Generating Ground-Level Images From Overhead Imagery Using GANs with Yi Zhu - TWiML Talk #172
Published:Aug 13, 2018 20:47
•1 min read
•Practical AI
Analysis
This article summarizes a podcast episode featuring Yi Zhu, a PhD candidate researching geospatial image analysis. The core of the discussion revolves around Zhu's paper on generating ground-level views from overhead imagery using conditional Generative Adversarial Networks (GANs). The article highlights the research's objective and the application of conditional GANs in creating artificial ground-level images. It provides a concise overview of the topic, focusing on the methodology and the research's goal. The article serves as an introduction to the research for a broader audience.
Key Takeaways
- •The research focuses on generating ground-level images from overhead imagery.
- •Conditional Generative Adversarial Networks (GANs) are used in the process.
- •The goal is to create artificial ground-level views.
Reference
“We discuss the goal of this research and how he uses conditional GANs to generate artificial ground-level images.”