Time series exists in many pattern recognition and prediction application in many different industrial fields, such as medicine, biology, economy and others. In this kind of a data analytical tasks, the classification phase is one of the most important phases as it allows us to assign a class to a previously unseen record as precise as possible. In classification, past researches have shown that rules such as the 1-Nearest Neighbour with a distance measure in time domain performs well in a wide variety of application domains. However, there are many time series that are not obvious in time domain. For instance, the classification of chainsaws where the feature that represents this time series would be frequency instead of time. For such cla...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
This paper presents a multiscale visibility graph representation for time series as well as feature ...
This thesis proposes a method to analyse the dynamic behaviour of process systems using sets of text...
Time series are present in many pattern recognition applications related to medicine, biology, astro...
International audienceTime-series classification (TSC) has attracted a lot of attention in pattern r...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
Time series motifs are approximately repeated patterns found within the data. Such motifs have utili...
Référence du journal arXiv - Computer Vision and Pattern Recognition : arXiv:1710.00886v2 [cs.CV]Int...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
In recent years, time series motif discovery has emerged as perhaps the most important primitive for...
International audiencePixelwise remote sensing image classification has benefited from temporal cont...
Pixelwise remote sensing image classification has benefited from temporal contextual information enc...
The ubiquity of patterns in data mining and knowledge discovery data sets is a binding characteristi...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
Classifying multivariate time series is often dealt with by transforming the numeric series into lab...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
This paper presents a multiscale visibility graph representation for time series as well as feature ...
This thesis proposes a method to analyse the dynamic behaviour of process systems using sets of text...
Time series are present in many pattern recognition applications related to medicine, biology, astro...
International audienceTime-series classification (TSC) has attracted a lot of attention in pattern r...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
Time series motifs are approximately repeated patterns found within the data. Such motifs have utili...
Référence du journal arXiv - Computer Vision and Pattern Recognition : arXiv:1710.00886v2 [cs.CV]Int...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
In recent years, time series motif discovery has emerged as perhaps the most important primitive for...
International audiencePixelwise remote sensing image classification has benefited from temporal cont...
Pixelwise remote sensing image classification has benefited from temporal contextual information enc...
The ubiquity of patterns in data mining and knowledge discovery data sets is a binding characteristi...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
Classifying multivariate time series is often dealt with by transforming the numeric series into lab...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
This paper presents a multiscale visibility graph representation for time series as well as feature ...
This thesis proposes a method to analyse the dynamic behaviour of process systems using sets of text...