Since various behavioral movement patterns are likely to be valid within different unique ranges of spatial and temporal scales (e.g. instantaneous diurnal or seasonal) with the corresponding spatial extents a cross-scale approach is needed for accurate classification of behaviors expressed in movement. Here we introduce a methodology for the characterization and classification of behavioral movement data that relies on computing and analyzing movement features jointly in both the spatial and temporal domains. The proposed methodology consists of three stages. In the first stage focusing on the spatial domain the underlying movement space is partitioned into several zonings that correspond to different spatial scales and features related to movement are computed for each partitioning level. In the second stage concentrating on the temporal domain several movement parameters are computed from trajectories across a series of temporal windows of increasing sizes yielding another set of input features for the classification. For both the spatial and the temporal domains the ``reliable scale'' is determined by an automated procedure. This is the scale at which the best classification accuracy is achieved using only spatial or temporal input features respectively. The third stage takes the measures from the spatial and temporal domains of movement computed at the corresponding reliable scales as input features for behavioral classification. With a feature selection procedure the most relevant features contributing to known behavioral states are extracted and used to learn a classification model. The potential of the proposed approach is demonstrated on a dataset of adult zebrafish (Danio rerio) swimming movements in testing tanks following exposure to different drug treatments. Our results show that behavioral classification accuracy greatly increases when firstly cross-scale analysis is used to determine the best analysis scale and secondly input features from both the spatial and the temporal domains of movement are combined. These results may have several important practical applications including drug screening for biomedical research.

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Creative Commons Attribution 3.0 License
This work is licensed under a Creative Commons Attribution 3.0 License.