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CARLA Drone: Monocular 3D Object Detection from a Different Perspective

About

Existing techniques for monocular 3D detection have a serious restriction. They tend to perform well only on a limited set of benchmarks, faring well either on ego-centric car views or on traffic camera views, but rarely on both. To encourage progress, this work advocates for an extended evaluation of 3D detection frameworks across different camera perspectives. We make two key contributions. First, we introduce the CARLA Drone dataset, CDrone. Simulating drone views, it substantially expands the diversity of camera perspectives in existing benchmarks. Despite its synthetic nature, CDrone represents a real-world challenge. To show this, we confirm that previous techniques struggle to perform well both on CDrone and a real-world 3D drone dataset. Second, we develop an effective data augmentation pipeline called GroundMix. Its distinguishing element is the use of the ground for creating 3D-consistent augmentation of a training image. GroundMix significantly boosts the detection accuracy of a lightweight one-stage detector. In our expanded evaluation, we achieve the average precision on par with or substantially higher than the previous state of the art across all tested datasets.

Johannes Meier, Luca Scalerandi, Oussema Dhaouadi, Jacques Kaiser, Nikita Araslanov, Daniel Cremers• 2024

Related benchmarks

TaskDatasetResultRank
3D Object DetectionRope3D (val)
AP (IoU=0.5, Car)47.72
31
Monocular 3D Object DetectionWaymo Open Dataset 79 (val)
AP@0.5 (3D, L1)1.19e+3
24
3D Object DetectionRope3D Car category heterologous benchmark (test)
AP12.86
18
3D Object DetectionRope3D Big Vehicle category heterologous benchmark (test)
AP3.9
18
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