A filtering mechanism for normal fish trajectories

Understanding fish behavior by extracting normal motion patterns and then identifying abnormal behaviors is important for understanding the effects of environmental change. In the literature, there are many studies on normal/abnormal behavior detection in the areas of human behaviour analysis, traffic surveillance, and nursing home surveillance, etc. However, the literature is very limited in terms of normal/abnormal fish behavior understanding especially when natural habitat applications are considered. In this study, we present a rule based trajectory filtering mechanism to extract normal fish trajectories which potentially helps to increase the accuracy of the abnormal fish behavior detection systems and can be used as a preliminary method especially when the number of abnormal fish behaviors are very small (e.g. 40-50 times smaller) compared to the number of normal fish behaviors and/or when the number of trajectories are huge.

[1]  Alexios Glaropoulos,et al.  A computer-vision system and methodology for the analysis of fish behavior , 2012 .

[2]  W. H. van der Schalie,et al.  Using higher organisms in biological early warning systems for real-time toxicity detection. , 2001, Biosensors & bioelectronics.

[3]  Gian Luca Foresti,et al.  Trajectory-Based Anomalous Event Detection , 2008, IEEE Transactions on Circuits and Systems for Video Technology.

[4]  Aggelos K. Katsaggelos,et al.  Video anomaly detection in spatiotemporal context , 2010, 2010 IEEE International Conference on Image Processing.

[5]  Raymond Williams,et al.  A Computer Vision System to Analyse the Swimming Behaviour of Farmed Fish in Commercial Aquaculture Facilities: a Case Study using Cage-held Atlantic Salmon , 2011 .

[6]  Ioannis A. Kakadiaris,et al.  Fine-grained categorization of fish motion patterns in underwater videos , 2011, 2011 IEEE International Conference on Computer Vision Workshops (ICCV Workshops).

[7]  Robert B. Fisher,et al.  Automatic fish classification for underwater species behavior understanding , 2010, ARTEMIS '10.

[8]  Andrea Cavallaro,et al.  Multifeature Object Trajectory Clustering for Video Analysis , 2008, IEEE Transactions on Circuits and Systems for Video Technology.

[9]  How-Lung Eng,et al.  Vision-Based Real-Time Monitoring on the Behavior of Fish School , 2009, MVA.

[10]  Nuno Vasconcelos,et al.  Boosting Classifier Cascades , 2010, NIPS.

[11]  V. Javier Traver,et al.  Assessing Water Quality by Video Monitoring Fish Swimming Behavior , 2010, 2010 20th International Conference on Pattern Recognition.

[12]  Simone Palazzo,et al.  Covariance based Fish Tracking in Real-life Underwater Environment , 2018, VISAPP.