Aerial Imagery

Aerial imagery analysis focuses on extracting meaningful information from airborne images, primarily for geographic mapping and object detection. Current research emphasizes improving object segmentation and detection accuracy across varying resolutions and lighting conditions, utilizing models like transformers, convolutional neural networks (CNNs), and diffusion models, often incorporating techniques like super-resolution and contrastive learning. This field is crucial for numerous applications, including autonomous navigation, disaster response, urban planning, and environmental monitoring, driving advancements in both computer vision and geospatial analysis.

Papers