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E-POSE: A Large Scale Event Camera Dataset for Object Pose Estimation

Oussama Abdul Hay, Xiaoqian Huang, Abdulla Ayyad, Eslam Sherif, Randa Almadhoun, Yusra Abdulrahman, Lakmal Seneviratne, Abdulqader Abusafieh, Yahya Zweiri

发表年份
2025
引用次数
4
访问权限
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摘要

Robotic automation requires precise object pose estimation for effective grasping and manipulation. With their high dynamic range and temporal resolution, event-based cameras offer a promising alternative to conventional cameras. Despite their success in tracking, segmentation, classification, obstacle avoidance, and navigation, their use for 6D object pose estimation is relatively unexplored due to the lack of datasets. This paper introduces an extensive dataset based on Yale-CMU-Berkeley (YCB) objects, including event packets with associated poses, spike images, masks, 3D bounding box coordinates, segmented events, and a 3-channel event image for validation. Featuring 13 YCB objects, the dataset covers both cluttered and uncluttered scenes across 18 scenarios with varying speeds and illumination. It contains 306 sequences, totaling over an hour and around 1.5 billion events, making it the largest and most diverse event-based dataset for object pose estimation. This resource aims to support researchers in developing and testing object pose estimation algorithms and solutions.

关键词

PoseArtificial intelligenceComputer scienceComputer visionScale (ratio)Object (grammar)Event (particle physics)Pattern recognition (psychology)GeographyCartography

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