Carnegie Mellon University
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Conditional GANs for Sonar Image Filtering with Applications to Underwater Occupancy Mapping

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posted on 2023-07-20, 20:36 authored by Tianxiang LinTianxiang Lin

Underwater robots typically rely on acoustic sensors like sonar to perceive their surroundings. However, these sensors are often inundated with multiple sources and types of noise, which makes using raw data for any meaningful inference with features, objects, or boundary returns very difficult. While several conventional methods of dealing with noise exist, their success rates are unsatisfactory. This paper presents a novel application of conditional Generative Adversarial Networks (cGANs) to train a model to produce noise-free sonar images, outperforming several conventional filtering methods. Estimating free space is crucial for autonomous robots performing active exploration and mapping. Thus, we apply our approach to the task of underwater occupancy mapping and show superior free and occupied space inference when compared to conventional methods.

History

Date

2023-04-24

Degree Type

  • Master's Thesis

Department

  • Information Networking Institute

Degree Name

  • Master of Science (MS)

Advisor(s)

Michael Kaess, Patrick Tague

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