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Back to 3D: Few-Shot 3D Keypoint Detection with Back-Projected 2D Features

Thomas Wimmer, Peter Wonka, Maks Ovsjanikov

202414 citationsDOI

Abstract

With the immense growth of dataset sizes and computing resources in recent years, so-called foundation models have become popular in NLP and vision tasks. In this work, we propose to explore foundation models for the task of key-point detection on 3D shapes. A unique characteristic of keypoint detection is that it requires semantic and geomet-ric awareness while demanding high localization accuracy. To address this problem, we propose, first, to back-project features from large pre-trained 2D vision models onto 3D shapes and employ them for this task. We show that we ob-tain robust 3D features that contain rich semantic information and analyze multiple candidate features stemming from different 2D foundation models. Second, we employ a key-point candidate optimization module which aims to match the average observed distribution of keypoints on the shape and is guided by the back-projected features. The resulting approach achieves a new state of the art for few-shot key-point detection on the KeyPointNet dataset, almost doubling the performance of the previous best methods.

Topics & Concepts

Shot (pellet)Artificial intelligenceComputer scienceOne shotComputer visionSingle shotPattern recognition (psychology)PhysicsOpticsEngineeringMaterials scienceMetallurgyMechanical engineeringAdvanced Image and Video Retrieval Techniques3D Surveying and Cultural HeritageAdvanced Neural Network Applications
Back to 3D: Few-Shot 3D Keypoint Detection with Back-Projected 2D Features | Litcius