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3D Pose Estimation for Fine-Grained Object Categories

12 June 2018
Yaming Wang
Xiao Tan
Yi Yang
Xiao-Chang Liu
Errui Ding
Feng Zhou
L. Davis
    3DV3DH
ArXiv (abs)PDFHTML
Abstract

Existing object pose estimation datasets are related to generic object types and there is so far no dataset for fine-grained object categories. In this work, we introduce a new large dataset to benchmark pose estimation for fine-grained objects, thanks to the availability of both 2D and 3D fine-grained data recently. Specifically, we augment two popular fine-grained recognition datasets (StanfordCars and CompCars) by finding a fine-grained 3D CAD model for each sub-category and manually annotating each object in images with 3D pose. We show that, with enough training data, a full perspective model with continuous parameters can be estimated using 2D appearance information alone. We achieve this via a framework based on Faster/Mask R-CNN. This goes beyond previous works on category-level pose estimation, which only estimate discrete/continuous viewpoint angles or recover rotation matrices often with the help of key points. Furthermore, with fine-grained 3D models available, we incorporate a novel 3D representation named as {\em location field} into the CNN-based pose estimation framework to further improve the performance.

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