Binocular mirror–symmetric microsaccadic sampling enables <i>Drosophila</i> hyperacute 3D vision

Joni Kemppainen(University of Sheffield), Ben Scales(University of Sheffield), Keivan Razban Haghighi(University of Sheffield), Jouni Takalo(University of Sheffield), Neveen Mansour(University of Sheffield), James McManus(University of Sheffield), Gábor Lékó(University of Szeged), Paulus Saari(University of Oulu), James D. Hurcomb(University of Sheffield), Andra Antohi(University of Sheffield), Jussi‐Petteri Suuronen(European Synchrotron Radiation Facility), Florence Blanchard(University of Sheffield), Roger Hardie(University of Cambridge), Zhuoyi Song(Fudan University), Mark Hampton(Advanced Manufacturing Research Centre), Marina Eckermann(University of Göttingen), Fabian Westermeier(Deutsches Elektronen-Synchrotron DESY), Jasper Frohn(University of Göttingen), H.J.W.M. Hoekstra(University of Twente), Chi‐Hon Lee(Institute of Cellular and Organismic Biology, Academia Sinica), Marko Huttula(University of Oulu), Rajmund Mokso(Lund University), Mikko Juusola(Beijing Normal University)
Proceedings of the National Academy of Sciences
March 17, 2022
Cited by 19Open Access
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Abstract

Significance To move efficiently, animals must continuously work out their x,y,z positions with respect to real-world objects, and many animals have a pair of eyes to achieve this. How photoreceptors actively sample the eyes’ optical image disparity is not understood because this fundamental information-limiting step has not been investigated in vivo over the eyes’ whole sampling matrix. This integrative multiscale study will advance our current understanding of stereopsis from static image disparity comparison to a morphodynamic active sampling theory. It shows how photomechanical photoreceptor microsaccades enable Drosophila superresolution three-dimensional vision and proposes neural computations for accurately predicting these flies’ depth-perception dynamics, limits, and visual behaviors.


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