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📄 Abstract
Abstract: The goal of multi-task learning is to learn to conduct multiple tasks
simultaneously based on a shared data representation. While this approach can
improve learning efficiency, it may also cause performance degradation due to
task conflicts that arise when optimizing the model for different objectives.
To address this challenge, we introduce MAESTRO, a structured framework
designed to generate task-specific features and mitigate feature interference
in multi-task 3D perception, including 3D object detection, bird's-eye view
(BEV) map segmentation, and 3D occupancy prediction. MAESTRO comprises three
components: the Class-wise Prototype Generator (CPG), the Task-Specific Feature
Generator (TSFG), and the Scene Prototype Aggregator (SPA). CPG groups class
categories into foreground and background groups and generates group-wise
prototypes. The foreground and background prototypes are assigned to the 3D
object detection task and the map segmentation task, respectively, while both
are assigned to the 3D occupancy prediction task. TSFG leverages these
prototype groups to retain task-relevant features while suppressing irrelevant
features, thereby enhancing the performance for each task. SPA enhances the
prototype groups assigned for 3D occupancy prediction by utilizing the
information produced by the 3D object detection head and the map segmentation
head. Extensive experiments on the nuScenes and Occ3D benchmarks demonstrate
that MAESTRO consistently outperforms existing methods across 3D object
detection, BEV map segmentation, and 3D occupancy prediction tasks.