A Novel Approach to Tomato Harvesting Using a Hybrid Gripper with Semantic Segmentation and Keypoint Detection
Shahid Ansari, Mahendra Kumar Gohil, Yusuke Maeda, Bishakh Bhattacharya

TL;DR
This paper introduces an autonomous tomato-harvesting system that combines a soft hybrid gripper with advanced perception and control techniques, achieving efficient and gentle fruit picking in cluttered environments.
Contribution
The work presents a novel hybrid gripper design integrated with semantic segmentation, keypoint detection, and force control for reliable tomato harvesting.
Findings
80% success rate in harvesting cycles
Average cycle time of 24.34 seconds
Low grasp forces of 0.20-0.50 N
Abstract
This paper presents an autonomous tomato-harvesting system built around a hybrid robotic gripper that combines six soft auxetic fingers with a rigid exoskeleton and a latex basket to achieve gentle, cage-like grasping. The gripper is driven by a servo-actuated Scotch--yoke mechanism, and includes separator leaves that form a conical frustum for fruit isolation, with an integrated micro-servo cutter for pedicel cutting. For perception, an RGB--D camera and a Detectron2-based pipeline perform semantic segmentation of ripe/unripe tomatoes and keypoint localization of the pedicel and fruit center under occlusion and variable illumination. An analytical model derived using the principle of virtual work relates servo torque to grasp force, enabling design-level reasoning about actuation requirements. During execution, closed-loop grasp-force regulation is achieved using a…
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Taxonomy
TopicsSoft Robotics and Applications · Smart Agriculture and AI · Tree Root and Stability Studies
