Transformer-Based Unified Segmentation: Simultaneous Semantic and Instance Tasks on Point Clouds

Author:

Pan Lei1,Luan Wuyang1ORCID,Li Junhui1,Zhen Yuan1,Fu Qiang1

Affiliation:

1. School of Computer Science, Civil Aviation Flight University of China, P. R. China

Abstract

Traditionally, 3D segmentation tasks have operated in silos, focusing separately on semantic and instance segmentation. However, this disjointed approach lacks interoperability and fails to fully unleash the potential of a more integrated, multitask solution. To overcome this limitation, we introduce TUS-Net, an innovative transformer-based architecture meticulously crafted for both semantic and instance segmentation of point clouds. Our model introduces two pivotal advancements: First, it employs a superpoint-based pre-processing step that minimizes computational overhead without compromising on precision. Second, we leverage a dual-branch design within the transformer architecture, allowing it to adapt to the nuances of both segmentation tasks dynamically. Through extensive experimentation on the ScanNet dataset, our findings demonstrate that TUS-Net surpasses prevailing specialized models by a substantial margin and maintains remarkable computational efficiency. Notably, we achieve a 5.7% enhancement in mean Average Precision (mAP), for instance, segmentation, while striking an optimal balance between accuracy and runtime for semantic segmentation. These outcomes underscore the versatility, efficiency and high-performance attributes of TUS-Net, positioning it as an indispensable framework for robust 3D point cloud segmentation.

Funder

Civil Aviation Flight University of China

independent research project of civil aviation flight technology and flight safety key laboratory of Civil Aviation Flight University of China

Key Laboratory of Flight Techniques and Flight Safety

China Scholarship Council

Publisher

World Scientific Pub Co Pte Ltd

Subject

Electrical and Electronic Engineering,Hardware and Architecture,Electrical and Electronic Engineering,Hardware and Architecture

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