Hypothesize and Bound: A Computational Focus of Attention Mechanism for Simultaneous 3D Shape Reconstruction, Pose Estimation and Classification from a Single 2D Image
Diego Rother, Siddharth Mahendran, Ren\'e Vidal

TL;DR
This paper introduces a unified mathematical framework using hypothesize-and-bound algorithms to simultaneously perform 3D shape reconstruction, pose estimation, and classification from a single 2D image, leveraging 3D shape priors.
Contribution
It extends shape theory to handle shape projections, enabling efficient joint estimation of 3D shape, pose, and class from 2D images with tight bounds for hypothesis evaluation.
Findings
Efficient joint estimation of 3D shape, pose, and class from a single image.
Extension of shape theory to handle shape projections.
Framework integrates 2D image data with 3D priors for optimal reconstruction.
Abstract
This article presents a mathematical framework to simultaneously tackle the problems of 3D reconstruction, pose estimation and object classification, from a single 2D image. In sharp contrast with state of the art methods that rely primarily on 2D information and solve each of these three problems separately or iteratively, we propose a mathematical framework that incorporates prior "knowledge" about the 3D shapes of different object classes and solves these problems jointly and simultaneously, using a hypothesize-and-bound (H&B) algorithm. In the proposed H&B algorithm one hypothesis is defined for each possible pair [object class, object pose], and the algorithm selects the hypothesis H that maximizes a function L(H) encoding how well each hypothesis "explains" the input image. To find this maximum efficiently, the function L(H) is not evaluated exactly for each hypothesis H, but…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Image and Object Detection Techniques · Digital Image Processing Techniques
