Autonomous Robotic Pruning in Orchards and Vineyards: a Review
Journal:
arXiv
Published Date:
May 12, 2025
Abstract
Manual pruning is labor intensive and represents up to 25% of annual labor
costs in fruit production, notably in apple orchards and vineyards where
operational challenges and cost constraints limit the adoption of large-scale
machinery. In response, a growing body of research is investigating compact,
flexible robotic platforms capable of precise pruning in varied terrains,
particularly where traditional mechanization falls short.
This paper reviews recent advances in autonomous robotic pruning for orchards
and vineyards, addressing a critical need in precision agriculture. Our review
examines literature published between 2014 and 2024, focusing on innovative
contributions across key system components. Special attention is given to
recent developments in machine vision, perception, plant skeletonization, and
control strategies, areas that have experienced significant influence from
advancements in artificial intelligence and machine learning. The analysis
situates these technological trends within broader agricultural challenges,
including rising labor costs, a decline in the number of young farmers, and the
diverse pruning requirements of different fruit species such as apple,
grapevine, and cherry trees.
By comparing various robotic architectures and methodologies, this survey not
only highlights the progress made toward autonomous pruning but also identifies
critical open challenges and future research directions. The findings
underscore the potential of robotic systems to bridge the gap between manual
and mechanized operations, paving the way for more efficient, sustainable, and
precise agricultural practices.