This article proposes a framework for model-based point pattern learning using point process theory. Likelihood functions for point pattern data derived from point process theory enable principled yet conceptually transparent extensions of learning tasks, such as classification, novelty detection and clustering, to point pattern data. Furthermore, tractable point pattern models as well as solutions for learning and decision making from point pattern data are developed
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
Statistically sound pattern discovery harnesses the rigour of statistical hypothesis testing to over...
The problem of novelty or anomaly detection refers to the ability to automatically identify data sam...
This article proposes a framework for model-based point pattern learning using point process theory....
Point pattern data, also known as multiple instance data or bags, are abundant in nature and applica...
Novelty detection is a particular example of pattern recognition identifying patterns that departure...
© 2016 IEEE. Point patterns are sets or multi-sets of unordered elements that can be found in numero...
Clustering is one of the most common unsupervised learning tasks in machine learning and data mining...
This thesis describes novel approaches to learning from time series and point processes, including l...
We introduce a flexible spatial point process model for spatial point patterns exhibiting linear str...
Novelty detection or one-class classification starts from a model describing some type of 'normal be...
Many observed spatial point patterns contain points placed roughly on line segments. Point patterns ...
We study the problem of identifying shape classes in point clouds. These clouds contain sampled poin...
Abstract—A developing agent learns a model of the world by observing regularities occurring in its s...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
Statistically sound pattern discovery harnesses the rigour of statistical hypothesis testing to over...
The problem of novelty or anomaly detection refers to the ability to automatically identify data sam...
This article proposes a framework for model-based point pattern learning using point process theory....
Point pattern data, also known as multiple instance data or bags, are abundant in nature and applica...
Novelty detection is a particular example of pattern recognition identifying patterns that departure...
© 2016 IEEE. Point patterns are sets or multi-sets of unordered elements that can be found in numero...
Clustering is one of the most common unsupervised learning tasks in machine learning and data mining...
This thesis describes novel approaches to learning from time series and point processes, including l...
We introduce a flexible spatial point process model for spatial point patterns exhibiting linear str...
Novelty detection or one-class classification starts from a model describing some type of 'normal be...
Many observed spatial point patterns contain points placed roughly on line segments. Point patterns ...
We study the problem of identifying shape classes in point clouds. These clouds contain sampled poin...
Abstract—A developing agent learns a model of the world by observing regularities occurring in its s...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
Statistically sound pattern discovery harnesses the rigour of statistical hypothesis testing to over...
The problem of novelty or anomaly detection refers to the ability to automatically identify data sam...