A Novel Multidisciplinary Approach for Reptile Movement and Behavior Analysis

Savvas Zotos , Marilena Stamatiou , Sofia-Zacharenia Marketaki , Michael Konstantinou , Andreas Aristidou , Duncan J. Irschick , Jeremy A. Bot , Emily L. C. Shepard , Mark D. Holton , Ioannis N. Vogiatzakis

Integrative Zoology ›› 2026, Vol. 21 ›› Issue (3) : 468 -484.

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Integrative Zoology ›› 2026, Vol. 21 ›› Issue (3) :468 -484. DOI: 10.1111/1749-4877.12960
ORIGINAL ARTICLE
A Novel Multidisciplinary Approach for Reptile Movement and Behavior Analysis
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Abstract

The study of animals’ activity and behavior in the wild is an extremely challenging task. Although tri-axial accelerometers are invaluable for behavioral analyses, their use is more frequent in large charismatic endotherms with limited application in ectotherms. The scarce utilization of this methodology on small-size reptiles is focused on animals’ activity and energetics, showing few records of rapid displays and behavior signals. Here, we present a novel multidisciplinary approach capable of advancing research on reptiles’ behavior. Our proposed approach uses advanced technologies for the digitization, reconstruction and visualization of reptiles and their behavior. We (i) record movement through tri-axial accelerometers, video cameras, and motion capture systems; (ii) ground-truth data through the video records; (iii) develop realistically accurate 3D avatars of the recorded movement for visualization purposes, and (iv) archive data on a Behavior Pattern Database. As case studies, we used two small Mediterranean reptiles, the lizard Laudakia cypriaca and the snake Dolichophis jugularis. Through our approach, we successfully recorded, ground-truthed, and labeled for the first time, several detailed movements and behaviors of the two case study species. We developed an accurate digital overview of those movements using motion capture and 3D animal reconstruction. Finally, we structured a database for archiving all behavioral data and demonstrated how those archives can be used for advancing behavioral research, providing ecological insights into this animal group. Our approach can enhance research on reptiles’ behavior by contributing to the analysis of complex or isolated behaviors, poorly studied, such as signals and social interactions, providing valuable insights and assisting behavioral analysis.

Keywords

accelerometer / behavior recognition / motion capture / movement analysis / virtual 3D models

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Savvas Zotos, Marilena Stamatiou, Sofia-Zacharenia Marketaki, Michael Konstantinou, Andreas Aristidou, Duncan J. Irschick, Jeremy A. Bot, Emily L. C. Shepard, Mark D. Holton, Ioannis N. Vogiatzakis. A Novel Multidisciplinary Approach for Reptile Movement and Behavior Analysis. Integrative Zoology, 2026, 21 (3) : 468-484 DOI:10.1111/1749-4877.12960

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