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Papers/Joint 2D-3D Multi-Task Learning on Cityscapes-3D: 3D Detec...

Joint 2D-3D Multi-Task Learning on Cityscapes-3D: 3D Detection, Segmentation, and Depth Estimation

Hanrong Ye, Dan Xu

2023-04-03Representation LearningAutonomous DrivingSemantic SegmentationMulti-Task LearningDepth Estimation3D Object DetectionMonocular Depth Estimation
PaperPDFCode(official)

Abstract

This report serves as a supplementary document for TaskPrompter, detailing its implementation on a new joint 2D-3D multi-task learning benchmark based on Cityscapes-3D. TaskPrompter presents an innovative multi-task prompting framework that unifies the learning of (i) task-generic representations, (ii) task-specific representations, and (iii) cross-task interactions, as opposed to previous approaches that separate these learning objectives into different network modules. This unified approach not only reduces the need for meticulous empirical structure design but also significantly enhances the multi-task network's representation learning capability, as the entire model capacity is devoted to optimizing the three objectives simultaneously. TaskPrompter introduces a new multi-task benchmark based on Cityscapes-3D dataset, which requires the multi-task model to concurrently generate predictions for monocular 3D vehicle detection, semantic segmentation, and monocular depth estimation. These tasks are essential for achieving a joint 2D-3D understanding of visual scenes, particularly in the development of autonomous driving systems. On this challenging benchmark, our multi-task model demonstrates strong performance compared to single-task state-of-the-art methods and establishes new state-of-the-art results on the challenging 3D detection and depth estimation tasks.

Results

TaskDatasetMetricValueModel
Depth EstimationCityscapes 3DRMSE6.78TaskPrompter
Semantic SegmentationCityscapes 3DmIoU77.72TaskPrompter
Object DetectionCityscapes 3DmDS32.94TaskPrompter
3DCityscapes 3DmDS32.94TaskPrompter
3DCityscapes 3DRMSE6.78TaskPrompter
3D Object DetectionCityscapes 3DmDS32.94TaskPrompter
2D ClassificationCityscapes 3DmDS32.94TaskPrompter
2D Object DetectionCityscapes 3DmDS32.94TaskPrompter
10-shot image generationCityscapes 3DmIoU77.72TaskPrompter
16kCityscapes 3DmDS32.94TaskPrompter

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