On Understanding Biosonar Deformations Using Deep Learning-Based Video Interpolation

The deformation of a horseshoe bat’s parietal plays an important role in its biosonar system, by understanding which we may gain an insight on the functionalities and geometric structures of the complex bionar system in the hope of building an artificial alternative with comparable features in the future. However, this promising research direction is not well investigated yet, limited by either the availabilities of experimental horseshoe bats or the capabilities of physical devices, namely, existing high-speed cameras fail to record videos of a quality enough for correlating parietal deformations and ultrasonic pulses in a fine-grain manner.

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