Enabling Multi-Part Plant Segmentation with Instance-Level Augmentation Using Weak Annotations

Author:

Mukhamadiev Semen1,Nesteruk Sergey1ORCID,Illarionova Svetlana1ORCID,Somov Andrey1

Affiliation:

1. Skolkovo Institute of Science and Technology, 121205 Moscow, Russia

Abstract

Plant segmentation is a challenging computer vision task due to plant images complexity. For many practical problems, we have to solve even more difficult tasks. We need to distinguish plant parts rather than the whole plant. The major complication of multi-part segmentation is the absence of well-annotated datasets. It is very time-consuming and expensive to annotate datasets manually on the object parts level. In this article, we propose to use weakly supervised learning for pseudo-annotation. The goal is to train a plant part segmentation model using only bounding boxes instead of fine-grained masks. We review the existing weakly supervised learning approaches and propose an efficient pipeline for agricultural domains. It is designed to resolve tight object overlappings. Our pipeline beats the baseline solution by 23% for the plant part case and by 40% for the whole plant case. Furthermore, we apply instance-level augmentation to boost model performance. The idea of this approach is to obtain a weak segmentation mask and use it for cropping objects from original images and pasting them to new backgrounds during model training. This method provides us a 55% increase in mAP compared with the baseline on object part and a 72% increase on the whole plant segmentation tasks.

Funder

Ministry of Science and Higher Education

Publisher

MDPI AG

Subject

Information Systems

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