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iCaps: Iterative Category-level Object Pose and Shape Estimation

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This paper proposes a category-level 6D object pose and shape estimation approach iCaps, which allows tracking 6D poses of unseen objects in a category and estimating their 3D shapes. We develop a category-level auto-encoder network using depth images as input, where feature embeddings from the auto-encoder encode poses of objects in a category. The auto-encoder can be used in a particle filter framework to estimate and track 6D poses of objects in a category. By exploiting an implicit shape representation based on signed distance functions, we build a LatentNet to estimate a latent representation of the 3D shape given the estimated pose of an object. Then the estimated pose and shape can be used to update each other in an iterative way. Our category-level 6D object pose and shape estimation pipeline only requires 2D detection and segmentation for initialization. We evaluate our approach on a publicly available dataset and demonstrate its effectiveness. In particular, our method achieves comparably high accuracy on shape estimation.

Xinke Deng, Junyi Geng, Timothy Bretl, Yu Xiang, Dieter Fox• 2021

Related benchmarks

TaskDatasetResultRank
6D Pose and Size EstimationREAL275
5°5cm0.223
50
Category-level object pose trackingREAL275 (test)
5°5cm Accuracy31.6
6
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