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Recognition of natural objects in the archerfish
Author(s) -
Svetlana Volotsky,
Ohad BenShahar,
Opher Donchin,
Ronen Segev
Publication year - 2022
Publication title -
journal of experimental biology
Language(s) - English
Resource type - Journals
eISSN - 1477-9145
pISSN - 0022-0949
DOI - 10.1242/jeb.243237
Subject(s) - categorization , computer science , cognitive neuroscience of visual object recognition , artificial intelligence , classifier (uml) , object (grammar) , process (computing) , task (project management) , pattern recognition (psychology) , visual objects , projection (relational algebra) , computer vision , perception , psychology , engineering , algorithm , neuroscience , operating system , systems engineering
Recognition of individual objects and their categorization is a complex computational task. Nevertheless, visual systems can perform this task in a rapid and accurate manner. Humans and other animals can efficiently recognize objects despite countless variations in their projection on the retina due to different viewing angles, distance, illumination conditions and other parameters. To gain a better understanding of the recognition process in teleosts, we explored it in archerfish, a species that hunts by shooting a jet of water at aerial targets and thus can benefit from ecologically relevant recognition of natural objects. We found that archerfish not only can categorize objects into relevant classes but also can do so for novel objects, and additionally they can recognize an individual object presented under different conditions. To understand the mechanisms underlying this capability, we developed a computational model based on object features and a machine learning classifier. The analysis of the model revealed that a small number of features was sufficient for categorization, and the fish were more sensitive to object contours than textures. We tested these predictions in additional behavioral experiments and validated them. Our findings suggest the existence of a complex visual process in the archerfish visual system that enables object recognition and categorization.

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