Paper ID: 2412.09507
Vision Transformers for Efficient Indoor Pathloss Radio Map Prediction
Edvard Ghukasyan, Hrant Khachatrian, Rafayel Mkrtchyan, Theofanis P. Raptis
Vision Transformers (ViTs) have demonstrated remarkable success in achieving state-of-the-art performance across various image-based tasks and beyond. In this study, we employ a ViT-based neural network to address the problem of indoor pathloss radio map prediction. The network's generalization ability is evaluated across diverse settings, including unseen buildings, frequencies, and antennas with varying radiation patterns. By leveraging extensive data augmentation techniques and pretrained DINOv2 weights, we achieve promising results, even under the most challenging scenarios.
Submitted: Dec 12, 2024