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3 months ago

Probabilistic two-stage detection

Xingyi Zhou Vladlen Koltun Philipp Krähenbühl

Probabilistic two-stage detection

Abstract

We develop a probabilistic interpretation of two-stage object detection. We show that this probabilistic interpretation motivates a number of common empirical training practices. It also suggests changes to two-stage detection pipelines. Specifically, the first stage should infer proper object-vs-background likelihoods, which should then inform the overall score of the detector. A standard region proposal network (RPN) cannot infer this likelihood sufficiently well, but many one-stage detectors can. We show how to build a probabilistic two-stage detector from any state-of-the-art one-stage detector. The resulting detectors are faster and more accurate than both their one- and two-stage precursors. Our detector achieves 56.4 mAP on COCO test-dev with single-scale testing, outperforming all published results. Using a lightweight backbone, our detector achieves 49.2 mAP on COCO at 33 fps on a Titan Xp, outperforming the popular YOLOv4 model.

Code Repositories

aim-uofa/DiverGen
pytorch
Mentioned in GitHub
smart-car-lab/Centernet2-mmdetction
pytorch
Mentioned in GitHub
xingyizhou/CenterNet2
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
object-detection-on-cocoCenterNet2 (Res2Net-101-DCN-BiFPN, self-training, 1560 single-scale)
AP50: 74.0
AP75: 61.6
APL: 68.6
APM: 59.7
APS: 38.7
Hardware Burden:
Operations per network pass:
box mAP: 56.4
object-detection-on-coco-oCenterNet2 (R2-101-DCN)
Average mAP: 29.5
Effective Robustness: 4.29

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