Choosing appropriate time series segmentation algorithms and relevant parameter values is a challenging problem. In order to choose meaningful candidates it is important that different segmentation results are comparable. We propose a Visual Analytics (VA) approach to address these challenges in the scope of human motion capture data, a special type of multivariate time series data. In our prototype, users can interactively select from a rich set of segmentation algorithm candidates. In an overview visualization, the results of these segmentations can be compared and adjusted with regard to visualizations of raw data. A similarity-preserving colormap further facilitates visual comparison and labeling of segments. We present our prototype an...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
The analysis of large, multivariate data sets is challenging, especially when some of these data obj...
The analysis of large, multivariate data sets is challenging, especially when some of these data obj...
Choosing appropriate time series segmentation algorithms and relevant parameter values is a challeng...
The characterization and abstraction of large multivariate time series data often poses challenges w...
Segmentation and labeling of different activities in multivariate time series data is an important t...
The characterization and abstraction of large multivariate time series data often poses challenges w...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Many analysis goals involving human motion capture (MoCap) data require the comparison of motion pat...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Many analysis goals involving human motion capture (MoCap) data require the comparison of motion pat...
Segmenting biologging time series of animals on multiple temporal scales is an essential step that r...
Visual Analytics seeks to combine automatic data analysis with visualization and human-computer inte...
Over the past decade, computer scientists and psychologists have made great efforts to collect and a...
Visual Analytics seeks to combine automatic data analysis with visualization and human-computer inte...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
The analysis of large, multivariate data sets is challenging, especially when some of these data obj...
The analysis of large, multivariate data sets is challenging, especially when some of these data obj...
Choosing appropriate time series segmentation algorithms and relevant parameter values is a challeng...
The characterization and abstraction of large multivariate time series data often poses challenges w...
Segmentation and labeling of different activities in multivariate time series data is an important t...
The characterization and abstraction of large multivariate time series data often poses challenges w...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Many analysis goals involving human motion capture (MoCap) data require the comparison of motion pat...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Many analysis goals involving human motion capture (MoCap) data require the comparison of motion pat...
Segmenting biologging time series of animals on multiple temporal scales is an essential step that r...
Visual Analytics seeks to combine automatic data analysis with visualization and human-computer inte...
Over the past decade, computer scientists and psychologists have made great efforts to collect and a...
Visual Analytics seeks to combine automatic data analysis with visualization and human-computer inte...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
The analysis of large, multivariate data sets is challenging, especially when some of these data obj...
The analysis of large, multivariate data sets is challenging, especially when some of these data obj...