HAL3D: Hierarchical Active Learning for Fine-Grained 3D Part Labeling

Yu, Fenggen; Qian, Yiming; Gil-Ureta, Francisca; Jackson, Brian; Bennett, Eric; Zhang, Hao; IEEE

Abstract

We present the first active learning tool for fine-grained 3D part labeling, a problem which challenges even the most advanced deep learning (DL) methods due to the significant structural variations among the intricate parts. For the same reason, the necessary effort to annotate training data is tremendous, motivating approaches to minimize human involvement. Our labeling tool iteratively verifies or modifies part labels predicted by a deep neural network, with human feedback continually improving the network prediction. To effectively reduce human efforts, we develop two novel features in our tool, hierarchical and symmetry-aware active labeling. Our human-in-the-loop approach, coined HAL3D, achieves close to error-free fine-grained annotations on any test set with pre-defined hierarchical part labels, with 80% time-saving over manual effort. We will release the finely labeled models to serve the community.

Más información

Título según WOS: ID WOS:001159644301011 Not found in local WOS DB
Título de la Revista: 2023 IEEE/CVF INTERNATIONAL CONFERENCE ON COMPUTER VISION, ICCV
Editorial: IEEE COMPUTER SOC
Fecha de publicación: 2023
Página de inicio: 865
Página final: 875
DOI:

10.1109/ICCV51070.2023.00086

Notas: ISI