Learning Deep Representations for Ground to Aerial Geolocalization (Open Access)

Abstract

The recent availability of geo-tagged images and rich geospatial data has inspired a number of algorithms for image based geolocalization. Most approaches predict the location of a query image by matching to ground-level images with known locations (e.g., street-view data). However, most of the Earth does not have ground-level reference photos available. Fortunately, more complete coverage is provided by oblique aerial or bird's eye imagery. In this work, we localize a ground-level query image by matching it to a reference database of aerial imagery. We use publicly available data to build a dataset of 78K aligned crossview image pairs. The primary challenge for this task is that traditional computer vision approaches cannot handle the wide baseline and appearance variation of these cross-view pairs. We use our dataset to learn a feature representation in which matching views are near one another and mismatched views are far apart. Our proposed approach, Where-CNN, is inspired by deep learning success in face verification and achieves significant improvements over traditional hand-crafted features and existing deep features learned from other large-scale databases. We show the effectiveness of Where-CNN in finding matches between street view and aerial view imagery and demonstrate the ability of our learned features to generalize to novel locations.

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Document Details

Document Type
Technical Report
Publication Date
Oct 15, 2015
Accession Number
AD1039722

Entities

People

  • James Hays
  • Serge Belongie
  • Tsung-yi Lin
  • Yin Cui

Organizations

  • Cornell Tech

Tags

Communities of Interest

  • Air Platforms

DTIC Thesaurus Topics

  • Accuracy
  • Aerial Photography
  • Air Force Research Laboratories
  • Algorithms
  • Computer Vision
  • Computing System Architectures
  • Databases
  • Deep Learning
  • Embedding
  • Feature Extraction
  • Geolocation
  • Ground Level
  • Neural Networks
  • Office Buildings
  • Test Sets
  • Two Dimensional
  • United States

Fields of Study

  • Computer science

Readers

  • Agent-Based Social Robotics and Mobile-Assisted Learning in Virtual Environments.
  • Computer Vision.

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks