This paper presents a general strategy for designing efficient visual operators. The approach is highly task oriented and what constitutes the relevant information is defined by a set of examples. The examples are pairs of images displaying a strong dependence in the chosen feature but are otherwise independent. Particularly important concepts in the work are mutual information and canonical correlation. Visual operators learned from examples are presented, e.g. local shift invariant orientation operators and image content invariant disparity operators. Interesting similarities to biological vision functions are observed.Also as Technical Report LiTH-ISY-R-225
In order to perform object recognition, it is necessary to form perceptual representations that are ...
This paper examines the processing of visual information beyond the creation of the early represen...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
This paper presents a general strategy for designing efficient visual operators. The approach is hig...
This paper presents a general strategy for designing efficient visual operators. The approach is hig...
This paper presents a general strategy for designing eÆcient visual operators. The approach is highl...
This paper presents a general strategy for automated generation of efficient representations in visi...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
A highly visual way to understand and develop computer vision algorithms is proposed. Image processi...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
This thesis investigates how visual similarities help to learn models robust to bias for computer vi...
Humans learn robust and efficient strategies for visual tasks through interaction with their environ...
We introduce a new class of Reinforcement Learning algorithms designed to operate in perceptual spac...
Understanding images requires rich background knowledge that is not often written down and hard for ...
Human beings exhibit rapid learning when presented with a small number of images of a new object. A ...
In order to perform object recognition, it is necessary to form perceptual representations that are ...
This paper examines the processing of visual information beyond the creation of the early represen...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
This paper presents a general strategy for designing efficient visual operators. The approach is hig...
This paper presents a general strategy for designing efficient visual operators. The approach is hig...
This paper presents a general strategy for designing eÆcient visual operators. The approach is highl...
This paper presents a general strategy for automated generation of efficient representations in visi...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
A highly visual way to understand and develop computer vision algorithms is proposed. Image processi...
This report describes an idea based on the work in [1], where an algorithm for learning automatic re...
This thesis investigates how visual similarities help to learn models robust to bias for computer vi...
Humans learn robust and efficient strategies for visual tasks through interaction with their environ...
We introduce a new class of Reinforcement Learning algorithms designed to operate in perceptual spac...
Understanding images requires rich background knowledge that is not often written down and hard for ...
Human beings exhibit rapid learning when presented with a small number of images of a new object. A ...
In order to perform object recognition, it is necessary to form perceptual representations that are ...
This paper examines the processing of visual information beyond the creation of the early represen...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...