We present a new recognition system motivated by human vision for the detection and recognition of objects in real-world images. A computational attention module finds regions of interest in an image and a classifier searches for objects only in these regions. This enables a significantly faster classification. We show how name plates in an office environment are detected by the visual attention module and reliably recognized by the classifier
Machine vision is still a challenging topic and attracts researchers to carry out researches in this...
We propose a visual recognition system that is designed for fine-grained visual categorization. The ...
In this paper, a novel model of object-based visual attention extending Duncan's Integrated Com...
In this paper, we propose a visual attention module that automatically detects the regions of an inp...
In this paper, we propose a visual attention module that automatically detects the regions of an inp...
This thesis presents a novel method of evaluating computational attention operators, which select lo...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
The thesis presents an algorithm for object detection based on a computational model of visual atten...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
We propose a visual recognition system that is designed for fine-grained visual categorization. The ...
In this paper, we present a new recognition system for the fast detection and classification of obje...
We propose a visual recognition system that is designed for fine-grained visual categorization. The ...
This thesis is all about the visual attention, starting from understanding the human visual system u...
An attention-based image recognition model is proposed. When analyze complex visual field or pattern...
In this paper, we propose a novel selective search method to speed up the object detection via categ...
Machine vision is still a challenging topic and attracts researchers to carry out researches in this...
We propose a visual recognition system that is designed for fine-grained visual categorization. The ...
In this paper, a novel model of object-based visual attention extending Duncan's Integrated Com...
In this paper, we propose a visual attention module that automatically detects the regions of an inp...
In this paper, we propose a visual attention module that automatically detects the regions of an inp...
This thesis presents a novel method of evaluating computational attention operators, which select lo...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
The thesis presents an algorithm for object detection based on a computational model of visual atten...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
We propose a visual recognition system that is designed for fine-grained visual categorization. The ...
In this paper, we present a new recognition system for the fast detection and classification of obje...
We propose a visual recognition system that is designed for fine-grained visual categorization. The ...
This thesis is all about the visual attention, starting from understanding the human visual system u...
An attention-based image recognition model is proposed. When analyze complex visual field or pattern...
In this paper, we propose a novel selective search method to speed up the object detection via categ...
Machine vision is still a challenging topic and attracts researchers to carry out researches in this...
We propose a visual recognition system that is designed for fine-grained visual categorization. The ...
In this paper, a novel model of object-based visual attention extending Duncan's Integrated Com...