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Papers/MobilePose: Real-Time Pose Estimation for Unseen Objects w...

MobilePose: Real-Time Pose Estimation for Unseen Objects with Weak Shape Supervision

Tingbo Hou, Adel Ahmadyan, Liangkai Zhang, Jianing Wei, Matthias Grundmann

2020-03-07Monocular 3D Object DetectionPose Estimation
PaperPDF

Abstract

In this paper, we address the problem of detecting unseen objects from RGB images and estimating their poses in 3D. We propose two mobile friendly networks: MobilePose-Base and MobilePose-Shape. The former is used when there is only pose supervision, and the latter is for the case when shape supervision is available, even a weak one. We revisit shape features used in previous methods, including segmentation and coordinate map. We explain when and why pixel-level shape supervision can improve pose estimation. Consequently, we add shape prediction as an intermediate layer in the MobilePose-Shape, and let the network learn pose from shape. Our models are trained on mixed real and synthetic data, with weak and noisy shape supervision. They are ultra lightweight that can run in real-time on modern mobile devices (e.g. 36 FPS on Galaxy S20). Comparing with previous single-shot solutions, our method has higher accuracy, while using a significantly smaller model (2~3% in model size or number of parameters).

Results

TaskDatasetMetricValueModel
Object DetectionGoogle ObjectronAP at 10' Elevation error0.6658MobilePose
Object DetectionGoogle ObjectronAP at 15' Azimuth error0.5088MobilePose
Object DetectionGoogle ObjectronAverage Precision at 0.5 3D IoU0.4624MobilePose
Object DetectionGoogle ObjectronMPE0.1001MobilePose
3DGoogle ObjectronAP at 10' Elevation error0.6658MobilePose
3DGoogle ObjectronAP at 15' Azimuth error0.5088MobilePose
3DGoogle ObjectronAverage Precision at 0.5 3D IoU0.4624MobilePose
3DGoogle ObjectronMPE0.1001MobilePose
3D Object DetectionGoogle ObjectronAP at 10' Elevation error0.6658MobilePose
3D Object DetectionGoogle ObjectronAP at 15' Azimuth error0.5088MobilePose
3D Object DetectionGoogle ObjectronAverage Precision at 0.5 3D IoU0.4624MobilePose
3D Object DetectionGoogle ObjectronMPE0.1001MobilePose
2D ClassificationGoogle ObjectronAP at 10' Elevation error0.6658MobilePose
2D ClassificationGoogle ObjectronAP at 15' Azimuth error0.5088MobilePose
2D ClassificationGoogle ObjectronAverage Precision at 0.5 3D IoU0.4624MobilePose
2D ClassificationGoogle ObjectronMPE0.1001MobilePose
2D Object DetectionGoogle ObjectronAP at 10' Elevation error0.6658MobilePose
2D Object DetectionGoogle ObjectronAP at 15' Azimuth error0.5088MobilePose
2D Object DetectionGoogle ObjectronAverage Precision at 0.5 3D IoU0.4624MobilePose
2D Object DetectionGoogle ObjectronMPE0.1001MobilePose
16kGoogle ObjectronAP at 10' Elevation error0.6658MobilePose
16kGoogle ObjectronAP at 15' Azimuth error0.5088MobilePose
16kGoogle ObjectronAverage Precision at 0.5 3D IoU0.4624MobilePose
16kGoogle ObjectronMPE0.1001MobilePose

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