Small-scale location identification in natural environments with deep learning based on biomimetic sonar echoes

Abstract

Many bat species navigate in complex, heavily vegetated habitats. To achieve this, the animal relies on a sensory basis that is very different from what is typically done in engineered systems that are designed for outdoor navigation. Whereas the engineered systems rely on data-heavy senses such as lidar, bats make do with echoes triggered by short, ultrasonic pulses. Prior work has shown that ‘clutter echoes’ originating from vegetation can convey information on the environment they were recorded in—despite their unpredictable nature. The current work has investigated the spatial granularity that these clutter echoes can convey by applying deep-learning location identification to an echo data set that resulted from the dense spatial sampling of a forest environment. The Global Positioning System (GPS) location corresponding to the echo collection events was clustered to break the survey area into the number of spatial patches ranging from two to 100. A convolutional neural network (Resnet 152) was used to identify the patch associated with echo sets ranging from one to ten echoes. The results demonstrate a spatial resolution that is comparable to the accuracy of recreation-grade GPS operating under foliage cover. This demonstrates that fine-grained location identification can be accomplished at very low data rates.

Document Details

Document Type
Pub Defense Publication
Publication Date
Feb 13, 2023
Source ID
10.1088/1748-3190/acb51f

Entities

People

  • Andrew Farabow
  • Liujun Zhang
  • Pradyumann Singhal
  • Rolf Müller

Organizations

  • China Scholarship Council
  • Office of Naval Research

Tags

Fields of Study

  • Environmental science

Readers

  • Robotics and Automation.
  • Space/Atmospheric Physics.
  • Wetland-Land-Environmental Management.

Technology Areas

  • AI & ML
  • AI & ML - Autonomous Systems
  • AI & ML - Neural Networks
  • Biotechnology
  • Space