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QuadroNet: Multi-Task Learning for Real-Time Semantic Depth Aware Instance Segmentation

Kratarth Goel, Praveen Srinivasan, Sarah Tariq, James Philbin

202117 citationsDOI

Abstract

Vision for autonomous driving is a uniquely challenging problem: the number of tasks required for full scene understanding is large and diverse; the quality requirements on each task are stringent due to the safety-critical nature of the application; and the latency budget is limited, requiring real-time solutions. In this work we address these challenges with QuadroNet, a one-shot network that jointly produces four outputs: 2D detections, instance segmentation, semantic segmentation, and monocular depth estimates in real-time (>60fps) on consumer-grade GPU hardware. On a challenging real-world autonomous driving dataset, we demonstrate an increase of+2.4% mAP for detection, +3.15% mIoU for semantic segmentation, +5.05% [email protected] for instance segmentation and +1.36% in δ <; 1.25 for depth prediction over a baseline approach. We also compare our work against other multi-task learning approaches on Cityscapes and demonstrate state-of-the-art results.

Topics & Concepts

Computer scienceSegmentationArtificial intelligenceTask (project management)MonocularDeep learningLatency (audio)Computer visionTask analysisMachine learningEconomicsTelecommunicationsManagementAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsAdvanced Vision and Imaging