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Main Authors: Fei, Zhenghao, Lu, Wenwu, Hou, Linsheng, Peng, Chen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.14530
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author Fei, Zhenghao
Lu, Wenwu
Hou, Linsheng
Peng, Chen
author_facet Fei, Zhenghao
Lu, Wenwu
Hou, Linsheng
Peng, Chen
contents Strawberries naturally grow in clusters, interwoven with leaves, stems, and other fruits, which frequently leads to occlusion. This inherent growth habit presents a significant challenge for robotic picking, as traditional percept-plan-control systems struggle to reach fruits amid the clutter. Effectively picking an occluded strawberry demands dexterous manipulation to carefully bypass or gently move the surrounding soft objects and precisely access the ideal picking point located at the stem just above the calyx. To address this challenge, we introduce a strawberry-picking robotic system that learns from human demonstrations. Our system features a 4-DoF SCARA arm paired with a human teleoperation interface for efficient data collection and leverages an End Pose Assisted Action Chunking Transformer (ACT) to develop a fine-grained visuomotor picking policy. Experiments under various occlusion scenarios demonstrate that our modified approach significantly outperforms the direct implementation of ACT, underscoring its potential for practical application in occluded strawberry picking.
format Preprint
id arxiv_https___arxiv_org_abs_2509_14530
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning to Pick: A Visuomotor Policy for Clustered Strawberry Picking
Fei, Zhenghao
Lu, Wenwu
Hou, Linsheng
Peng, Chen
Robotics
Strawberries naturally grow in clusters, interwoven with leaves, stems, and other fruits, which frequently leads to occlusion. This inherent growth habit presents a significant challenge for robotic picking, as traditional percept-plan-control systems struggle to reach fruits amid the clutter. Effectively picking an occluded strawberry demands dexterous manipulation to carefully bypass or gently move the surrounding soft objects and precisely access the ideal picking point located at the stem just above the calyx. To address this challenge, we introduce a strawberry-picking robotic system that learns from human demonstrations. Our system features a 4-DoF SCARA arm paired with a human teleoperation interface for efficient data collection and leverages an End Pose Assisted Action Chunking Transformer (ACT) to develop a fine-grained visuomotor picking policy. Experiments under various occlusion scenarios demonstrate that our modified approach significantly outperforms the direct implementation of ACT, underscoring its potential for practical application in occluded strawberry picking.
title Learning to Pick: A Visuomotor Policy for Clustered Strawberry Picking
topic Robotics
url https://arxiv.org/abs/2509.14530