In this chapter, we address fish behavior analysis in unconstrained underwater videos. Assessing this is based on unusual fish trajectory detection which tries to detect rare fish behaviors, which can help marine biologists to detect new behaviors and to detect environmental changes observed from the unusual trajectories of fish. Fish trajectories are classified as normal and unusual which are the common behaviors of fish and the behaviors that are rare respectively. We investigated three different classification methods to detect unusual fish trajectories. The first method is a filtering method to eliminate normal trajectories, the second method is based on labeled and clustered data and the third method constructs a hierarchy using clustered and labeled data based on data similarity. The first two methods can be seen as preliminary works while the results of them are significant considering the challenges of underwater environments and highly imbalanced trajectory data that we used. In this chapter, we briefly summarize these two methods and mainly focus on the third method (hierarchial decomposition) which presented improved results and performed better than the state of art methods.

(2016). Fish Behavior Analysis . Retrieved from https://hdl.handle.net/10446/260651

Fish Behavior Analysis

Beyan, Cigdem
2016-01-01

Abstract

In this chapter, we address fish behavior analysis in unconstrained underwater videos. Assessing this is based on unusual fish trajectory detection which tries to detect rare fish behaviors, which can help marine biologists to detect new behaviors and to detect environmental changes observed from the unusual trajectories of fish. Fish trajectories are classified as normal and unusual which are the common behaviors of fish and the behaviors that are rare respectively. We investigated three different classification methods to detect unusual fish trajectories. The first method is a filtering method to eliminate normal trajectories, the second method is based on labeled and clustered data and the third method constructs a hierarchy using clustered and labeled data based on data similarity. The first two methods can be seen as preliminary works while the results of them are significant considering the challenges of underwater environments and highly imbalanced trajectory data that we used. In this chapter, we briefly summarize these two methods and mainly focus on the third method (hierarchial decomposition) which presented improved results and performed better than the state of art methods.
2016
Beyan, Cigdem
File allegato/i alla scheda:
File Dimensione del file Formato  
B02_Fish+Behavior+Analysis_compressed.pdf

Solo gestori di archivio

Versione: publisher's version - versione editoriale
Licenza: Licenza default Aisberg
Dimensione del file 7.26 MB
Formato Adobe PDF
7.26 MB Adobe PDF   Visualizza/Apri
Pubblicazioni consigliate

Aisberg ©2008 Servizi bibliotecari, Università degli studi di Bergamo | Terms of use/Condizioni di utilizzo

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/260651
Citazioni
  • Scopus 1
  • ???jsp.display-item.citation.isi??? 1
social impact