Far3Det: Towards Far-Field 3D Detection
Shubham Gupta, Jeet Kanjani, Mengtian Li, Francesco Ferroni, James, Hays, Deva Ramanan, Shu Kong

TL;DR
This paper introduces the Far3Det task for detecting distant objects beyond 50 meters, develops a benchmark dataset and evaluation protocol, and demonstrates that RGB sensors significantly enhance far-field 3D detection when fused with lidar data.
Contribution
It establishes the Far3Det benchmark, creates a well-annotated far-field dataset, and proposes a fusion method that improves detection accuracy for distant objects.
Findings
RGB sensors improve far-field detection performance.
Fusing RGB and lidar detections outperforms lidar-only methods.
A new evaluation protocol better assesses far-field detection capabilities.
Abstract
We focus on the task of far-field 3D detection (Far3Det) of objects beyond a certain distance from an observer, e.g., 50m. Far3Det is particularly important for autonomous vehicles (AVs) operating at highway speeds, which require detections of far-field obstacles to ensure sufficient braking distances. However, contemporary AV benchmarks such as nuScenes underemphasize this problem because they evaluate performance only up to a certain distance (50m). One reason is that obtaining far-field 3D annotations is difficult, particularly for lidar sensors that produce very few point returns for far-away objects. Indeed, we find that almost 50% of far-field objects (beyond 50m) contain zero lidar points. Secondly, current metrics for 3D detection employ a "one-size-fits-all" philosophy, using the same tolerance thresholds for near and far objects, inconsistent with tolerances for both human…
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Videos
Far3Det: Towards Far-Field 3D Detection· youtube
Taxonomy
TopicsAdvanced Neural Network Applications · Autonomous Vehicle Technology and Safety · Adversarial Robustness in Machine Learning
