This paper considers a number of issues that arise when a trainable machine vision system learns directly from humans, rather than from a "cleaned" data set, i.e.\ data items which are perfectly labelled with complete accuracy. This is done within the context of a generic system for the visual surface inspection of manufactured parts. The issues treated are relevant not only to wider computer vision applications, but also to classification more generally. Some of these issues arise from the nature of humans themselves: they will be not only internally inconsistent, but will often not be completely confident about their decisions, especially if they are making decisions rapidly. People will also often differ systematically from each other i...
According to standard procedure, building a classifier is a fully automated process that follows dat...
In this paper, we would like to evaluate online learning algorithms for large-scale visual recogniti...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
This paper considers on a number of issues that arise when a trainable machine vision system learns ...
This paper considers on a number of issues that arise when a trainable machine vision system learns ...
This paper considers on a number of issues that arise when a trainable machine vision system learns ...
The most flexible and effective way to reproduce the human cognitive abilities needed to automate th...
Visual quality inspection systems nowadays require the highest possible flexibility. Therefore, the ...
In this paper we present a novel image classification framework, which is able to automatically re-c...
Although the human visual system can recognize many concepts under challengingconditions, it still h...
Image pattern classification in computer vision problems is challenging due to large, sparse input s...
For several decades researchers around the globe have been avidly investigating practical solutions ...
The solution to a supervised computer vision problem consists of an application, algorithm, input da...
In most image classification systems, the amount and quality of the training samples used to represe...
Image classification is a classical task heavily studied in computer vision and widely required in m...
According to standard procedure, building a classifier is a fully automated process that follows dat...
In this paper, we would like to evaluate online learning algorithms for large-scale visual recogniti...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
This paper considers on a number of issues that arise when a trainable machine vision system learns ...
This paper considers on a number of issues that arise when a trainable machine vision system learns ...
This paper considers on a number of issues that arise when a trainable machine vision system learns ...
The most flexible and effective way to reproduce the human cognitive abilities needed to automate th...
Visual quality inspection systems nowadays require the highest possible flexibility. Therefore, the ...
In this paper we present a novel image classification framework, which is able to automatically re-c...
Although the human visual system can recognize many concepts under challengingconditions, it still h...
Image pattern classification in computer vision problems is challenging due to large, sparse input s...
For several decades researchers around the globe have been avidly investigating practical solutions ...
The solution to a supervised computer vision problem consists of an application, algorithm, input da...
In most image classification systems, the amount and quality of the training samples used to represe...
Image classification is a classical task heavily studied in computer vision and widely required in m...
According to standard procedure, building a classifier is a fully automated process that follows dat...
In this paper, we would like to evaluate online learning algorithms for large-scale visual recogniti...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...