Litcius/Paper detail

StereOBJ-1M: Large-scale Stereo Image Dataset for 6D Object Pose Estimation

Xingyu Liu, Shun Iwase, Kris Kitani

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)46 citationsDOI

Abstract

We present a large-scale stereo RGB image object pose estimation dataset named the StereOBJ-1M dataset. The dataset is designed to address challenging cases such as object transparency, translucency, and specular reflection, in addition to the common challenges of occlusion, symmetry, and variations in illumination and environments. In order to collect data of sufficient scale for modern deep learning models, we propose a novel method for efficiently annotating pose data in a multi-view fashion that allows data capturing in complex and flexible environments. Fully annotated with 6D object poses, our dataset contains over 396K frames and over 1.5M annotations of 18 objects recorded in 183 scenes constructed in 11 different environments. The 18 objects include 8 symmetric objects, 7 transparent objects, and 8 reflective objects. We benchmark two state-of-the-art pose estimation frameworks on StereOBJ-1M as baselines for future work. We also propose a novel object-level pose optimization method for computing 6D pose from keypoint predictions in multiple images.

Topics & Concepts

PoseComputer scienceArtificial intelligenceComputer visionObject (grammar)Transparency (behavior)Benchmark (surveying)Scale (ratio)3D pose estimationRGB color modelPattern recognition (psychology)GeographyComputer securityGeodesyCartographyRobot Manipulation and LearningRobotics and Sensor-Based LocalizationAdvanced Vision and Imaging