Multi Resolution
Multi-resolution techniques in computer vision and related fields aim to leverage information across different scales of representation, improving the accuracy and efficiency of various tasks. Current research focuses on developing novel architectures, such as multi-resolution encoder-decoder networks and transformer-based models, often incorporating techniques like attention mechanisms and feature fusion to effectively integrate information from multiple resolutions. These advancements are significantly impacting diverse applications, including medical image analysis, object recognition, and autonomous driving, by enabling more robust and accurate processing of complex data, particularly high-resolution images where detail preservation is crucial. The ability to efficiently handle multi-resolution data is increasingly important for addressing computational limitations and improving the performance of deep learning models.
Papers
Riesz-Quincunx-UNet Variational Auto-Encoder for Satellite Image Denoising
Duy H. Thai, Xiqi Fei, Minh Tri Le, Andreas Züfle, Konrad Wessels
Multiresolution Neural Networks for Imaging
Hallison Paz, Tiago Novello, Vinicius Silva, Luiz Schirmer, Guilherme Schardong, Fabio Chagas, Helio Lopes, Luiz Velho