Exploiting Boundary Loss for the Hierarchical Panoptic Segmentation of Plants and Leaves
Journal:
arXiv
Published Date:
Dec 31, 2024
Abstract
Precision agriculture leverages data and machine learning so that farmers can
monitor their crops and target interventions precisely. This enables the
precision application of herbicide only to weeds, or the precision application
of fertilizer only to undernourished crops, rather than to the entire field.
The approach promises to maximize yields while minimizing resource use and harm
to the surrounding environment. To this end, we propose a hierarchical panoptic
segmentation method that simultaneously determines leaf count (as an identifier
of plant growth)and locates weeds within an image. In particular, our approach
aims to improve the segmentation of smaller instances like the leaves and weeds
by incorporating focal loss and boundary loss. Not only does this result in
competitive performance, achieving a PQ+ of 81.89 on the standard training set,
but we also demonstrate we can improve leaf-counting accuracy with our method.
The code is available at
https://github.com/madeleinedarbyshire/HierarchicalMask2Former.