This paper demonstrates a new approach towards object recognition founded on the development of Neural Network classifiers and Bayesian Networks. The mapping from segmented image region descriptors to semantically meaningful class membership terms is achieved using Neural Networks. Bayesian Networks are then employed to probabilistically detect objects within an image by means of relating region class labels and their surrounding environments. Furthermore, it makes use of an intermediate level of image representation and demonstrates how object recognition can be achieved in this way
In this paper we report on an approach to learning object models for use in recognition and reconstr...
We present a so-called Neural Map, a novel memory framework for visual object recognition and catego...
The paper presents a novel artificial neural network type, which is based on the learning rule of th...
The scenario used focuses on object recognition in an office environment scene with the goal of clas...
Even if some of previous approaches prove their effectiveness for tightly controlled environments su...
The focus of this thesis is on the emerging technology known as Neural Networks which has recently b...
Artificial neural networks are the best and most popular method for classifying images and identifyi...
In this paper, the performance of the commonly used neural-network-based classifiers is investigated...
Machine learning algorithms have been successfully utilized in various systems/devices. They have th...
A robust and accurate object recognition tool is presented in this paper. The paper introduced the u...
Understanding and interacting with one’s environment requires parsing the image of the environment ...
We present an architecture for object recognition based on artificial neural networks (ANN). The sys...
The motivation for this thesis was a very practical one, in that I was looking for a generic framewo...
This paper presents a method for detecting complex man-made-objects in images. The detection model i...
This paper presents a neural network based system for 3-D object recognition and localization. A new...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
We present a so-called Neural Map, a novel memory framework for visual object recognition and catego...
The paper presents a novel artificial neural network type, which is based on the learning rule of th...
The scenario used focuses on object recognition in an office environment scene with the goal of clas...
Even if some of previous approaches prove their effectiveness for tightly controlled environments su...
The focus of this thesis is on the emerging technology known as Neural Networks which has recently b...
Artificial neural networks are the best and most popular method for classifying images and identifyi...
In this paper, the performance of the commonly used neural-network-based classifiers is investigated...
Machine learning algorithms have been successfully utilized in various systems/devices. They have th...
A robust and accurate object recognition tool is presented in this paper. The paper introduced the u...
Understanding and interacting with one’s environment requires parsing the image of the environment ...
We present an architecture for object recognition based on artificial neural networks (ANN). The sys...
The motivation for this thesis was a very practical one, in that I was looking for a generic framewo...
This paper presents a method for detecting complex man-made-objects in images. The detection model i...
This paper presents a neural network based system for 3-D object recognition and localization. A new...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
We present a so-called Neural Map, a novel memory framework for visual object recognition and catego...
The paper presents a novel artificial neural network type, which is based on the learning rule of th...