Machine Learning Approaches for Biosonar Systems: Investigating Dynamic Sensing in Complex Natural Environments
| dc.contributor.author | Eshera, Ibrahim Mohamed | en |
| dc.contributor.committeechair | Mueller, Rolf | en |
| dc.contributor.committeemember | Leonessa, Alexander | en |
| dc.contributor.committeemember | Reed, Jeffrey H. | en |
| dc.contributor.committeemember | Han, Jin-Ping | en |
| dc.contributor.committeemember | Jones, Creed F. III | en |
| dc.contributor.department | Electrical Engineering | en |
| dc.date.accessioned | 2025-12-10T09:00:34Z | en |
| dc.date.available | 2025-12-10T09:00:34Z | en |
| dc.date.issued | 2025-12-09 | en |
| dc.description.abstract | Echolocating bats navigating dense vegetation extract sensory information from clutter echoes -- superpositions of reflections from numerous unresolved scatterers that create inherently stochastic signals. This dissertation investigates how both static morphological variations and dynamic shape changes in biomimetic receiver structures can encode reliable information within these random echoes, progressing from linear acoustic effects to nonlinear Doppler-based signatures. The first component of this research established that static pinna shape variations create consistent, discriminable effects on clutter echoes despite their stochastic nature. Using a biomimetic robotic pinna capable of producing ten distinct conformations, we recorded over 50,000 clutter echoes from artificial foliage agitated by fans. Deep neural networks successfully classified pinna shapes with 97.8% accuracy, demonstrating that linear beampattern variations survive projection onto random clutter backgrounds. This finding established the foundation for information encoding through morphological diversity. Building on these linear effects, the second component investigated whether dynamic pinna motions, which introduce time-variant and nonlinear Doppler signatures, similarly create reliable patterns in clutter. Using the same experimental apparatus actuated through different motion patterns at multiple speeds, we tested three signal types: constant-frequency (CF), frequency-modulated (FM), and combined CF-FM pulses. Classification accuracy varied dramatically with signal structure: CF signals achieved only 48.3% accuracy while CF-FM signals reached 97.2%, revealing fundamental differences in how linear and nonlinear effects interact with signal time-frequency characteristics. The progression from static to dynamic effects revealed a hierarchy of information encoding mechanisms: static shapes provide robust but fixed filtering, while dynamic motions enable adaptive, time-variant information encoding at the cost of increased complexity and energy. The superior performance with FM components suggests that broadband signals better capture motion-induced signatures, potentially explaining the evolution of diverse signal types across bat species. These findings have implications for both biological understanding and engineering applications. The demonstrated ability to extract reliable signatures from stochastic backgrounds suggests new approaches for acoustic sensing in complex environments, while the differential performance across signal types provides insights into the evolutionary pressures shaping biosonar systems. The work establishes machine learning as a powerful tool for uncovering subtle patterns in seemingly random biological signals. Methodologically, this research contributes to the growing intersection of deep learning and embodied artificial intelligence. The deep learning framework developed here treats neural networks as measurement instruments for probing information content in signals too complex for analytical characterization; a paradigm applicable beyond biosonar to any domain involving high-dimensional, stochastic data. More broadly, the findings validate morphological computation principles: the physical structure of sensors can actively encode information through geometry and dynamics, performing computations at the hardware interface that would otherwise require downstream processing. This embodied AI perspective where intelligence emerges from the interaction between physical structure, dynamics, and environment rather than residing purely in algorithms, suggests new design principles for autonomous systems operating in complex, unstructured environments where vision-based sensing fails. | en |
| dc.description.abstractgeneral | Bats navigate dense forests in complete darkness by emitting ultrasonic calls and listening to returning echoes, much like submarine sonar. However, when flying through vegetation, echoes from thousands of leaves create an overwhelming jumble of overlapping sounds. Each echo is different because leaves constantly shift position, making the problem similar to having a conversation in a crowded room where the background noise never repeats. The question then arises of how do bats extract useful information from this acoustic chaos? This dissertation investigates whether the shape and movement of bat ears help solve this problem. Some bat species have remarkably mobile outer ears that can reconfigure themselves twenty times per second—like adjustable satellite dishes. To test whether these shape changes help bats process complex echoes, we built robot bat ears from flexible silicone and created an artificial forest using thousands of plastic leaves. The research progressed in two stages. First, we tested ten different ear shapes, recording over 50,000 echoes. Using artificial intelligence techniques, we are able to correctly identified which ear shape received a given echo 97.8% of the time, proving that ear shape makes a consistent difference even in chaotic acoustic environments. Second, we investigated whether moving ears create recognizable patterns. Motion changes sound frequencies through the Doppler effect—the same phenomenon that makes an ambulance siren sound different when approaching versus departing. We tested three sonar call types: pure tones staying at one frequency, frequency sweeps sliding from high to low pitch, and combination signals. Results revealed a surprising pattern: pure tones allowed only 48% accuracy in identifying ear motion, while frequency sweeps achieved 93% and combination signals reached 97%. This dramatic difference shows that call type fundamentally affects how motion information is encoded. These findings have two important implications. First, they help explain why bat species hunting in cluttered forests evolved specific call types—broadband sweeps capture motion information far better than pure tones. Second, they suggest new approaches for robots and drones navigating challenging environments where vision fails. Current autonomous systems try to avoid messy sensor data, but the bat-inspired approach shows that the right sensor design can extract information from environmental complexity rather than treating it as pure noise. More broadly, this work demonstrates that biological systems have evolved sophisticated solutions to problems engineers haven't solved. The robot bat ears bridge biology and engineering, allowing tests impossible with living animals, while machine learning detects subtle patterns humans might miss. Together, these approaches reveal that even random, unpredictable signals contain extractable information with the right sensor design and processing methods. This research sits at the intersection of biology, robotics, and artificial intelligence. The artificial intelligence techniques used here do more than classify echoes—they serve as a way to measure how much useful information different sensor designs can capture, a method applicable far beyond bat sonar. The findings also support an emerging idea in robotics called "embodied intelligence": that physical design choices—the shape of a sensor, how it moves—can perform computational work that would otherwise require complex software. For autonomous vehicles, drones, and robots operating in messy real-world environments, this suggests a shift from trying to build ever-smarter algorithms to designing smarter sensors whose physical properties naturally extract the information needed for navigation and decision-making. | en |
| dc.description.degree | Doctor of Philosophy | en |
| dc.format.medium | ETD | en |
| dc.identifier.other | vt_gsexam:45150 | en |
| dc.identifier.uri | https://hdl.handle.net/10919/139857 | en |
| dc.language.iso | en | en |
| dc.publisher | Virginia Tech | en |
| dc.rights | In Copyright | en |
| dc.rights.uri | http://rightsstatements.org/vocab/InC/1.0/ | en |
| dc.subject | embodied ai | en |
| dc.subject | biosonar | en |
| dc.subject | robotics | en |
| dc.subject | deep learning | en |
| dc.subject | sensing | en |
| dc.subject | dynamics | en |
| dc.subject | clutter | en |
| dc.title | Machine Learning Approaches for Biosonar Systems: Investigating Dynamic Sensing in Complex Natural Environments | en |
| dc.type | Dissertation | en |
| thesis.degree.discipline | Electrical Engineering | en |
| thesis.degree.grantor | Virginia Polytechnic Institute and State University | en |
| thesis.degree.level | doctoral | en |
| thesis.degree.name | Doctor of Philosophy | en |
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