Back to Search Start Over

Y-MAP-Net: Real-time depth, normals, segmentation, multi-label captioning and 2D human pose in RGB images

Authors :
Qammaz, Ammar
Vasilikopoulos, Nikolaos
Oikonomidis, Iason
Argyros, Antonis A.
Publication Year :
2024

Abstract

We present Y-MAP-Net, a Y-shaped neural network architecture designed for real-time multi-task learning on RGB images. Y-MAP-Net, simultaneously predicts depth, surface normals, human pose, semantic segmentation and generates multi-label captions, all from a single network evaluation. To achieve this, we adopt a multi-teacher, single-student training paradigm, where task-specific foundation models supervise the network's learning, enabling it to distill their capabilities into a lightweight architecture suitable for real-time applications. Y-MAP-Net, exhibits strong generalization, simplicity and computational efficiency, making it ideal for robotics and other practical scenarios. To support future research, we will release our code publicly.<br />Comment: 8 page paper, 6 Figures, 3 Tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.10334
Document Type :
Working Paper