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4 months ago

6-DoF Object Pose from Semantic Keypoints

Georgios Pavlakos; Xiaowei Zhou; Aaron Chan; Konstantinos G. Derpanis; Kostas Daniilidis

6-DoF Object Pose from Semantic Keypoints

Abstract

This paper presents a novel approach to estimating the continuous six degree of freedom (6-DoF) pose (3D translation and rotation) of an object from a single RGB image. The approach combines semantic keypoints predicted by a convolutional network (convnet) with a deformable shape model. Unlike prior work, we are agnostic to whether the object is textured or textureless, as the convnet learns the optimal representation from the available training image data. Furthermore, the approach can be applied to instance- and class-based pose recovery. Empirically, we show that the proposed approach can accurately recover the 6-DoF object pose for both instance- and class-based scenarios with a cluttered background. For class-based object pose estimation, state-of-the-art accuracy is shown on the large-scale PASCAL3D+ dataset.

Code Repositories

geopavlakos/object3d
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
keypoint-detection-on-pascal3dConvNet + deformable shape model
Mean PCK: 82.5

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6-DoF Object Pose from Semantic Keypoints | Papers | HyperAI