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Autori principali: Mizuno, Tomoki, Yabashi, Kazuya, Tasaki, Tsuyoshi
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2504.17424
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author Mizuno, Tomoki
Yabashi, Kazuya
Tasaki, Tsuyoshi
author_facet Mizuno, Tomoki
Yabashi, Kazuya
Tasaki, Tsuyoshi
contents We have developed a new method to estimate a Next Viewpoint (NV) which is effective for pose estimation of simple-shaped products for product display robots in retail stores. Pose estimation methods using Neural Networks (NN) based on an RGBD camera are highly accurate, but their accuracy significantly decreases when the camera acquires few texture and shape features at a current view point. However, it is difficult for previous mathematical model-based methods to estimate effective NV which is because the simple shaped objects have few shape features. Therefore, we focus on the relationship between the pose estimation and NV estimation. When the pose estimation is more accurate, the NV estimation is more accurate. Therefore, we develop a new pose estimation NN that estimates NV simultaneously. Experimental results showed that our NV estimation realized a pose estimation success rate 77.3\%, which was 7.4pt higher than the mathematical model-based NV calculation did. Moreover, we verified that the robot using our method displayed 84.2\% of products.
format Preprint
id arxiv_https___arxiv_org_abs_2504_17424
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Object Pose Estimation by Camera Arm Control Based on the Next Viewpoint Estimation
Mizuno, Tomoki
Yabashi, Kazuya
Tasaki, Tsuyoshi
Robotics
Artificial Intelligence
We have developed a new method to estimate a Next Viewpoint (NV) which is effective for pose estimation of simple-shaped products for product display robots in retail stores. Pose estimation methods using Neural Networks (NN) based on an RGBD camera are highly accurate, but their accuracy significantly decreases when the camera acquires few texture and shape features at a current view point. However, it is difficult for previous mathematical model-based methods to estimate effective NV which is because the simple shaped objects have few shape features. Therefore, we focus on the relationship between the pose estimation and NV estimation. When the pose estimation is more accurate, the NV estimation is more accurate. Therefore, we develop a new pose estimation NN that estimates NV simultaneously. Experimental results showed that our NV estimation realized a pose estimation success rate 77.3\%, which was 7.4pt higher than the mathematical model-based NV calculation did. Moreover, we verified that the robot using our method displayed 84.2\% of products.
title Object Pose Estimation by Camera Arm Control Based on the Next Viewpoint Estimation
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2504.17424