Saved in:
Bibliographic Details
Main Authors: Bhat, Kshitij Madhav, Gao, Tom, Mathur, Abhishek, Satishkumar, Rohit, Yandun, Francisco, Bauer, Dominik, Pollard, Nancy
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.13987
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910052890181632
author Bhat, Kshitij Madhav
Gao, Tom
Mathur, Abhishek
Satishkumar, Rohit
Yandun, Francisco
Bauer, Dominik
Pollard, Nancy
author_facet Bhat, Kshitij Madhav
Gao, Tom
Mathur, Abhishek
Satishkumar, Rohit
Yandun, Francisco
Bauer, Dominik
Pollard, Nancy
contents Agricultural robotics has emerged as a critical solution to the labor shortages and rising costs associated with manual crop harvesting. Bell pepper harvesting, in particular, is a labor-intensive task, accounting for up to 50% of total production costs. While automated solutions have shown promise in controlled greenhouse environments, harvesting in unstructured outdoor farms remains an open challenge due to environmental variability and occlusion. This paper presents VADER (Vision-guided Autonomous Dual-arm Extraction Robot), a dual-arm mobile manipulation system designed specifically for the autonomous harvesting of bell peppers in outdoor environments. The system integrates a robust perception pipeline coupled with a dual-arm planning framework that coordinates a gripping arm and a cutting arm for extraction. We validate the system through trials in various realistic conditions, demonstrating a harvest success rate exceeding 60% with a cycle time of under 100 seconds per fruit, while also featuring a teleoperation fail-safe based on the GELLO teleoperation framework to ensure robustness. To support robust perception, we contribute a hierarchically structured dataset of over 3,200 images spanning indoor and outdoor domains, pairing wide-field scene images with close-up pepper images to enable a coarse-to-fine training strategy from fruit detection to high-precision pose estimation. The code and dataset will be made publicly available upon acceptance.
format Preprint
id arxiv_https___arxiv_org_abs_2603_13987
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Vision-guided Autonomous Dual-arm Extraction Robot for Bell Pepper Harvesting
Bhat, Kshitij Madhav
Gao, Tom
Mathur, Abhishek
Satishkumar, Rohit
Yandun, Francisco
Bauer, Dominik
Pollard, Nancy
Robotics
Agricultural robotics has emerged as a critical solution to the labor shortages and rising costs associated with manual crop harvesting. Bell pepper harvesting, in particular, is a labor-intensive task, accounting for up to 50% of total production costs. While automated solutions have shown promise in controlled greenhouse environments, harvesting in unstructured outdoor farms remains an open challenge due to environmental variability and occlusion. This paper presents VADER (Vision-guided Autonomous Dual-arm Extraction Robot), a dual-arm mobile manipulation system designed specifically for the autonomous harvesting of bell peppers in outdoor environments. The system integrates a robust perception pipeline coupled with a dual-arm planning framework that coordinates a gripping arm and a cutting arm for extraction. We validate the system through trials in various realistic conditions, demonstrating a harvest success rate exceeding 60% with a cycle time of under 100 seconds per fruit, while also featuring a teleoperation fail-safe based on the GELLO teleoperation framework to ensure robustness. To support robust perception, we contribute a hierarchically structured dataset of over 3,200 images spanning indoor and outdoor domains, pairing wide-field scene images with close-up pepper images to enable a coarse-to-fine training strategy from fruit detection to high-precision pose estimation. The code and dataset will be made publicly available upon acceptance.
title Vision-guided Autonomous Dual-arm Extraction Robot for Bell Pepper Harvesting
topic Robotics
url https://arxiv.org/abs/2603.13987