fish tracking
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2021 ◽  
Author(s):  
Filip Dechterenko ◽  
Daniela Jakubkova ◽  
Jiri Lukavsky ◽  
Christina Howard

Although the Multiple Object Tracking (MOT) task is a widely used experimental method for studying divided attention, tracking objects in the real world usually looks different. For example, in the real world, objects are usually clearly distinguishable from each other and also possess different movement patterns. One such case is tracking groups of creatures, such as tracking fish in an aquarium. We used movies of fish in an aquarium and measured general tracking performance in this task (Experiment 1). In Experiment 2, we compared tracking accuracy within-subjects in fish tracking, tracking typical MOT stimuli, and in a third condition using standard MOT uniform objects which possessed movement patterns similar to the real fish. This third condition was added to further examine the impact of different motion characteristics on tracking performance. Results within a Bayesian framework showed that tracking real fish shares similarity with tracking simple objects in a typical laboratory MOT task. Furthermore, we observed a close relationship between performance in both laboratory MOT tasks (typical and fish-like) and real fish tracking, suggesting that the commonly used laboratory MOT task possesses a good level of ecological validity.


Author(s):  
Maria Gemel Palconit ◽  
Michael Pareja ◽  
Argel Bandala ◽  
Jason Espanola ◽  
Ryan Rhay Vicerra ◽  
...  

Author(s):  
Maria Gemel B. Palconit ◽  
Ronnie S. Concepcion II ◽  
Jonnel D. Alejandrino ◽  
Michael E. Pareja ◽  
Vincent Jan D. Almero ◽  
...  

Three-dimensional multiple fish tracking has gained significant research interest in quantifying fish behavior. However, most tracking techniques use a high frame rate, which is currently not viable for real-time tracking applications. This study discusses multiple fish-tracking techniques using low-frame-rate sampling of stereo video clips. The fish were tagged and tracked based on the absolute error of the predicted indices using past and present fish centroid locations and a deterministic frame index. In the predictor sub-system, linear regression and machine learning algorithms intended for nonlinear systems, such as the adaptive neuro-fuzzy inference system (ANFIS), symbolic regression, and Gaussian process regression (GPR), were investigated. The results showed that, in the context of tagging and tracking accuracy, the symbolic regression attained the best performance, followed by the GPR, that is, 74% to 100% and 81% to 91%, respectively. Considering the computation time, symbolic regression resulted in the highest computing lag of approximately 946 ms per iteration, whereas GPR achieved the lowest computing time of 39 ms.


2021 ◽  
Author(s):  
Paul Gatti ◽  
Jonathan A. D. Fisher ◽  
Frédéric Cyr ◽  
Peter S. Galbraith ◽  
Dominique Robert ◽  
...  
Keyword(s):  

2021 ◽  
Vol 55 (2) ◽  
pp. 45-53
Author(s):  
Li Zou ◽  
Meng Zhao ◽  
Fangfang Cao ◽  
Shiliang Zan ◽  
Xuezhen Cheng ◽  
...  

Abstract Fish tracking is an important component of analyzing fish behavior and estimating fish population density. Due to the high degree of freedom of fish motion as well as the complex natural underwater environment, most existing object tracking methods are not ideal for fish tracking. In this paper, a fish tracking method based on feature fusion and scale adaptation is proposed, which is built on a kernelized correlation filter (KCF) to achieve accurate and rapid tracking. The proposed method mainly focuses on feature selection and scale estimation in the KCF framework. In feature selection, the color-naming feature and the histogram of oriented gradients feature are fused to improve the fish appearance model and reduce the influence of the high degree of freedom of fish motion and the complex natural underwater environment. In the scale estimation, an adaptive scale estimation scheme is employed to adapt the fish scale variation by learning a 1-D scale correlation filter. The experimental results show that the proposed method is effective and accurate for fish tracking in real-world underwater environments.


eLife ◽  
2020 ◽  
Vol 9 ◽  
Author(s):  
Chen Chen ◽  
Todd D Murphey ◽  
Malcolm A MacIver

While animals track or search for targets, sensory organs make small unexplained movements on top of the primary task-related motions. While multiple theories for these movements exist—in that they support infotaxis, gain adaptation, spectral whitening, and high-pass filtering—predicted trajectories show poor fit to measured trajectories. We propose a new theory for these movements called energy-constrained proportional betting, where the probability of moving to a location is proportional to an expectation of how informative it will be balanced against the movement’s predicted energetic cost. Trajectories generated in this way show good agreement with measured trajectories of fish tracking an object using electrosense, a mammal and an insect localizing an odor source, and a moth tracking a flower using vision. Our theory unifies the metabolic cost of motion with information theory. It predicts sense organ movements in animals and can prescribe sensor motion for robots to enhance performance.


2020 ◽  
Vol 1569 ◽  
pp. 022036
Author(s):  
Basuki Rahmat ◽  
Minto Waluyo ◽  
Tuhu Agung Rachmanto ◽  
Mohamad Irwan Afandi ◽  
Helmy Widyantara ◽  
...  

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